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{{Short description|Strategies for analysis and use of data}} | |||
The term '''business intelligence''' ('''BI''') dates to 1958.<ref name=ibm>http://www.research.ibm.com/journal/rd/024/ibmrd0204H.pdf</ref> It refers to technologies, applications, and practices for the collection, integration, analysis, and presentation of business ] and also sometimes to the information itself. The purpose of business intelligence is to support better business decision making. D. J. Power explains in "A Brief History of Decision Support Systems,"<ref>http://dssresources.com/history/dsshistoryv28.html</ref><blockquote> | |||
{{Use dmy dates|date=December 2020}} | |||
BI describes a set of concepts and methods to improve business decision making by using fact-based support systems. BI is sometimes used interchangeably with briefing books, report and query tools and executive information systems. Business Intelligence systems are data-driven ].</blockquote> | |||
'''Business intelligence''' ('''BI''') consists of strategies, methodologies, and technologies used by enterprises for ] and management of business ].<ref>{{Cite book|author=Dedić N. & Stanier noC.|year=2016|title=Measuring the Success of Changes to Existing Business Intelligence Solutions to Improve Business Intelligence Reporting. Lecture Notes in Business Information Processing|publisher=Springer International Publishing|volume=268|pages=225–236|doi=10.1007/978-3-319-49944-4_17|chapter=Measuring the Success of Changes to Existing Business Intelligence Solutions to Improve Business Intelligence Reporting|isbn=978-3-319-49943-7|s2cid=30910248 |chapter-url=https://hal.inria.fr/hal-01630541/file/432749_1_En_17_Chapter.pdf|url=http://eprints.staffs.ac.uk/3547/1/Measuring%20JMA_Submitted.docx}} {{Closed access}}</ref> Common functions of BI technologies include ], ], ], ] development, ], ], ], ], ], ], ], and ]. | |||
BI systems provide historical, current, and predictive views of business operations, most often using data that has been gathered into a ] or a ] and occasionally working from operational data. Software elements support reporting, interactive "slice-and-dice" pivot-table analyses, visualization, and statistical data mining. Applications tackle sales, production, financial, and many other sources of business data for purposes that include, notably, ]. | |||
BI tools can handle large amounts of structured and sometimes unstructured data to help organizations identify, develop, and otherwise create new strategic ]. They aim to allow for the easy interpretation of these ]. Identifying new opportunities and implementing an effective strategy based on ]s is assumed to potentially provide ]es with a competitive market advantage and long-term stability, and help them take strategic decisions.<ref>({{cite book |title= Business Intelligence Success Factors: Tools for Aligning Your Business in the Global Economy |last= Rud|first= Olivia |year= 2009|publisher= Wiley & Sons|location= Hoboken, N.J.|isbn= 978-0-470-39240-9 }})</ref> | |||
==BI technologies== | |||
For a ''BI technology'' system to work effectively, a company should have a secure computer system which can specify different levels of user access to the data 'warehouse,' depending on whether the user is a junior staffer, a manager, or an executive. As well, a BI system should have sufficient data capacity and a plan for how long data will be stored (data retention). Analysts should set benchmark and performance targets for the system. | |||
Business intelligence can be used by enterprises to support a wide range of business decisions ranging from operational to strategic. Basic operating decisions include ] or ]. ] decisions involve priorities, ]s, and directions at the broadest level. In all cases, BI is believed to be most effective when it combines data derived from the market in which a company operates (external data) with data from company sources internal to the business such as financial and operations data (internal data). When combined, external and internal data can provide a complete picture which, in effect, creates an "intelligence" that cannot be derived from any singular set of data.<ref>{{cite book | last1= Coker| first1= Frank | title= Pulse: Understanding the Vital Signs of Your Business | publisher= Ambient Light Publishing | |||
Business intelligence analysts have developed software tools to gather and analyze large quantities of unstructured ], such as production metrics, sales statistics, attendance reports, and customer attrition figures. Each BI ] typically develops Business intelligence systems differently, to suit the demands of different sectors (e.g., retail companies, financial services companies, etc.). | |||
| date= 2014 | pages= 41–42 | isbn= 978-0-9893086-0-1}}</ref> | |||
Among their many uses, business intelligence tools empower organizations to gain insight into new markets, to assess demand and suitability of products and services for different ], and to gauge the impact of marketing efforts.<ref name=":0"> | |||
Business intelligence software and applications include a range of tools. Some BI applications are used to analyze performance, projects, or internal operations, such as | |||
Chugh, R. & Grandhi, S. (2013,). </ref> | |||
] - ], ], ], ] and Performance Measurement, ], ], ], User/], ], ] (EIS), ]/Demand Chain Management, and ] and ] tools. | |||
BI applications use data gathered from a ] (DW) or from a ], and the concepts of BI and DW combine as "BI/DW"<ref> | |||
Other BI technologies are used to store and analyze data, such as | |||
{{cite book | |||
