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Spectral Learning from a Single Trajectory under Finite-State Policies

机译:在有限状态政策下的单个轨迹的光谱学习

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We present spectral methods of moments for learning sequential models from a single trajectory, in stark contrast with the classical literature that assumes the availability of multiple i.i.d. trajectories. Our approach leverages an efficient SVD-based learning algorithm for weighted automata and provides the first rigorous analysis for learning many important models using dependent data. We state and analyze the algorithm under three increasingly difficult scenarios: probabilistic automata, stochastic weighted automata, and reactive predictive state representations controlled by a finite-state policy. Our proofs include novel tools for studying mixing properties of stochastic weighted automata.
机译:我们呈现用于从单个轨迹学习顺序模型的频谱方法,与假设多个i.i.d的可用性的典型文献中的常规文献中的术语对比。轨迹。我们的方法利用了基于高效的自动机的基于SVD的学习算法,提供了使用依赖数据学习许多重要模型的第一个严格分析。我们在三个越来越困难的场景下陈述并分析了算法:概率自动机,随机加权自动机和由有限状态政策控制的反应预测状态表示。我们的证据包括用于研究随机加权自动机的混合性能的新型工具。

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