Learning a Hybrid Architecture for Sequence Regression and Annotation
Abstract
When learning a hidden Markov model (HMM), sequen- tial observations can often be complemented by real-valued summary response variables generated from the path of hid- den states. Such settings arise in numerous domains, includ- ing many applications in biology, like motif discovery and genome annotation. In this paper, we present a flexible frame- work for jointly modeling both latent sequence features and the functional mapping that relates the summary response variables to the hidden state sequence. The algorithm is com- patible with a rich set of mapping functions. Results show that the availability of additional continuous response vari- ables can simultaneously improve the annotation of the se- quential observations and yield good prediction performance in both synthetic data and real-world datasets.
Cite
@article{arxiv.1512.05219,
title = {Learning a Hybrid Architecture for Sequence Regression and Annotation},
author = {Yizhe Zhang and Ricardo Henao and Lawrence Carin and Jianling Zhong and Alexander J. Hartemink},
journal= {arXiv preprint arXiv:1512.05219},
year = {2015}
}
Comments
AAAI 2016