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A PENALTY-LOGIC SIMPLE-TRANSITION MODEL FOR STRUCTURED SEQUENCES

机译:结构序列的惩罚逻辑简单过渡模型

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We study the problem of learning to infer hidden-state sequences of processes whose states and observations are propositionally or relationally factored. Unfortunately, standard exact inference techniques such as Viterbi and graphical model inference exhibit exponential complexity for these processes. The main motivation behind our work is to identify a restricted space of models, which facilitate efficient inference, yet are expressive enough to remain useful in many applications. In particular, we present the penalty-logic simple-transition model, which utilizes a very simple-transition structure where the transition cost between any two states is constant. While not appropriate for all complex processes, we argue that it is often rich enough in many applications of interest, and when it is applicable there can be inference and learning advantages compared to more general models. In particular, we show that sequential inference for this model, that is, finding a minimum-cost state sequence, efficiently reduces to a single-state minimization (SSM) problem. We then show how to define atemporal-cost models in terms of penalty logic, or weighted logical constraints, and how to use this representation for practically efficient SSM computation. We present a method for learning the weights of our model from labeled training data based on Perceptron updates. Finally, we give experiments in both propositional and relational video-interpretation domains showing advantages compared to more general models.
机译:我们研究了学习推断过程的隐藏状态序列的问题,这些过程的状态和观察受到命题或关系因素的影响。不幸的是,标准的精确推理技术(如Viterbi和图形模型推理)对这些过程显示出指数级的复杂性。我们工作的主要动机是确定有限的模型空间,这些模型可以促进有效的推理,但又具有足够的表达力,可以在许多应用程序中保持有用。特别是,我们提出了惩罚逻辑简单转换模型,该模型利用了非常简单的转换结构,其中任何两个状态之间的转换成本都是恒定的。尽管不适用于所有复杂的过程,但我们认为它在许多感兴趣的应用程序中通常足够丰富,并且与更通用的模型相比,在适用时可以具有推理和学习的优势。尤其是,我们证明了该模型的顺序推理,即找到最小成本状态序列,可以有效地减少到单状态最小化(SSM)问题。然后,我们展示如何根据惩罚逻辑或加权逻辑约束来定义时间成本模型,以及如何将这种表示形式用于实际有效的SSM计算。我们提出了一种基于Perceptron更新从标记的训练数据中学习模型权重的方法。最后,我们在命题和关系视频解释领域中进行了实验,与更通用的模型相比,它们显示出了优势。

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