俄语回指消解的混合方法

Anna Kozlova, Alexey Svischev, Olga Gureenkova, Tatiana Batura
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引用次数: 5

摘要

本文致力于应用一种基于规则和机器学习的混合方法来解决俄语中的回指。该模型结合了形式规则、Extra Trees机器学习算法和Balance Cascade算法,用于处理不平衡学习集。许多特征是从规则中获得的或从其他特征中生成的;此外,还考虑了句法上下文。采用神经网络算法SyntaxNet对句法上下文进行分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid approach for anaphora resolution in the Russian language
The paper is dedicated to applying a hybrid approach based on rules and machine learning for anaphora resolution in the Russian language. The model combines formal rules, the Extra Trees machine learning algorithm and the Balance Cascade algorithm for working with imbalanced learning sets. A number of features were obtained from the rules or were generated from other features; in addition, the syntactic context was taken into account. A neural network algorithm SyntaxNet was used to analyze the syntactic context.
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