Literature DB >> 28933942

Enhancing Transparency and Control When Drawing Data-Driven Inferences About Individuals.

Daizhuo Chen1, Samuel P Fraiberger2, Robert Moakler3, Foster Provost3.   

Abstract

Recent studies show the remarkable power of fine-grained information disclosed by users on social network sites to infer users' personal characteristics via predictive modeling. Similar fine-grained data are being used successfully in other commercial applications. In response, attention is turning increasingly to the transparency that organizations provide to users as to what inferences are drawn and why, as well as to what sort of control users can be given over inferences that are drawn about them. In this article, we focus on inferences about personal characteristics based on information disclosed by users' online actions. As a use case, we explore personal inferences that are made possible from "Likes" on Facebook. We first present a means for providing transparency into the information responsible for inferences drawn by data-driven models. We then introduce the "cloaking device"-a mechanism for users to inhibit the use of particular pieces of information in inference. Using these analytical tools we ask two main questions: (1) How much information must users cloak to significantly affect inferences about their personal traits? We find that usually users must cloak only a small portion of their actions to inhibit inference. We also find that, encouragingly, false-positive inferences are significantly easier to cloak than true-positive inferences. (2) Can firms change their modeling behavior to make cloaking more difficult? The answer is a definitive yes. We demonstrate a simple modeling change that requires users to cloak substantially more information to affect the inferences drawn. The upshot is that organizations can provide transparency and control even into complicated, predictive model-driven inferences, but they also can make control easier or harder for their users.

Entities:  

Keywords:  comprehensibility; control; inference; predictive modeling; privacy; transparency

Mesh:

Year:  2017        PMID: 28933942      PMCID: PMC5647518          DOI: 10.1089/big.2017.0074

Source DB:  PubMed          Journal:  Big Data        ISSN: 2167-6461            Impact factor:   2.128


  5 in total

1.  Research Dilemmas with Behavioral Big Data.

Authors:  Galit Shmueli
Journal:  Big Data       Date:  2017-06       Impact factor: 2.128

2.  Predictive Modeling With Big Data: Is Bigger Really Better?

Authors:  Enric Junqué de Fortuny; David Martens; Foster Provost
Journal:  Big Data       Date:  2013-10-24       Impact factor: 2.128

3.  Enhancing Transparency and Control When Drawing Data-Driven Inferences About Individuals.

Authors:  Daizhuo Chen; Samuel P Fraiberger; Robert Moakler; Foster Provost
Journal:  Big Data       Date:  2017-09       Impact factor: 2.128

4.  Private traits and attributes are predictable from digital records of human behavior.

Authors:  Michal Kosinski; David Stillwell; Thore Graepel
Journal:  Proc Natl Acad Sci U S A       Date:  2013-03-11       Impact factor: 11.205

5.  Personality, gender, and age in the language of social media: the open-vocabulary approach.

Authors:  H Andrew Schwartz; Johannes C Eichstaedt; Margaret L Kern; Lukasz Dziurzynski; Stephanie M Ramones; Megha Agrawal; Achal Shah; Michal Kosinski; David Stillwell; Martin E P Seligman; Lyle H Ungar
Journal:  PLoS One       Date:  2013-09-25       Impact factor: 3.240

  5 in total
  1 in total

1.  Enhancing Transparency and Control When Drawing Data-Driven Inferences About Individuals.

Authors:  Daizhuo Chen; Samuel P Fraiberger; Robert Moakler; Foster Provost
Journal:  Big Data       Date:  2017-09       Impact factor: 2.128

  1 in total

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