词条 | Social media analytics | ||||||||||||||||||||
释义 |
ProcessThere are three main steps in social analyzing social media: data identification, data analysis, and information interpretation. The preferred way to maximize the value derived at every point during the process, analysts may define a question to be answered. In attempting to analyze the question, the important questions are: "Who? What? Where? When? Why? and How?" These questions help in determining the proper data sources to evaluate, which can affect the type of analysis that can be performed.[5] Data identificationData identification is the process of identifying the subsets of available data to focus on for analysis. The data by itself is useless unless it's interpreted, once we start analyzing the data it begins to become useful as it conveys a message. Any data that conveys a meaningful message becomes information. On a high level, unprocessed data takes the following forms to translate into exact message: noisy data; relevant and irrelevant data, filtered data; only relevant data, information; data that conveys a vague message, knowledge; data that conveys a precise message, wisdom; data that conveys exact message and reason behind it. To derive wisdom from an unprocessed data, we need to start processing it, refine the dataset by including data that we want to focus on, and organize data to identify information. In the context of social media analytics, data identification means "what" content are we interested in, in addition to the text of content, we want to know: who wrote the text? Where was it found or on which social media venue did it appear? Are we interested in information from a specific locale? When did someone say something in social media?[5] Attributes of data that need to be considered are as follows:
Data analysisData analysis is the set of activities that assist in transforming raw data into insight, which in turn leads to a new base of knowledge and business value. In other words, data analysis is the phase that takes filtered data as input and transforms that into information of value to the analysts. Many different types of analysis can be performed with social media data. The data analysis step begins once we know what problem we want to solve and know that we have sufficient data that is enough to generate a meaningful result. How can we know if we have enough evidence to warrant a conclusion? The answer to this question is; we don't know. We can't know this unless we start analyzing the data. While analyzing if we found the data isn't sufficient, reiterate the first phase and modify the question. If the data is believed to be sufficient for analysis, we need to build a data model.[5]Developing a data model is a process or method that we use to organize data elements and standardize how the individual data elements relate to each other. This step is important because we want to run a computer program over the data; we need a way to tell the computer which words or themes are important and if certain words relate to the topic we are exploring. In the analysis of our data, it's handy to have several tools available at our disposal to gain a different perspective on discussions taking place around the topic. The aim here is to configure the tools to perform at peak for a particular task. For example, thinking about a word word cloud, if we take a large amount of data around computer professionals, say the "IT architect", and built a word cloud, no doubt the largest word in the could would be "architect". This analysis is also about tool usage. Some tools may do a good job at determining sentiment, where as others may do a better job at breaking down text into a grammatical form that enables us to better understand the meaning and use of various words or phrases. In performing analytic analysis, it is difficult to enumerate each and every step to take on an analytical journey. It is very much an iterative approach as there is no prescribed way of doing things.[5] The taxonomy and the insight derived from that analysis are as follows:
Information interpretationThe insights derived from analysis can be as varied as the original question that was posed in step one of analysis. At this stage, as the nontechnical business users are the receivers of the information, the form of presenting the data becomes important. How could the data make sense efficiently so it could be used in good decision making? Visualization (graphics) of the information is the answer to this question.[9] The best visualizations are ones that expose something new about the underlying patterns and relationships contain the data. Exposure of the patterns and understating them play a key role in decision making process. Mainly there are three criteria to consider in visualizing data.
