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Applying Backpropagation Networks to Anaphor Resolution

机译:将反向传播网络应用于比喻解析

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摘要

Despite some promising early approaches, neural networks have by now received comparatively little attention as a machine learning model for robust, corpus-based anaphor resolution. The work presented in this paper is intended to fill the apparent gap in research. Based on a hybrid algorithm that combines manually knowledge-engineered antecedent filtering rules with machine-learned preference criteria, it is investigated what can be achieved by employing backpropagation networks for the corpus-based acquisition of preference strategies for pronoun resolution. Thorough evaluation will be carried out, thus systematically addressing the numerous experimental degrees of freedom, among which are sources of evidence (features, feature vector signatures), training data generation settings, number of hidden layer nodes, and number of training epochs. According to the evaluation results, the neural network approach performs at least similar to a decision-tree-based ancestor system that employs the same general hybrid strategy.
机译:尽管有一些有前途的早期方法,但作为一种可靠的,基于语料库的回指解析的机器学习模型,神经网络目前很少受到关注。本文提出的工作旨在填补研究中的明显空白。基于一种混合算法,该算法将手动知识工程化的先验过滤规则与机器学习的偏好标准相结合,研究了通过采用反向传播网络进行基于语料库的代词偏爱策略获取可以实现的目标。将进行全面评估,从而系统地解决众多实验自由度,其中包括证据来源(特征,特征向量签名),训练数据生成设置,隐藏层节点数和训练时期数。根据评估结果,神经网络方法的执行至少类似于采用相同通用混合策略的基于决策树的祖先系统。

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