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Big Data Scoring

Big Data Scoring is a cloud-based service that lets consumer lenders improve loan quality and acceptance rates through the use of big data. The company was founded in 2013 and has offices in UK, Finland, Chile, Indonesia and Poland. The company's services are aimed at all lenders – banks, payday lenders, peer-to-peer lending platforms, microfinance providers and leasing companies.[1]

Big data based credit scoring models edit

Based on Facebook information edit

On April 9, 2013, the company announced that they have built a credit scoring model based purely on information from Facebook. According to the company, the scoring model has a Gini coefficient of 0.340. In order to build the model, Facebook data about individuals was collected in various European countries with prior permission from the individuals. This data was then combined with the actual loan payment information for the same people and the scoring models were built using the same tools used in building traditional credit scoring models.[2]

Based on publicly available sources edit

Big Data Scoring collects vast amounts of data from publicly available online sources and uses it to predict individuals’ behavior by applying proprietary data processing and scoring algorithms. Based on client feedback, their solution delivers an improvement of up to 25% in scoring accuracy when combined with traditional in-house methods. This also robustly translates to an equivalent increase in the bottom line.[3] In markets where traditional credit bureau data is lacking, the added benefit can be even greater to people with little or even no credit history, for example:

This results in more people receiving access to credit with a better interest rate thanks to increase of scoring model accuracy.

Predictive powers of big data in credit scoring edit

Facebook information edit

The company is not the first to show the predictive powers of Facebook data. Michal Kosinski, David Stillwell, and Thore Graepel from University of Cambridge have shown that "easily accessible digital records of behavior, Facebook Likes, can be used to automatically and accurately predict a range of highly sensitive personal attributes including: sexual orientation, ethnicity, religious and political views, personality traits, intelligence, happiness, use of addictive substances, parental separation, age, and gender.[4]

Public sources edit

Filene Research Institute published a paper showing clear patterns in transactional data, credit score and external factors like the recent price of S&P 500.[5]

Press coverage and acknowledgements edit

In October 2013, Big Data Scoring was selected as one finalist of the Websummit exhibition start-up ALPHA program.[6] In March 2013, Big Data Scoring was selected as one finalists of the Code_n competition, which is part of the CeBIT exhibition in Hannover, Germany.[7] During Finovate Fall 2015 conference the CEO of Big Data Scoring presented their solutions live on stage.[8] The company has been featured in many on-line magazines, including MarketWatch,[9] PCWorld[10] and eWeek.[11]

Big Data Scoring is working together with MasterCard in their Start Path program.[12]

Criticism edit

Estonian business daily Äripäev raised the question whether data mining used for credit scoring is done legally. According to the company, their solution requires a permission from the users of Facebook to access their data and nothing is collected without the prior permission.[13] Other sources such as MSN News have cited invasion of privacy as an additional concern regarding using social media information in credit scoring.[14]

References edit

  1. ^ "Big Data Scoring". Company web page.
  2. ^ . Company web page. 9 April 2013. Archived from the original on 2014-05-29.
  3. ^ . www.bigdatascoring.com. Archived from the original on 2015-10-22. Retrieved 2015-11-27.
  4. ^ Kosinski, Michal; David Stillwell; Thore Graepel (February 12, 2013). "Private traits and attributes are predictable from digital records of human behavior" (PDF): 4. {{cite journal}}: Cite journal requires |journal= (help)
  5. ^ Kallerhoff, Philipp (2013). (PDF). Filene Research Institute. Archived from the original (PDF) on 8 December 2015. Retrieved 25 November 2015.
  6. ^ (PDF). Archived from the original (PDF) on 2013-11-02. Retrieved 2014-04-15.
  7. ^ (PDF). Archived from the original (PDF) on 2014-05-27.
  8. ^ "FinovateFall 2015 - Big Data Scoring - Finovate". Finovate. Retrieved 2015-11-27.
  9. ^ Pimentel, Benjamin. "When Facebook is bad for one's credit rating". MarketWatch. Retrieved March 13, 2014.
  10. ^ "Should your Facebook profile influence your credit score? Startups say yes". PCWorld. Retrieved March 11, 2014.
  11. ^ "CeBIT Code_n Exhibit Shows Why Useful Innovation Is the Best Kind". eWeek. Retrieved March 13, 2014.
  12. ^ "Portfolio | Start Path". www.startpath.com. Retrieved 2015-11-27.
  13. ^ "We Are Not Data Mining From Social Media Illegally". Baltic Business News. May 8, 2013.
  14. ^ . MSN News. Archived from the original on August 29, 2013. Retrieved August 27, 2013.

