Skip to yearly menu bar Skip to main content


Poster

Unsupervised Spectral Learning of Finite State Transducers

Raphael Bailly · Xavier Carreras · Ariadna Quattoni

Harrah's Special Events Center, 2nd Floor

Abstract:

Finite-State Transducers (FST) are a standard tool for modeling paired input-output sequences and are used in numerous applications, ranging from computational biology to natural language processing. Recently Balle et al. presented a spectral algorithm for learning FST from samples of aligned input-output sequences. In this paper we address the more realistic, yet challenging setting where the alignments are unknown to the learning algorithm. We frame FST learning as finding a low rank Hankel matrix satisfying constraints derived from observable statistics. Under this formulation, we provide identifiability results for FST distributions. Then, following previous work on rank minimization, we propose a regularized convex relaxation of this objective which is based on minimizing a nuclear norm penalty subject to linear constraints and can be solved efficiently.

Live content is unavailable. Log in and register to view live content