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Methods Combination and ML-based Re-ranking of Multiple Hypothesis for Question-Answering Systems

机译:方法组合和基于ML的多重假设的问题回答系统重新排序

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Question answering systems answer correctly to different questions because they are based on different strategies. In order to increase the number of questions which can be answered by a single process, we propose solutions to combine two question answering systems, QAVAL and RITEL. QAVAL proceeds by selecting short passages, annotates them by question terms, and then extracts from them answers which are ordered by a machine learning validation process. RITEL develops a multi-level analysis of questions and documents. Answers are extracted and ordered according to two strategies: by exploiting the redundancy of candidates and a Bayesian model. In order to merge the system results, we developed different methods either by merging passages before answer ordering, or by merging end-results. The fusion of end-results is realized by voting, merging, and by a machine learning process on answer characteristics, which lead to an improvement of the best system results of 19 %.
机译:问答系统可以根据不同的策略正确回答不同的问题。为了增加单个过程可以回答的问题数量,我们提出了将两个问题回答系统QAVAL和RITEL结合起来的解决方案。 QAVAL通过选择简短的段落来进行,用问题术语对其进行注释,然后从中提取由机器学习验证过程排序的答案。 RITEL开发了问题和文档的多层次分析。答案是根据两种策略提取和排序的:通过利用候选者的冗余和贝叶斯模型。为了合并系统结果,我们通过在回答顺序之前合并段落或合并最终结果来开发了不同的方法。最终结果的融合是通过投票,合并以及对答案特征的机器学习过程实现的,这导致最佳系统结果提高了19%。

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