] (DM), Data Farming, and ]s; ] (DSS) and ]; ]s and ]; ]; Mapping, ], and ]; ] (MIS); ] (GIS); ]; ] (SaaS) Business Intelligence offerings (On Demand) — which is similar to traditional BI solutions, but software is hosted for customers by a provider<ref>Industry Analyst Think Strategies & it's SaaS Showplace</ref>; ] (OLAP) and ], sometimes called "Analytics" (based on the "hypercube" or "cube"); ]; ] and Technical ]; ]; ]; and ]. | |||
| last1 = Golden | |||
| first1 = Bernard | |||
Other BI applications are used to analyze or manage the "human" side of businesses, such as ] (CRM) and ] tools and ] applications. | |||
| title = Amazon Web Services For Dummies | |||
| url = https://books.google.com/books?id=xSVwAAAAQBAJ | |||
| publisher = John Wiley & Sons | |||
| date = 2013 | |||
| page = 234 | |||
| isbn = 9781118652268 | |||
| access-date = 2014-07-06 | |||
| quote = traditional business intelligence or data warehousing tools (the terms are used so interchangeably that they're often referred to as BI/DW) are extremely expensive | |||
}} | |||
</ref> | |||
or as "BIDW". A data warehouse contains a copy of analytical data that facilitates ]. | |||
==History== | ==History== | ||
The earliest known use of the term ''business intelligence'' is in Richard Millar Devens' ''Cyclopædia of Commercial and Business Anecdotes'' (1865). Devens used the term to describe how the banker ] gained profit by receiving and acting upon information about his environment, prior to his competitors: | |||
Prior to the start of the ] in the late ], businesses had to collect data from non-automated sources. Businesses then lacked the computing resources to properly analyze the data, and as a result, companies often made business decisions primarily on the basis of ]. | |||
{{quote|Throughout Holland, Flanders, France, and Germany, he maintained a complete and perfect train of business intelligence. The news of the many battles fought was thus received first by him, and the ] added to his profits, owing to his early receipt of the news.|author=Devens |source=p. 210}} | |||
The ability to collect and react accordingly based on the information retrieved, Devens says, is central to business intelligence.<ref name="Miller Devens">{{cite book|last=Miller Devens|first=Richard|title=Cyclopaedia of Commercial and Business Anecdotes; Comprising Interesting Reminiscences and Facts, Remarkable Traits and Humors of Merchants, Traders, Bankers Etc. in All Ages and Countries|url=https://archive.org/details/cyclopaediacomm00devegoog|quote=business intelligence.|publisher=D. Appleton and company|access-date=15 February 2014|page=|year=1865}}</ref> | |||
As businesses started automating more and more systems, more and more data became available. However, collection remained a challenge due to a lack of infrastructure for data exchange or to incompatibilities between systems. Analysis of the data that was gathered and reports on the data sometimes took months to generate. Such reports allowed informed long-term strategic decision-making. However, short-term tactical decision-making continued to rely on intuition. | |||
When ], a researcher at ], used the term ''business intelligence'' in an article published in 1958, he employed the '']'' definition of intelligence: "the ability to apprehend the interrelationships of presented facts in such a way as to guide action towards a desired goal."<ref> | |||
Thus we have business intelligence, a term and a definition that date to a seminal October 1958 IBM Journal article by ] titled A Business Intelligence System.<ref name=ibm/> Luhn wrote, | |||
{{cite journal|url= http://www.research.ibm.com/journal/rd/024/ibmrd0204H.pdf|doi=10.1147/rd.24.0314|title= A Business Intelligence System|author=Luhn, H. P. |author-link= Hans Peter Luhn |year= 1958 |journal= IBM Journal of Research and Development|volume= 2|issue= 4|pages= 314–319|archive-url=https://web.archive.org/web/20080913121526/http://www.research.ibm.com/journal/rd/024/ibmrd0204H.pdf|archive-date=2008-09-13}} | |||
</ref> | |||
In 1989, Howard Dresner (later a ] analyst) proposed ''business intelligence'' as an ] to describe "concepts and methods to improve business decision making by using fact-based support systems."<ref name=power>{{cite web |url= http://dssresources.com/history/dsshistory.html |title= A Brief History of Decision Support Systems, version 4.0 |access-date=10 July 2008 |author= D. J. Power |date= 10 March 2007|publisher= DSSResources.COM }}</ref> It was not until the late 1990s that this usage was widespread.<ref>{{cite web |url=http://dssresources.com/history/dsshistory.html |title=A Brief History of Decision Support Systems |last=Power |first=D. J. |access-date=1 November 2010 }}</ref> | |||
<blockquote> | |||
In this paper, business is a collection of activities carried on for whatever purpose, be it science, technology, commerce, industry, law, government, defense, et cetera. The communication facility serving the conduct of a business (in the broad sense) may be referred to as an intelligence system. The notion of intelligence is also defined here, in a more general sense, as "the ability to apprehend the interrelationships of presented facts in such a way as to guide action towards a desired goal." | |||
</blockquote> | |||
==Definition== | |||
In modern businesses, increasing standards, automation, and technologies have led to vast amounts of data becoming available. ] technologies have set up repositories to store these data. Improved ] (ETL) and even recently ] tools have increased the speed of collecting the data. ] reporting technologies have allowed faster generation of new reports which analyze the data. Business intelligence has now become the art of sifting through large amounts of data, extracting pertinent information, and turning that information into knowledge from which actions can be taken. | |||