Role in business intelligenceBusiness intelligence (BI) can be described as "a set of techniques and tools for the acquisition and transformation of raw data into meaningful and useful information for business analysis purposes".[11]Sentiment Analyser is a technology framework in the field of Social BI that leverages Informatica products. It is designed to reflect and suggest the focus shift of businesses from transactional data to behavioral analytics models. Sentiment Analyser enables businesses to understand customer experience and ideates ways to enhance customer satisfaction.[12]
Impacts on business intelligenceRecent research on social media analytics has emphasized the need to adopt a BI based approach to collecting, analyzing and interpreting social media data.[13] Social media presents a promising, albeit challenging, source of data for business intelligence. Customers voluntarily discuss products and companies, giving a real-time pulse of brand sentiment and adoption.[14] According to the recent research on social media analytics has mentioned that the need to adopt a Business Intelligence-based approach is needed for collecting, analyzing and interpreting social media data.[15] Social media is one of the most important tools for marketers in the rapidly evolving media landscape. Firms have created specialized positions to handle their social media marketing. These arguments are in line with the literature on social media marketing that suggest that social media activities are interrelated and influence each other.[16] See also
References1. ^{{cite web|last1=IT Glossary|first1=Gartner|title=Social Analytics - Gartner IT Glossary|url=http://www.gartner.com/it-glossary/social-analytics|website=www.gartner.com|accessdate=25 February 2015|ref=1}} 2. ^{{Cite journal|last=Segerberg|first=Alexandra|authorlink2=W. Lance Bennett|last2=Bennett|first2=W. Lance|year=2011|title=Social Media and the Organization of Collective Action: Using Twitter to Explore the Ecologies of Two Climate Change Protests|url=http://research.fit.edu/sealevelriselibrary/documents/doc_mgr/921/Segerberg_&_Bennett._2011._Twitter_to_explore_ecologies_of_CC_protests..pdf|journal=The Communication Review|volume=14|pages=197–215|via=}} 3. ^{{Cite web|url=http://abs.sagepub.com/content/57/7/871.short|title=The Arab Spring and Social Media Audiences: English and Arabic Twitter Users and Their Networks|last=Bruns|first=Axel|last2=Burgess|first2=Jean|date=2013|website=www.sagepub.com|publisher=Queensland University of Technology, Brisbane, Australia|access-date=2016-11-01|last3=Highfield|first3=Tim}} 4. ^{{Cite journal|last=Tinati|first=Ramine|last2=Phillippe|first2=Olivier|last3=Pope|first3=Catherine|last4=Carr|first4=Leslie|last5=Halford|first5=Susan|year=2011|title=Challenging Social Media Analytics: Web Science Perspectives|url=|journal=ACM|volume=|pages=3–4|via=}} 5. ^1 2 3 4 5 {{Cite book|title=Social media Analytics: Techniques and insights for Extracting Business Value Out of Social Media|last=Ganis|first=Matthew|last2=Kohirkar|first2=Avinash|publisher=IBM Press|year=2015|isbn=978-0-13-389256-7|location=New York|pages=40–137|quote=|via=}} 6. ^{{Cite news|url=http://whatis.techtarget.com/definition/structured-data|title=What is structured data? - Definition from WhatIs.com|newspaper=WhatIs.com|language=en-US|access-date=2016-12-06}} 7. ^{{Cite book|title=Social media Analytics: Techniques and insights for Extracting Business Value Out of Social Media|last=Ganis|first=Matthew|last2=Kohirkar|first2=Avinash|publisher=IBM Press|year=2015|isbn=978-0-13-389256-7|location=New York|pages=247–248|quote=|via=}} 8. ^{{Cite news|url=http://www.crmswitch.com/social-crm/enterprise-social-network/|title=Enterprise Social Networks Explained|last=Kitt|first=Denise|date=2012-05-24|work=|newspaper=CRM Switch|language=en-US|access-date=2016-11-05|via=}} 9. ^{{Cite news|url=https://www.oreilly.com/ideas/why-data-visualization-matters|title=Why data visualization matters|last=Steele|first=Julie|date=2012-02-15|newspaper=O'Reilly Media|access-date=2016-12-11}} 10. ^1 2 {{Cite news|url=https://hbr.org/2013/04/the-three-elements-of-successf|title=The Three Elements of Successful Data Visualizations|newspaper=Harvard Business Review|access-date=2016-12-11}} 11. ^Adkison, D. (2013). IBM Cognos business intelligence : Discover the practical approach to BI with IBM Cognos business intelligence. Birmingham England: Packt Publishing/Enterprise. http://site.ebrary.com/id/10701568 12. ^IT Glossary, Gartner. "Social Analytics - Gartner IT Glossary". www.gartner.com. Retrieved 25 February 2015. 13. ^Umar Ruhi (2014), " Social Media Analytics as a Business Intelligence Practice: CurrentLandscape & Future Prospects", Journal of Internet Social Networking & Virtual Communities,Vol. 2014 (2014), Article ID 920553, DOI: 10.5171/2014.920553 14. ^Lu, Y., Wang, F., & Maciejewski, R. (January 01, 2014). Business intelligence from social media: a study from the VAST Box Office Challenge. IEEE Computer Graphics and Applications, 34, 5.) 15. ^Fan, W., & Gordon, M. D. (June 01, 2014). The Power of Social Media Analytics. Association for Computing Machinery. Communications of the Acm, 57, 6, 74. 16. ^Saboo, A. R., Kumar, V., & Ramani, G. (September 01, 2016). Evaluating the impact of social media activities on human brand sales. International Journal of Research in Marketing, 33, 3, 524-541. 2 : Social media|Types of analytics |
||||||||||||||||||||
随便看 |
|
开放百科全书收录14589846条英语、德语、日语等多语种百科知识,基本涵盖了大多数领域的百科知识,是一部内容自由、开放的电子版国际百科全书。