The distribution gap between training datasets and data encountered in production is well acknowledged. Training datasets are often constructed over a fixed period of time and by carefully curating the data to be labeled. Thus, training datasets may not contain all possible variations of data that could be encountered in real-world production environments. Tasked with building an entity resolution system - a model that identifies and consolidates data points that represent the same person - our first model exhibited a clear training-production performance gap. In this case study, we discuss our human-in-the-loop enabled, data-centric solution to closing the training-production performance divergence. We conclude with takeaways that apply to data-centric learning at large.
@article{arxiv.2111.10497,
title = {Combining Data-driven Supervision with Human-in-the-loop Feedback for Entity Resolution},
author = {Wenpeng Yin and Shelby Heinecke and Jia Li and Nitish Shirish Keskar and Michael Jones and Shouzhong Shi and Stanislav Georgiev and Kurt Milich and Joseph Esposito and Caiming Xiong},
journal= {arXiv preprint arXiv:2111.10497},
year = {2021}
}
Comments
Camera-ready for Data-Centric AI Workshop at NeurIPS 2021