Seq-to-Final: A Benchmark for Tuning from Sequential Distributions to a Final Time Point
Christina X Ji, Ahmed M Alaa, David Sontag

TL;DR
This paper introduces Seq-to-Final, a benchmark for evaluating methods that leverage sequential data to predict a final state, revealing that ignoring sequence structure often yields better results in synthetic image classification tasks.
Contribution
The paper constructs a synthetic benchmark with various distribution shifts to compare methods that use or ignore sequential data for final time point prediction.
Findings
Methods ignoring sequence structure perform well.
Leveraging sequential data does not always improve performance.
Benchmark facilitates comparison of different approaches.
Abstract
Distribution shift over time occurs in many settings. Leveraging historical data is necessary to learn a model for the last time point when limited data is available in the final period, yet few methods have been developed specifically for this purpose. In this work, we construct a benchmark with different sequences of synthetic shifts to evaluate the effectiveness of 3 classes of methods that 1) learn from all data without adapting to the final period, 2) learn from historical data with no regard to the sequential nature and then adapt to the final period, and 3) leverage the sequential nature of historical data when tailoring a model to the final period. We call this benchmark Seq-to-Final to highlight the focus on using a sequence of time periods to learn a model for the final time point. Our synthetic benchmark allows users to construct sequences with different types of shift and…
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Taxonomy
TopicsSimulation Techniques and Applications · Advanced Database Systems and Queries · Scientific Computing and Data Management
MethodsFocus · Balanced Selection
