Designing Data: Proactive Data Collection and Iteration for Machine Learning
In collaboration with Massachusetts Institute of Technology
AuthorsAspen Hopkins, Fred Hohman, Luca Zappella, Xavier Suau, Dominik Moritz
In collaboration with Massachusetts Institute of Technology
AuthorsAspen Hopkins, Fred Hohman, Luca Zappella, Xavier Suau, Dominik Moritz
Lack of diversity in data collection has caused significant failures in machine learning (ML) applications. While ML developers perform post-collection interventions, these are time intensive and rarely comprehensive. Thus, new methods to track and manage data collection, iteration, and model training are necessary for evaluating whether datasets reflect real world variability. We present designing data, an iterative, bias mitigating approach to data collection connecting HCI concepts with ML techniques. Our process includes (1) Pre-Collection Planning, to reflexively prompt and document expected data distributions; (2) Collection Monitoring, to systematically encourage sampling diversity; and (3) Data Familiarity, to identify samples that are unfamiliar to a model through Out-of-Distribution (OOD) methods. We instantiate designing data through our own data collection and applied ML case study. We find models trained on "designed" datasets generalize better across intersectional groups than those trained on similarly sized but less targeted datasets, and that data familiarity is effective for debugging datasets.
April 25, 2020research area Human-Computer Interactionconference CHI
June 1, 2019research area Data Science and Annotationconference SIGMOD