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Unsupervised Spectral Learning of FSTs

机译:FSTS的无监督光谱学习

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摘要

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.
机译:有限状态传感器(FST)是用于建模配对输入输出序列的标准工具,并用于许多应用,从计算生物学到自然语言处理。最近Balle等人。提出了一种用于从对准输入输出序列的样本学习FST的光谱算法。在本文中,我们解决了对对准对学习算法未知的更现实的,但具有挑战性的环境。我们将FST学习框架找到满足从可观察统计数据的满足限制的低等级Hankel矩阵。在这种制定下,我们为FST分布提供了可识别性的结果。然后,在以前的秩最小化的工作之后,我们提出了一个定期的凸面放宽这一目标,这是基于最小化对线性约束的核规范惩罚,并且可以有效地解决。

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