According to Solomon Negash and Paul Gray, business intelligence (BI) can be defined as systems that combine: | |||
Business intelligence software incorporates the ability to mine data, analyze, and report. Some modern BI software allows users to cross-analyze and perform deep data research rapidly for better analysis of sales or performance on an individual, department, or company level. In modern applications of business intelligence software, managers are able to quickly compile reports from data for forecasting, analysis, and business decision-making. | |||
*] | |||
*] | |||
*] | |||
with analysis to evaluate complex corporate and competitive information for presentation to planners and decision makers, with the objective of improving the timeliness and the quality of the input to the decision process."<ref>{{cite book |title=Topic Overview: Business Intelligence |last=Springer-Verlag Berlin Heidelberg |first=Springer-Verlag Berlin Heidelberg |date=21 November 2008|doi=10.1007/978-3-540-48716-6 |isbn=978-3-540-48715-9 }}</ref> | |||
In ] ], later a ] analyst, popularized BI as an umbrella term to describe a set of concepts and methods to improve business decision-making by using fact-based decision support systems.<ref>http://dssresources.com/history/dsshistoryv28.html</ref> | |||
According to ], business intelligence is "a set of methodologies, processes, architectures, and technologies that transform raw data into meaningful and useful information used to enable more effective strategic, tactical, and operational insights and decision-making."<ref>{{cite web |url=https://www.forrester.com/report/Topic+Overview+Business+Intelligence/-/E-RES39218 |title=Topic Overview: Business Intelligence |last=Evelson |first=Boris |date=21 November 2008}}</ref> Under this definition, business intelligence encompasses ] (], ], data warehousing, master-data management, text- and content-analytics, et al.). Therefore, Forrester refers to ''data preparation'' and ''data usage'' as two separate but closely linked segments of the business-intelligence architectural stack. | |||
===Key intelligence topics=== | |||
Business intelligence often uses ] (KPIs) to assess the present state of business and to prescribe a course of action. Examples of KPIs are things such as lead conversion rate (in sales) and inventory turnover (in inventory management). Prior to the widespread adoption of computer and web applications, when information had to be manually inputted and calculated, performance data was often not available for weeks or months. Recently, banks have tried to make data available at shorter intervals and have reduced delays. The KPI methodology was further expanded with the ] methodology which incorporated KPIs and root cause analysis into a single methodology. | |||
Some elements of business intelligence are:{{citation needed|date=August 2018}} | |||
Businesses that face higher operational/] ], such as ] companies and "wealth management" services, often make KPI-related data available weekly. In some cases, companies may even offer a daily analysis of data. This fast pace requires analysts to use ] ]s to process this large volume of data. | |||
* Multidimensional ] and allocation | |||
===Trends=== | |||
* ], tagging, and standardization | |||
Currently organizations are staring to see that data and content should not be considered separate aspects of information management, but instead should be managed in an integrated enterprise approach. ] brings Business Intelligence and Enterprise Content Management together. Interesting signs in this direction are recent acquisitions by SAP and IBM in the Business Intelligence Area. IBM for example earlier bought a market-leading ECM vendor. | |||
* Realtime reporting with analytical alert | |||
* A method of interfacing with ] sources | |||
* Group consolidation, budgeting, and ]s | |||
* ] and probabilistic simulation | |||
* ]s optimization | |||
* ] and process management | |||
* Open item management | |||
Forrester distinguishes this from the ''business-intelligence market'', which is "just the top layers of the BI architectural stack, such as ], ], and ]."<ref>{{cite web |url=http://blogs.forrester.com/boris_evelson/10-04-29-want_know_what_forresters_lead_data_analysts_are_thinking_about_bi_and_data_domain |title=Want to know what Forrester's lead data analysts are thinking about BI and the data domain? |last=Evelson |first=Boris |date=29 April 2010 |access-date=4 November 2010 |archive-url=https://web.archive.org/web/20160806102752/http://blogs.forrester.com/boris_evelson/10-04-29-want_know_what_forresters_lead_data_analysts_are_thinking_about_bi_and_data_domain |archive-date=6 August 2016 |url-status=dead }}</ref> | |||
==See also== | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] (BI 2.0) | |||
* ] | |||
===Compared with competitive intelligence=== | |||
==References== | |||
Though the term business intelligence is sometimes a synonym for ] (because they both support ]), BI uses technologies, processes, and applications to analyze mostly internal, structured data and business processes while competitive intelligence gathers, analyzes, and disseminates information with a topical focus on company competitors. If understood broadly, competitive intelligence can be considered as a subset of business intelligence.<ref>{{cite web |url=http://blogs.forrester.com/james_kobielus/10-04-30-what%E2%80%99s_not_bi_oh_don%E2%80%99t_get_me_startedoops_too_latehere_goes |title=What's Not BI? Oh, Don't Get Me Started... Oops Too Late... Here Goes... |last=Kobielus |first=James |date=30 April 2010 |quote="Business" intelligence is a non-domain-specific catchall for all the types of analytic data that can be delivered to users in reports, dashboards, and the like. When you specify the subject domain for this intelligence, then you can refer to "competitive intelligence", "market intelligence", "social intelligence", "financial intelligence", "HR intelligence", "supply chain intelligence", and the like. |access-date=4 November 2010 |archive-url=https://web.archive.org/web/20100507103207/http://blogs.forrester.com/james_kobielus/10-04-30-what%E2%80%99s_not_bi_oh_don%E2%80%99t_get_me_startedoops_too_latehere_goes |archive-date=7 May 2010 |url-status=dead }}</ref> | |||
