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Beyond Factoid QA: Effective Methods for Non-factoid Answer Sentence Retrieval

机译:超越Factoid质量检查:非Factoid答案句子检索的有效方法

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Retrieving finer grained text units such as passages or sentences as answers for non-factoid Web queries is becoming increasingly important for applications such as mobile Web search. In this work, we introduce the answer sentence retrieval task for non-factoid Web queries, and investigate how this task can be effectively solved under a learning to rank framework. We design two types of features, namely semantic and context features, beyond traditional text matching features. We compare learning to rank methods with multiple baseline methods including query likelihood and the state-of-the-art convolutional neural network based method, using an answer-annotated version of the TREC GOV2 collection. Results show that features used previously to retrieve topical sentences and factoid answer sentences are not sufficient for retrieving answer sentences for non-factoid queries, but with semantic and context features, we can significantly outperform the baseline methods.
机译:检索更细粒度的文本单元(例如段落或句子)作为非事实Web查询的答案,对于诸如移动Web搜索之类的应用程序变得越来越重要。在这项工作中,我们介绍了针对非事实Web查询的答案句子检索任务,并研究了如何在学习排名框架下有效解决该任务。除了传统的文本匹配功能,我们还设计了两种类型的功能,即语义和上下文功能。我们使用TREC GOV2集合的答案注释版本,将学习排序方法与多个基准方法(包括查询可能性和基于最新卷积神经网络的方法)进行比较。结果表明,以前用于检索主题句和事实类答案句的功能不足以检索非事实类查询的答案句,但是有了语义和上下文功能,我们可以大大胜过基线方法。

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