Social data revolution

The social data revolution is the shift in human communication patterns towards increased personal information sharing and its related implications, made possible by the rise of social networks in early 2000s. This phenomenon has resulted in the accumulation of unprecedented amounts of public data.[1]

This large and frequently updated data source has been described as a new type of scientific instrument for the social sciences.[2] Several independent researchers have used social data to "nowcast" and forecast trends such as unemployment, flu outbreaks,[3] mood of whole populations,[4] travel spending and political opinions in a way that is faster, more accurate and cheaper than standard government reports or Gallup polls.[2]

Social data refers to data individuals create that is knowingly and voluntarily shared by them. Cost and overhead previously rendered this semi-public form of communication unfeasible, but advances in social networking technology from 2004-2010 has made broader concepts of sharing possible.[5] The types of data users are sharing include geolocation, medical data,[6] dating preferences, open thoughts, interesting news articles, etc.

The social data revolution does not only enable new business models like the ones on Amazon.com, but also provides large opportunities to improve decision-making for public policy and international development.[7]

The analysis of large amounts of social data leads to the field of computational social science. Classic examples include the study of media content[8] or of social media content.[3][4][9]

Web 2.0 and Social Network Sites

Over the last few decades, the internet has shifted from being used mostly as a source of information about the world to being primarily used for communication, user-generated content, data sharing, and community building.[10] This is what may consider to be the development of “Web 2.0” Social network sites such as Facebook and YouTube are the foundation of the development of Web 2.0 and the shift to social data sharing.[10]

Early examples of social data websites are Craigslist and the wishlists of Amazon.com. Both enable users to communicate information to anybody who is looking for it. They differ in their approach to identity. Craigslist leverages the power of anonymity, while Amazon.com leverages the power of persistent identity, based on the history of the customer with the firm. The job market is even being shaped by the information people share about themselves on sites like LinkedIn and Facebook.[11]

Examples of more mature social data sites are Twitter and Facebook. On Twitter, sending a message or tweet is as simple as sending an SMS text message. Twitter made this C2W, customer to world: Any tweet a user sends can potentially be read by the entire world. Facebook focuses on interactions between friends, C2C in traditional language. It provides many ways for collecting data from its users: "tag" a friend in a photo, "comment" on what they posted, or just "like" it. These data are the basis for sophisticated models of the relationships between users. They can be used to significantly increase the relevance of what is shown to the user, and for advertising purposes.

[12]

By 2009, the popularity of social networking sites had increased to four times of what it had been in 2005.[13] Twitter now has over 250 million users sharing almost 500 million tweets per day and Facebook has well over one billion users around the world.[14]

Business Sector and Social Data

The data that is shared via social networking sites and other forms of data sharing avenues is often used by businesses, advertisers, etc.[15] Social networking sites, for example, can sell user data to advertisers and other entities which they can then influence consumer decisions.[10] Data mining is also used to gather this information.[15]

While websites and other applications were the origins of this data collection, with improvements in technology, many devices that are used in daily life have the ability to collect data on individuals and therefore are increasing the amount of personal data that is available (ex. smartphones, tech watches, music devices, etc.).[16][17]

This growth of people’s digital identity- the information available via these electronic sources- is being used by companies and organizations to improve products and services and to reduce costs by targeting exactly what consumers want/expect.[17] The data that can be gathered can include shopping experiences, social media preferences, demographic information and more.[15]

Using this data can allow for better personalization of products and has become an expected and vital aspect of product use and production.[16] The data that is accessible on consumers can be used to infer behavioral patterns of consumers.[18] For example, location data is used to assess when and where consumers are going in order to target ads and promotions based on what stores consumers are going to.[18] Online retailers also have gained insight as to how better personalize the online shopping experience through data gathered during the online transaction.[19]

Businesses can even use consumer data to determine whether different shelf spacing of products has an effect on consumer purchasing decisions as well as assess potential cross-item marketing potentials based on items often purchased together.[20]