{{refs}} | |||
===Compared with business analytics=== | |||
Business intelligence and ] are sometimes used interchangeably, but there are alternate definitions.<ref>{{cite web|url=http://timoelliott.com/blog/2011/03/business-analytics-vs-business-intelligence.html |title=Business Analytics vs Business Intelligence? |publisher=timoelliott.com |date=2011-03-09 |access-date=2014-06-15}}</ref> ], professor of information technology and management at ] argues that business intelligence should be divided into ], ], ] (OLAP), an "alerts" tool, and business analytics. In this definition, business analytics is the subset of BI focusing on statistics, prediction, and optimization, rather than the reporting functionality.<ref>{{Cite interview |url=http://www.informationweek.com/news/software/bi/222200096 |title=Analytics at Work: Q&A with Tom Davenport |last=Henschen |first=Doug |date=4 January 2010 |access-date=26 September 2011 |archive-date=3 April 2012 |archive-url=https://web.archive.org/web/20120403080949/http://www.informationweek.com/news/software/bi/222200096 |url-status=dead }}</ref> | |||
==Unstructured data== | |||
Business operations can generate a very large amount of ] in the form of e-mails, memos, notes from call-centers, news, user groups, chats, reports, web-pages, presentations, image-files, video-files, and marketing material. According to ], more than 85% of all business information exists in these forms; a company might only use such a document a single time.<ref name="rao">{{cite journal|last1=Rao|first1=R.|year=2003|title=From unstructured data to actionable intelligence|url=http://www.ramanarao.com/papers/rao-itpro-2003-11.pdf|journal=IT Professional|volume=5|issue=6|pages=29–35|doi=10.1109/MITP.2003.1254966}}</ref> Because of the way it is produced and stored, this information is either ] or ]. | |||
The management of semi-structured data is an unsolved problem in the information technology industry.<ref name="blumberg">{{cite journal|author1=Blumberg, R.|author2=S. Atre|name-list-style=amp|year=2003|title=The Problem with Unstructured Data|url=http://soquelgroup.com/Articles/dmreview_0203_problem.pdf|url-status=dead|journal=DM Review|pages=42–46|archive-url=https://web.archive.org/web/20110125033210/http://soquelgroup.com/Articles/dmreview_0203_problem.pdf|archive-date=25 January 2011}}</ref> According to projections from Gartner (2003), white-collar workers spend 30–40% of their time searching, finding, and assessing unstructured data. BI uses both structured and unstructured data. The former is easy to search, and the latter contains a large quantity of the information needed for analysis and decision-making.<ref name = blumberg /><ref name="negash">{{cite journal|author=Negash, S|year=2004|title=Business Intelligence|journal=Communications of the Association for Information Systems|volume=13|pages=177–195|doi=10.17705/1CAIS.01315|doi-access=free}}</ref> Because of the difficulty of properly searching, finding, and assessing unstructured or semi-structured data, organizations may not draw upon these vast reservoirs of information, which could influence a particular decision, task, or project. This can ultimately lead to poorly informed decision-making.<ref name = rao /> | |||
Therefore, when designing a business intelligence/DW-solution, the specific problems associated with semi-structured and unstructured data must be accommodated for as well as those for the structured data. | |||
===Limitations of semi-structured and unstructured data=== | |||
{{update|part=section|reason=It's dubious that searchability and semantic analysis are still limitations at the current stage of NLP and AI development|date=December 2023}} | |||
There are several challenges to developing BI with semi-structured data. According to Inmon & Nesavich,<ref name = inmon>Inmon, B. & A. Nesavich, "Unstructured Textual Data in the Organization" from "Managing Unstructured data in the organization", Prentice Hall 2008, pp. 1–13</ref> some of those are: | |||
* Physically accessing unstructured textual data – unstructured data is stored in a huge variety of formats. | |||
* ] – Among researchers and analysts, there is a need to develop standardized terminology. | |||
* Volume of data – As stated earlier, up to 85% of all data exists as semi-structured data. Couple that with the need for word-to-word and semantic analysis. | |||
* Searchability of unstructured textual data – A simple search on some data, e.g. apple, results in links where there is a reference to that precise search term. (Inmon & Nesavich, 2008)<ref name = inmon /> gives an example: "a search is made on the term felony. In a simple search, the term felony is used, and everywhere there is a reference to felony, a hit to an unstructured document is made. But a simple search is crude. It does not find references to crime, arson, murder, embezzlement, vehicular homicide, and such, even though these crimes are types of felonies". | |||
===Metadata=== | |||
