Neural Particle Smoothing for Sampling from Conditional Sequence Models
Computation and Language
2018-05-01 v1
Abstract
We introduce neural particle smoothing, a sequential Monte Carlo method for sampling annotations of an input string from a given probability model. In contrast to conventional particle filtering algorithms, we train a proposal distribution that looks ahead to the end of the input string by means of a right-to-left LSTM. We demonstrate that this innovation can improve the quality of the sample. To motivate our formal choices, we explain how our neural model and neural sampler can be viewed as low-dimensional but nonlinear approximations to working with HMMs over very large state spaces.
Cite
@article{arxiv.1804.10747,
title = {Neural Particle Smoothing for Sampling from Conditional Sequence Models},
author = {Chu-Cheng Lin and Jason Eisner},
journal= {arXiv preprint arXiv:1804.10747},
year = {2018}
}
Comments
NAACL 2018