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A Simple Baseline for Predicting Events with Auto-Regressive Tabular Transformers

Authors :
Stein, Alex
Sharpe, Samuel
Bergman, Doron
Kumar, Senthil
Bruss, C. Bayan
Dickerson, John
Goldstein, Tom
Goldblum, Micah
Publication Year :
2024

Abstract

Many real-world applications of tabular data involve using historic events to predict properties of new ones, for example whether a credit card transaction is fraudulent or what rating a customer will assign a product on a retail platform. Existing approaches to event prediction include costly, brittle, and application-dependent techniques such as time-aware positional embeddings, learned row and field encodings, and oversampling methods for addressing class imbalance. Moreover, these approaches often assume specific use-cases, for example that we know the labels of all historic events or that we only predict a pre-specified label and not the data's features themselves. In this work, we propose a simple but flexible baseline using standard autoregressive LLM-style transformers with elementary positional embeddings and a causal language modeling objective. Our baseline outperforms existing approaches across popular datasets and can be employed for various use-cases. We demonstrate that the same model can predict labels, impute missing values, or model event sequences.<br />Comment: 10 pages, 6 pages of references+appendix

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.10648
Document Type :
Working Paper