To solve problems with searchability and assessment of data, it is necessary to know something about the content. This can be done by adding context through the use of ].<ref name = rao />{{Needs independent confirmation|reason=The article is written by a founder of a company that made automatic categorization software. Not sufficient to establish that using automatically generated metadata is a mainstream approach of applying BI to unstructured data.|date=December 2023}} Many systems already capture some metadata (e.g. filename, author, size, etc.), but more useful would be metadata about the actual content – e.g. summaries, topics, people, or companies mentioned. Two technologies designed for generating metadata about content are ] and ]. | |||
== Generative AI == | |||
Generative business intelligence is the application of ] techniques, such as ], in business intelligence. This combination facilitates data analysis and enables users to interact with data more intuitively, generating actionable insights through natural language queries. ] was for example integrated into the business analytics tool ].<ref>{{Cite web |last=Novet |first=Jordan |date=2023-05-23 |title=Microsoft is bringing an A.I. chatbot to data analysis |url=https://www.cnbc.com/2023/05/23/microsoft-launches-fabric-including-copilot-for-power-bi.html |access-date=2024-08-19 |website=CNBC |language=en}}</ref> | |||
==Applications== | |||
Business intelligence can be applied to the following business purposes: | |||
* ] and ] inform business leaders of progress towards business goals.<ref name="FeldmanDeveloping13"/> (]).{{cn|date=December 2023}} | |||
* ] quantify processes for a business to arrive at optimal decisions, and to perform business knowledge discovery. Analytics may variously involve ], ], ], ], ], ], ], ], and ]. For example within banking industry, academic research has explored potential for BI based analytics in credit evaluation, customer churn management for managerial adoption<ref>{{cite journal |last1=Moro |first1=Sérgio |last2=Cortez |first2=Paulo |last3=Rita |first3=Paulo |title=Business intelligence in banking: A literature analysis from 2002 to 2013 using text mining and latent Dirichlet allocation |journal=Expert Systems with Applications |date=February 2015 |volume=42 |issue=3 |pages=1314–1324 |doi=10.1016/j.eswa.2014.09.024|hdl=10071/8522 |s2cid=15595226 |hdl-access=free }}</ref> | |||
* ], ] and ],<ref name="FeldmanDeveloping13">{{cite book |url=https://books.google.com/books?id=xDXfeopC-kMC&pg=PA140 |title=Developing Business Intelligence Apps for SharePoint |author1=Feldman, D. |author2=Himmelstein, J. |publisher=O'Reilly Media, Inc |pages=140–1 |year=2013 |isbn=9781449324681 |access-date=8 May 2018}}</ref> ], and/or ] | |||
* BI can facilitate ] both inside and outside the business by enabling ] and ]<ref name="FeldmanDeveloping13"/> | |||
* ] is concerned with the creation, distribution, use, and management of business intelligence, and of business knowledge in general.<ref name="FeldmanDeveloping13"/> Knowledge management leads to ] and ].{{cn|date=December 2023}} | |||
== Roles == | |||
Some common technical roles for business intelligence developers are:<ref></ref> | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
==Risk== | |||
In a 2013 report, ] categorized business intelligence vendors as either an independent "pure-play" vendor or a consolidated "mega-vendor".<ref>{{cite news|url=https://www.zdnet.com/article/gartner-releases-2013-bi-magic-quadrant/ |title=Gartner releases 2013 BI Magic Quadrant |work=ZDNet |author=Andrew Brust| date= 2013-02-14|access-date=21 August 2013}}</ref>{{Primary source inline|reason=Secondary source supporting importance of the categorization needed|date=December 2023}} In 2019, the BI market was shaken within Europe for the new legislation of GDPR (General Data Protection Regulation) which puts the responsibility of data collection and storage onto the data user with strict laws in place to make sure the data is compliant. Growth within Europe has steadily increased since May 2019 when GDPR was brought. The legislation refocused companies to look at their own data from a compliance perspective but also revealed future opportunities using personalization and external BI providers to increase market share.<ref>. InfoWorld (1 February 2010). Retrieved 17 January 2012.</ref>{{Dead link|date=December 2023|fix-attempted=yes}} | |||
==See also== | |||
{{div col|colwidth=20em}} | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
* ] | |||
{{div col end}} | |||
== References == | |||
{{Reflist|2}} | |||
==Bibliography== | |||
* Ralph Kimball ''et al.'' "The Data warehouse Lifecycle Toolkit" (2nd ed.) Wiley {{ISBN|0-470-47957-4}} | |||
* Peter Rausch, Alaa Sheta, Aladdin Ayesh : ''Business Intelligence and Performance Management: Theory, Systems, and Industrial Applications'', Springer Verlag U.K., 2013, {{ISBN|978-1-4471-4865-4}}. | |||
* Munoz, J.M. (2017). Global Business Intelligence. Routledge : UK. {{ISBN|978-1-1382-03686}} | |||
* {{cite journal |title = An Overview of Business Intelligence Technology |date = August 2011 |first1 = Surajit |last1 = Chaudhuri |first2 = Umeshwar |last2 = Dayal |first3 = Vivek |last3 = Narasayya |journal=Communications of the ACM |volume = 54 |issue= 8 |pages = 88–98 |doi = 10.1145/1978542.1978562 |doi-access = |s2cid = 13843514 }} | |||
== External links == | |||
{{Commons category|Business intelligence}} | |||
{{Data warehouse}} | |||
{{Authority control}} | |||
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Latest revision as of 13:57, 2 October 2024
Strategies for analysis and use of data
Business intelligence (BI) consists of strategies, methodologies, and technologies used by enterprises for data analysis and management of business information. Common functions of BI technologies include reporting, online analytical processing, analytics, dashboard development, data mining, process mining, complex event processing, business performance management, benchmarking, text mining, predictive analytics, and prescriptive analytics.
