Concepedia

Publication | Open Access

Big Data's Disparate Impact

2.1K

Citations

7

References

2016

Year

TLDR

Algorithmic data mining promises bias‑free decisions, yet imperfect or socially biased data can embed and amplify existing prejudices. Blind use of data mining can covertly deny disadvantaged groups participation, producing hard‑to‑detect discrimination.

Abstract

Advocates of algorithmic techniques like data mining argue that these techniques eliminate human biases from the decision-making process. But an algorithm is only as good as the data it works with. Data is frequently imperfect in ways that allow these algorithms to inherit the prejudices of prior decision makers. In other cases, data may simply reflect the widespread biases that persist in society at large. In still others, data mining can discover surprisingly useful regularities that are really just preexisting patterns of exclusion and inequality. Unthinking reliance on data mining can deny historically disadvantaged and vulnerable groups full participation in society. Worse still, because the resulting discrimination is almost always an unintentional emergent property of the algorithm's use rather than a conscious choice by its programmers, it can be unusually hard to identify the source of the problem or to explain it to a court.

References

YearCitations

2013

2.8K

2014

904

2010

760

2009

227

2011

99

1987

43

1974

10

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