Bias in Machine Learning Software: Why? How? What to Do?Distinguished Paper Award
Thu 26 Aug 2021 07:00 - 07:10 - SE & AI—Search Based Software Engineering Chair(s): Phuong T. Nguyen
Increasingly, software is making autonomous decisions in case of criminal sentencing, approving credit cards, hiring employees, and so on. Some of these decisions show bias and adversely affect certain social groups (e.g. those defined by sex, race, age, marital status). Many prior works on bias mitigation take the following form: change the data or learners in multiple ways, then see if any of that improves fairness. Perhaps a better approach is to postulate root causes of bias and then applying some resolution strategy. This paper postulates that the root causes of bias are the prior decisions that affect- (a) what data was selected and (b) the labels assigned to those examples. Our Fair-SMOTE algorithm removes biased labels; and rebalances internal distributions such that based on sensitive attribute, examples are equal in both positive and negative classes. On testing, it was seen that this method was just as effective at reducing bias as prior approaches. Further, models generated via Fair-SMOTE achieve higher performance (measured in terms of recall and F1) than other state-of-the-art fairness improvement algorithms. To the best of our knowledge, measured in terms of number of analyzed learners and datasets, this study is one of the largest studies on bias mitigation yet presented in the literature.
Wed 25 AugDisplayed time zone: Athens change
19:00 - 20:00 | SE & AI—Search Based Software EngineeringResearch Papers +12h Chair(s): Myra Cohen Iowa State University | ||
19:00 10mPaper | Bias in Machine Learning Software: Why? How? What to Do?Distinguished Paper Award Research Papers Joymallya Chakraborty North Carolina State University, Suvodeep Majumder North Carolina State University, Tim Menzies North Carolina State University DOI Pre-print | ||
19:10 10mPaper | Understanding Neural Code Intelligence through Program Simplification Research Papers Md Rafiqul Islam Rabin University of Houston, Vincent J. Hellendoorn Carnegie Mellon University, Amin Alipour University of Houston DOI Pre-print Media Attached | ||
19:20 10mPaper | Multi-objectivizing Software Configuration Tuning Research Papers DOI Pre-print | ||
19:30 30mLive Q&A | Q&A (SE & AI—Search Based Software Engineering) Research Papers |
Thu 26 AugDisplayed time zone: Athens change
07:00 - 08:00 | SE & AI—Search Based Software EngineeringResearch Papers Chair(s): Phuong T. Nguyen University of L’Aquila | ||
07:00 10mPaper | Bias in Machine Learning Software: Why? How? What to Do?Distinguished Paper Award Research Papers Joymallya Chakraborty North Carolina State University, Suvodeep Majumder North Carolina State University, Tim Menzies North Carolina State University DOI Pre-print | ||
07:10 10mPaper | Understanding Neural Code Intelligence through Program Simplification Research Papers Md Rafiqul Islam Rabin University of Houston, Vincent J. Hellendoorn Carnegie Mellon University, Amin Alipour University of Houston DOI Pre-print Media Attached | ||
07:20 10mPaper | Multi-objectivizing Software Configuration Tuning Research Papers DOI Pre-print | ||
07:30 30mLive Q&A | Q&A (SE & AI—Search Based Software Engineering) Research Papers |