BI tools can handle large amounts of structured and sometimes unstructured data to help organizations identify, develop, and otherwise create new strategic business opportunities. They aim to allow for the easy interpretation of these big data. Identifying new opportunities and implementing an effective strategy based on insights is assumed to potentially provide businesses with a competitive market advantage and long-term stability, and help them take strategic decisions.
Business intelligence can be used by enterprises to support a wide range of business decisions ranging from operational to strategic. Basic operating decisions include product positioning or pricing. Strategic business decisions involve priorities, goals, and directions at the broadest level. In all cases, BI is believed to be most effective when it combines data derived from the market in which a company operates (external data) with data from company sources internal to the business such as financial and operations data (internal data). When combined, external and internal data can provide a complete picture which, in effect, creates an "intelligence" that cannot be derived from any singular set of data.
Among their many uses, business intelligence tools empower organizations to gain insight into new markets, to assess demand and suitability of products and services for different market segments, and to gauge the impact of marketing efforts.
BI applications use data gathered from a data warehouse (DW) or from a data mart, and the concepts of BI and DW combine as "BI/DW" or as "BIDW". A data warehouse contains a copy of analytical data that facilitates decision support.
History
The earliest known use of the term business intelligence is in Richard Millar Devens' Cyclopædia of Commercial and Business Anecdotes (1865). Devens used the term to describe how the banker Sir Henry Furnese gained profit by receiving and acting upon information about his environment, prior to his competitors:
Throughout Holland, Flanders, France, and Germany, he maintained a complete and perfect train of business intelligence. The news of the many battles fought was thus received first by him, and the fall of Namur added to his profits, owing to his early receipt of the news.
— Devens, p. 210
The ability to collect and react accordingly based on the information retrieved, Devens says, is central to business intelligence.
When Hans Peter Luhn, a researcher at IBM, used the term business intelligence in an article published in 1958, he employed the Webster's Dictionary definition of intelligence: "the ability to apprehend the interrelationships of presented facts in such a way as to guide action towards a desired goal."
In 1989, Howard Dresner (later a Gartner analyst) proposed business intelligence as an umbrella term to describe "concepts and methods to improve business decision making by using fact-based support systems." It was not until the late 1990s that this usage was widespread.
Definition
According to Solomon Negash and Paul Gray, business intelligence (BI) can be defined as systems that combine:
with analysis to evaluate complex corporate and competitive information for presentation to planners and decision makers, with the objective of improving the timeliness and the quality of the input to the decision process."
According to Forrester Research, business intelligence is "a set of methodologies, processes, architectures, and technologies that transform raw data into meaningful and useful information used to enable more effective strategic, tactical, and operational insights and decision-making." Under this definition, business intelligence encompasses information management (data integration, data quality, data warehousing, master-data management, text- and content-analytics, et al.). Therefore, Forrester refers to data preparation and data usage as two separate but closely linked segments of the business-intelligence architectural stack.
Some elements of business intelligence are:
- Multidimensional aggregation and allocation
- Denormalization, tagging, and standardization
- Realtime reporting with analytical alert
- A method of interfacing with unstructured data sources
- Group consolidation, budgeting, and rolling forecasts
- Statistical inference and probabilistic simulation
- Key performance indicators optimization
- Version control and process management
- Open item management
Forrester distinguishes this from the business-intelligence market, which is "just the top layers of the BI architectural stack, such as reporting, analytics, and dashboards."
Compared with competitive intelligence
Though the term business intelligence is sometimes a synonym for competitive intelligence (because they both support decision making), BI uses technologies, processes, and applications to analyze mostly internal, structured data and business processes while competitive intelligence gathers, analyzes, and disseminates information with a topical focus on company competitors. If understood broadly, competitive intelligence can be considered as a subset of business intelligence.
Compared with business analytics
Business intelligence and business analytics are sometimes used interchangeably, but there are alternate definitions. Thomas Davenport, professor of information technology and management at Babson College argues that business intelligence should be divided into querying, reporting, Online analytical processing (OLAP), an "alerts" tool, and business analytics. In this definition, business analytics is the subset of BI focusing on statistics, prediction, and optimization, rather than the reporting functionality.
Unstructured data
Business operations can generate a very large amount of data in the form of e-mails, memos, notes from call-centers, news, user groups, chats, reports, web-pages, presentations, image-files, video-files, and marketing material. According to Merrill Lynch, more than 85% of all business information exists in these forms; a company might only use such a document a single time. Because of the way it is produced and stored, this information is either unstructured or semi-structured.