Social Commerce

While businesses and advertisers often take advantage of the consumer data available, consumers also use other consumers’ information for their purchase decisions. Social commerce sites are where consumers share product/service experiences and opinions and other information.[21] A popular example of such a site is Pinterest which has over 100 million users,[21] These sites and other online sources of product/brand information are influential on consumer’s purchasing decisions.[22] It’s estimated that about 67% of online customers use this information in making their purchase decisions.[21] These sites create an environment that is considered trusted by consumers since the information is coming from other consumer.s[21]

Other Uses of Social Data

With the vast amount of data available about individuals that is accessible, the potential uses of this information is growing.

The healthcare sector has many potential uses for this data. Information gathered from social media and other social data sharing sources can be used to predict the flu, disease outbreaks, how emergency responses are handled, and more.[23] With the use of Twitter and geo-tags, medical researchers can evaluate the health of a specific neighborhood and use that information to provide better outreach and services.[23] Medtronic has developed a digital blood glucose meter that allows health care providers and patients know about low levels.[16]

Social data can also be used to assess reactions to crises.[24] After hurricane Sandy, researchers used Twitter to assess the emotions and issues that those affected were facing.[24] This information can potentially be used to help better prepare and respond to future crises.

This data can be used to assist with urban planning. The city of Boston has used rider information from the rideshare company Uber to improve transportation planning and road maintenance .[16]

Computational Social Science

Using social data for research purposes has led to the development of Computational Social Science. Computational Social Science combines social science, computer science, and network science. [25] This field emerged in 2009. [26] Before the rise of social data and the technological advances that supported it, researchers were limited to a narrow view of information based on individuals since their main form of research relied on interviews.[26] With the mass amount of social data available today, researchers can now analyze a wider group and are able to obtain a broader view of information. They are able to use social networks, cell phone data, and perform online experiments that allow them to gather more information than before. [26]

Privacy Concerns

With the amount of data available about individuals accessible by many sources, privacy has become a major concern. Security breaches of customer and other social information such as the compromise of more than 56 million Home Depot customers’ credit card information[16] have impacted the concern of privacy with social data. How companies are using and the potential misuse of the personal information gathered is a concern for the majority of consumers.[16][17] Despite this, many people do not know how social networking sites and other sources are using and selling their data.[27] In 2014 study, only 25% of online users knew that their location could be accessed and only 14% knew that their web-surfing history could be accessed and shared.[16]

Even though privacy concern is a critical factor in people’s sharing of personal information on the internet and overall internet involvement,[19] most people are willing to share this information if the benefits of doing so outweigh the potential privacy and security costs.[15][17] Consumers enjoy the personalization of products and services that is possible because of this information gathering and despite the concerns, continue to use them.[16]