data, scoring, cloud, based, service, that, lets, consumer, lenders, improve, loan, quality, acceptance, rates, through, data, company, founded, 2013, offices, finland, chile, indonesia, poland, company, services, aimed, lenders, banks, payday, lenders, peer, . Big Data Scoring is a cloud based service that lets consumer lenders improve loan quality and acceptance rates through the use of big data The company was founded in 2013 and has offices in UK Finland Chile Indonesia and Poland The company s services are aimed at all lenders banks payday lenders peer to peer lending platforms microfinance providers and leasing companies 1 Contents 1 Big data based credit scoring models 1 1 Based on Facebook information 1 2 Based on publicly available sources 2 Predictive powers of big data in credit scoring 2 1 Facebook information 2 2 Public sources 3 Press coverage and acknowledgements 4 Criticism 5 ReferencesBig data based credit scoring models editBased on Facebook information edit On April 9 2013 the company announced that they have built a credit scoring model based purely on information from Facebook According to the company the scoring model has a Gini coefficient of 0 340 In order to build the model Facebook data about individuals was collected in various European countries with prior permission from the individuals This data was then combined with the actual loan payment information for the same people and the scoring models were built using the same tools used in building traditional credit scoring models 2 Based on publicly available sources edit Big Data Scoring collects vast amounts of data from publicly available online sources and uses it to predict individuals behavior by applying proprietary data processing and scoring algorithms Based on client feedback their solution delivers an improvement of up to 25 in scoring accuracy when combined with traditional in house methods This also robustly translates to an equivalent increase in the bottom line 3 In markets where traditional credit bureau data is lacking the added benefit can be even greater to people with little or even no credit history for example young people unbanked and underbanked recent immigrants citation needed This results in more people receiving access to credit with a better interest rate thanks to increase of scoring model accuracy Predictive powers of big data in credit scoring editFacebook information edit The company is not the first to show the predictive powers of Facebook data Michal Kosinski David Stillwell and Thore Graepel from University of Cambridge have shown that easily accessible digital records of behavior Facebook Likes can be used to automatically and accurately predict a range of highly sensitive personal attributes including sexual orientation ethnicity religious and political views personality traits intelligence happiness use of addictive substances parental separation age and gender 4 Public sources edit Filene Research Institute published a paper showing clear patterns in transactional data credit score and external factors like the recent price of S amp P 500 5 Press coverage and acknowledgements editIn October 2013 Big Data Scoring was selected as one finalist of the Websummit exhibition start up ALPHA program 6 In March 2013 Big Data Scoring was selected as one finalists of the Code n competition which is part of the CeBIT exhibition in Hannover Germany 7 During Finovate Fall 2015 conference the CEO of Big Data Scoring presented their solutions live on stage 8 The company has been featured in many on line magazines including MarketWatch 9 PCWorld 10 and eWeek 11 Big Data Scoring is working together with MasterCard in their Start Path program 12 Criticism editEstonian business daily Aripaev raised the question whether data mining used for credit scoring is done legally According to the company their solution requires a permission from the users of Facebook to access their data and nothing is collected without the prior permission 13 Other sources such as MSN News have cited invasion of privacy as an additional concern regarding using social media information in credit scoring 14 References edit Big Data Scoring Company web page First Ever Generic European Social Media Scorecard Ready Company web page 9 April 2013 Archived from the original on 2014 05 29 Case study about a Central European lender Big Data Scoring The Leader in Big Data Credit Scoring Solutions www bigdatascoring com Archived from the original on 2015 10 22 Retrieved 2015 11 27 Kosinski Michal David Stillwell Thore Graepel February 12 2013 Private traits and attributes are predictable from digital records of human behavior PDF 4 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Kallerhoff Philipp 2013 Big Data and Credit Unions Machine Learning in Member Transactions PDF Filene Research Institute Archived from the original PDF on 8 December 2015 Retrieved 25 November 2015 WebSummit ALPHA Finalist List PDF Archived from the original PDF on 2013 11 02 Retrieved 2014 04 15 List of CODE n finalists PDF Archived from the original PDF on 2014 05 27 FinovateFall 2015 Big Data Scoring Finovate Finovate Retrieved 2015 11 27 Pimentel Benjamin When Facebook is bad for one s credit rating MarketWatch Retrieved March 13 2014 Should your Facebook profile influence your credit score Startups say yes PCWorld Retrieved March 11 2014 CeBIT Code n Exhibit Shows Why Useful Innovation Is the Best Kind eWeek Retrieved March 13 2014 Portfolio Start Path www startpath com Retrieved 2015 11 27 We Are Not Data Mining From Social Media Illegally Baltic Business News May 8 2013 Rumor Facebook likes can hurt your credit score MSN News Archived from the original on August 29 2013 Retrieved August 27 2013 Retrieved from https en wikipedia org w index php title Big Data Scoring amp oldid 1222845179, wikipedia, wiki, book, books, library,

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