The management of semi-structured data is an unsolved problem in the information technology industry. According to projections from Gartner (2003), white-collar workers spend 30–40% of their time searching, finding, and assessing unstructured data. BI uses both structured and unstructured data. The former is easy to search, and the latter contains a large quantity of the information needed for analysis and decision-making. Because of the difficulty of properly searching, finding, and assessing unstructured or semi-structured data, organizations may not draw upon these vast reservoirs of information, which could influence a particular decision, task, or project. This can ultimately lead to poorly informed decision-making.
Therefore, when designing a business intelligence/DW-solution, the specific problems associated with semi-structured and unstructured data must be accommodated for as well as those for the structured data.
Limitations of semi-structured and unstructured data
This section needs to be updated. The reason given is: It's dubious that searchability and semantic analysis are still limitations at the current stage of NLP and AI development. Please help update this article to reflect recent events or newly available information. (December 2023) |
There are several challenges to developing BI with semi-structured data. According to Inmon & Nesavich, some of those are:
- Physically accessing unstructured textual data – unstructured data is stored in a huge variety of formats.
- Terminology – Among researchers and analysts, there is a need to develop standardized terminology.
- Volume of data – As stated earlier, up to 85% of all data exists as semi-structured data. Couple that with the need for word-to-word and semantic analysis.
- Searchability of unstructured textual data – A simple search on some data, e.g. apple, results in links where there is a reference to that precise search term. (Inmon & Nesavich, 2008) gives an example: "a search is made on the term felony. In a simple search, the term felony is used, and everywhere there is a reference to felony, a hit to an unstructured document is made. But a simple search is crude. It does not find references to crime, arson, murder, embezzlement, vehicular homicide, and such, even though these crimes are types of felonies".
Metadata
To solve problems with searchability and assessment of data, it is necessary to know something about the content. This can be done by adding context through the use of metadata. Many systems already capture some metadata (e.g. filename, author, size, etc.), but more useful would be metadata about the actual content – e.g. summaries, topics, people, or companies mentioned. Two technologies designed for generating metadata about content are automatic categorization and information extraction.
Generative AI
Generative business intelligence is the application of generative AI techniques, such as large language models, in business intelligence. This combination facilitates data analysis and enables users to interact with data more intuitively, generating actionable insights through natural language queries. Microsoft Copilot was for example integrated into the business analytics tool Power BI.
Applications
Business intelligence can be applied to the following business purposes:
- Performance metrics and benchmarking inform business leaders of progress towards business goals. (Business process management).
- Analytics quantify processes for a business to arrive at optimal decisions, and to perform business knowledge discovery. Analytics may variously involve data mining, process mining, statistical analysis, predictive analytics, predictive modeling, business process modeling, data lineage, complex event processing, and prescriptive analytics. For example within banking industry, academic research has explored potential for BI based analytics in credit evaluation, customer churn management for managerial adoption
- Reporting, dashboards and data visualization, executive information system, and/or OLAP
- BI can facilitate collaboration both inside and outside the business by enabling data sharing and electronic data interchange
- Knowledge management is concerned with the creation, distribution, use, and management of business intelligence, and of business knowledge in general. Knowledge management leads to learning management and regulatory compliance.
Roles
Some common technical roles for business intelligence developers are:
Risk
In a 2013 report, Gartner categorized business intelligence vendors as either an independent "pure-play" vendor or a consolidated "mega-vendor". In 2019, the BI market was shaken within Europe for the new legislation of GDPR (General Data Protection Regulation) which puts the responsibility of data collection and storage onto the data user with strict laws in place to make sure the data is compliant. Growth within Europe has steadily increased since May 2019 when GDPR was brought. The legislation refocused companies to look at their own data from a compliance perspective but also revealed future opportunities using personalization and external BI providers to increase market share.
See also
- Agile Business Intelligence
- Analytic applications
- Arcplan
- Artificial intelligence marketing
- Business activity monitoring
- Business Intelligence 2.0
- Business Intelligence Competency Center
- Business intelligence software
- Business process discovery
- Business process management
- Customer dynamics
- Decision engineering
- Embedded analytics
- Enterprise planning systems
- Integrated business planning
- Management information system
- Mobile business intelligence
- Operational intelligence
- Process mining
- Real-time business intelligence
- Sales intelligence
- Test and learn
References
- Dedić N. & Stanier noC. (2016). "Measuring the Success of Changes to Existing Business Intelligence Solutions to Improve Business Intelligence Reporting" (PDF). Measuring the Success of Changes to Existing Business Intelligence Solutions to Improve Business Intelligence Reporting. Lecture Notes in Business Information Processing. Vol. 268. Springer International Publishing. pp. 225–236. doi:10.1007/978-3-319-49944-4_17. ISBN 978-3-319-49943-7. S2CID 30910248.
- (Rud, Olivia (2009). Business Intelligence Success Factors: Tools for Aligning Your Business in the Global Economy. Hoboken, N.J.: Wiley & Sons. ISBN 978-0-470-39240-9.)
- Coker, Frank (2014). Pulse: Understanding the Vital Signs of Your Business. Ambient Light Publishing. pp. 41–42. ISBN 978-0-9893086-0-1.