See also

References

  1. Weigend, Andreas. "The Social Data Revolution". Harvard Business Review. Retrieved July 15, 2009.
  2. 1 2 Hubbard, Douglas (2011). Pulse: The New Science of Harnessing Internet Buzz to Track Threats and Opportunities. John Wiley & Sons.
  3. 1 2 Vasileios Lampos; Nello Cristianini (2012). "Nowcasting Events from the Social Web with Statistical Learning". Acm Tist. 3 (4): 1. doi:10.1145/2337542.2337557. 72.
  4. 1 2 Thomas Lansdall‐Welfare; Vasileios Lampos; Nello Cristianini (August 2012). "Nowcasting the mood of the nation". Significance Magazine. Vol. 9 no. 4. doi:10.1111/j.1740-9713.2012.00588.x.
  5. Swathi Dharshana Naidu (Dec 2009). "Social Data Revolution". Posterous. Retrieved 2010-07-08.
  6. Dyson, Esther (March 23, 2010). "Health, not Health Care!". Huffington Post. Retrieved 2010-06-08.
  7. "Big Data for Development: From Information- to Knowledge Societies", Martin Hilbert (2013), SSRN Scholarly Paper No. ID 2205145). Rochester, NY: Social Science Research Network.
  8. Detecting macropatterns in global media content
  9. Twitter Mood: The Effects of the Recession on Public Mood in the UK
  10. 1 2 3 Fuchs, Christian. 2011. "Web 2.0, Prosumption, and Surveillance." Surveillance & Society 8(3): 288-309.
  11. Reid Hoffman (June 26, 2009). "Future of Jobs & Social Data Revolution". Techaffair.com. Retrieved 2010-07-02.
  12. Dyson, Esther (February 11, 2008). "The Coming Ad Revolution". The Wall Street Journal. Retrieved 2010-04-10.
  13. Donde, Deepa S., Chopade, Neha, and Ranjith, P.V. 2012. “Social networking sites: a new era of 21st century.” SIES Journal of Management 8(1): 66-73.
  14. Osatuyi, Babajide. 2013. “Information sharing on social media sites.” Computers in Human Behavior 29(6): 2622-2631.
  15. 1 2 3 4 Jai, Tun-Min, and King, Nancy J. 2016. “Privacy versus reward: Do loyalty programs increase consumers' willingness to share personal information with third-party advertisers and data brokers?” Journal of Retailing and Consumer Services 28: 296-303.
  16. 1 2 3 4 5 6 7 8 Morey, Timothy, Forbath, Theodore, and Schoop, Allison. 2015. “Customer data: designing for transparency and trust.” Harvard Business Review 93(5): 96-105
  17. 1 2 3 4 Roeber, Bjoern; Rehse, Olaf; Knorrek, Robert; Thomsen, Benjamin (2015). "Personal data: How context shapes consumers' data sharing with organizations from various sectors". Electronic Markets. 25 (2): 95. doi:10.1007/s12525-015-0183-0.
  18. 1 2 Smith, Natasha. 2015. “The datafication of marketing.” DM News: 16+. Retrieved from http://go.galegroup.com/
  19. 1 2 Lee, Seungsin; Lee, Younghee; Lee, Joing-In; Park, Jungkun (2015). "Personalized E-Services: Consumer Privacy Concern and Information Sharing". Social Behavior and Personality: an international journal. 43 (5): 729. doi:10.2224/sbp.2015.43.5.729.
  20. Tsai, Chieh-Yuan; Huang, Sheng-Hsiang (2014). "A data mining approach to optimise shelf space allocation in consideration of customer purchase and moving behaviours". International Journal of Production Research. 53 (3): 850. doi:10.1080/00207543.2014.937011.
  21. 1 2 3 4 Liu, Libo, Cheung, Christy M.K., and Lee, Matthew K.O. 2016. “An empirical investigation of information sharing behavior on social commerce sites.” International Journal of Information Management 36(5): 686-699.
  22. Chen, Jie, Teng, Lefa, Yu, Ying, and Yu, Xeer. 2016. “The effect of online information sources on purchase intentions between consumers with high and low susceptibility to informational influence.” Journal of Business Research 69(2): 467-475.
  23. 1 2 Nguyen, Duc T., and Jung, Jai E. 2016. “Real-time event detection for online behavioral analysis of big social data.” Future Generation Computer Systems 66: 137-145.
  24. 1 2 Spence, Patric R., Lachlan, Kenneth A., and Rainear, Adam M. 2016. “Social media and crisis research: Data collection and directions.” Computers in Human Behavior 54: 667-672.
  25. Chang, R. M., Kauffman, R.J., and Kwon, Y. 2014. Understanding the paradigm shift to computational social science in the presence of big data. Decision, 63, 67-80.
  26. 1 2 3 Mann, A. 2016. Core concept: computational social science. PNAS, 113(3). 468-470. doi: 10.1073/pnas.1524881113
  27. Lilley, Stephen, Frances S. Grodzinsky and Andra Gumbus. 2012. "Revealing the Commercialized and Compliant Facebook User." Journal of Information, Communication & Ethics in Society 10(2):82-92
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