Published August 2015 | Version public
Book Section - Chapter

A Decision Tree Framework for Spatiotemporal Sequence Prediction

Abstract

We study the problem of learning to predict a spatiotemporal output sequence given an input sequence. In contrast to conventional sequence prediction problems such as part-of-speech tagging (where output sequences are selected using a relatively small set of discrete labels), our goal is to predict sequences that lie within a high-dimensional continuous output space. We present a decision tree framework for learning an accurate non-parametric spatiotemporal sequence predictor. Our approach enjoys several attractive properties, including ease of training, fast performance at test time, and the ability to robustly tolerate corrupted training data using a novel latent variable approach. We evaluate on several datasets, and demonstrate substantial improvements over existing decision tree based sequence learning frameworks such as SEARN and DAgger.

Additional Information

© 2015 ACM.

Additional details

Identifiers

Eprint ID
60579
DOI
10.1145/2783258.2783356
Resolver ID
CaltechAUTHORS:20150928-132143651

Dates

Created
2015-09-29
Created from EPrint's datestamp field
Updated
2021-11-10
Created from EPrint's last_modified field