- Chugh, R. & Grandhi, S. (2013,). "Why Business Intelligence? Significance of Business Intelligence tools and integrating BI governance with corporate governance". International Journal of E-Entrepreneurship and Innovation', vol. 4, no.2, pp. 1–14.
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Golden, Bernard (2013). Amazon Web Services For Dummies. John Wiley & Sons. p. 234. ISBN 9781118652268. Retrieved 6 July 2014.
traditional business intelligence or data warehousing tools (the terms are used so interchangeably that they're often referred to as BI/DW) are extremely expensive
- Miller Devens, Richard (1865). Cyclopaedia of Commercial and Business Anecdotes; Comprising Interesting Reminiscences and Facts, Remarkable Traits and Humors of Merchants, Traders, Bankers Etc. in All Ages and Countries. D. Appleton and company. p. 210. Retrieved 15 February 2014.
business intelligence.
- Luhn, H. P. (1958). "A Business Intelligence System" (PDF). IBM Journal of Research and Development. 2 (4): 314–319. doi:10.1147/rd.24.0314. Archived from the original (PDF) on 13 September 2008.
- D. J. Power (10 March 2007). "A Brief History of Decision Support Systems, version 4.0". DSSResources.COM. Retrieved 10 July 2008.
- Power, D. J. "A Brief History of Decision Support Systems". Retrieved 1 November 2010.
- Springer-Verlag Berlin Heidelberg, Springer-Verlag Berlin Heidelberg (21 November 2008). Topic Overview: Business Intelligence. doi:10.1007/978-3-540-48716-6. ISBN 978-3-540-48715-9.
- Evelson, Boris (21 November 2008). "Topic Overview: Business Intelligence".
- Evelson, Boris (29 April 2010). "Want to know what Forrester's lead data analysts are thinking about BI and the data domain?". Archived from the original on 6 August 2016. Retrieved 4 November 2010.
- Kobielus, James (30 April 2010). "What's Not BI? Oh, Don't Get Me Started... Oops Too Late... Here Goes..." Archived from the original on 7 May 2010. Retrieved 4 November 2010.
"Business" intelligence is a non-domain-specific catchall for all the types of analytic data that can be delivered to users in reports, dashboards, and the like. When you specify the subject domain for this intelligence, then you can refer to "competitive intelligence", "market intelligence", "social intelligence", "financial intelligence", "HR intelligence", "supply chain intelligence", and the like.
- "Business Analytics vs Business Intelligence?". timoelliott.com. 9 March 2011. Retrieved 15 June 2014.
- Henschen, Doug (4 January 2010). "Analytics at Work: Q&A with Tom Davenport" (Interview). Archived from the original on 3 April 2012. Retrieved 26 September 2011.
- ^ Rao, R. (2003). "From unstructured data to actionable intelligence" (PDF). IT Professional. 5 (6): 29–35. doi:10.1109/MITP.2003.1254966.
- ^ Blumberg, R. & S. Atre (2003). "The Problem with Unstructured Data" (PDF). DM Review: 42–46. Archived from the original (PDF) on 25 January 2011.
- Negash, S (2004). "Business Intelligence". Communications of the Association for Information Systems. 13: 177–195. doi:10.17705/1CAIS.01315.
- ^ Inmon, B. & A. Nesavich, "Unstructured Textual Data in the Organization" from "Managing Unstructured data in the organization", Prentice Hall 2008, pp. 1–13
- Novet, Jordan (23 May 2023). "Microsoft is bringing an A.I. chatbot to data analysis". CNBC. Retrieved 19 August 2024.
- ^ Feldman, D.; Himmelstein, J. (2013). Developing Business Intelligence Apps for SharePoint. O'Reilly Media, Inc. pp. 140–1. ISBN 9781449324681. Retrieved 8 May 2018.
- Moro, Sérgio; Cortez, Paulo; Rita, Paulo (February 2015). "Business intelligence in banking: A literature analysis from 2002 to 2013 using text mining and latent Dirichlet allocation". Expert Systems with Applications. 42 (3): 1314–1324. doi:10.1016/j.eswa.2014.09.024. hdl:10071/8522. S2CID 15595226.
- Roles in data - Learn | Microsoft Docs
- Andrew Brust (14 February 2013). "Gartner releases 2013 BI Magic Quadrant". ZDNet. Retrieved 21 August 2013.
- SaaS BI growth will soar in 2010 | Cloud Computing. InfoWorld (1 February 2010). Retrieved 17 January 2012.
Bibliography
- Ralph Kimball et al. "The Data warehouse Lifecycle Toolkit" (2nd ed.) Wiley ISBN 0-470-47957-4
- Peter Rausch, Alaa Sheta, Aladdin Ayesh : Business Intelligence and Performance Management: Theory, Systems, and Industrial Applications, Springer Verlag U.K., 2013, ISBN 978-1-4471-4865-4.
- Munoz, J.M. (2017). Global Business Intelligence. Routledge : UK. ISBN 978-1-1382-03686
- Chaudhuri, Surajit; Dayal, Umeshwar; Narasayya, Vivek (August 2011). "An Overview of Business Intelligence Technology". Communications of the ACM. 54 (8): 88–98. doi:10.1145/1978542.1978562. S2CID 13843514.
External links
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