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Multi-Task Structured Prediction for Entity Analysis: Search-Based Learning Algorithms

机译:实体分析的多任务结构化预测:基于搜索的学习算法

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Entity analysis in natural language processing involves solving multiple structured prediction problems such as mention detection, coreference resolution, and entity linking. We explore the space of search-based learning approaches to solve the problem of em multi-task structured prediction (MTSP) in the context of entity analysis. In this paper, we study three different search architectures to solve MTSP problems that make different tradeoffs between speed and accuracy of training and inference. In all three architectures, we learn one or more scoring functions that employ both intra-task and inter-task features. In the “pipeline” architecture, which is the fastest, we solve different tasks one after another in a pipelined fashion. In the “joint” architecture, which is the most expensive, we formulate MTSP as a single-task structured prediction, and search the joint space of multi-task structured outputs. To improve the speed of joint architecture, we introduce two different pruning methods and associated learning techniques. In the intermediate “cyclic” architecture, we cycle through the tasks multiple times in sequence until there is no performance improvement. Results on two benchmark domains show that the joint architecture improves over the pipeline approach as well as the previous state-of-the-art approach based on graphical models. The cyclic architecture is faster than the joint approach and achieves competitive performance.
机译:自然语言处理中的实体分析涉及解决多个结构化的预测问题,例如提及检测,共指解析和实体链接。我们探索基于搜索的学习方法的空间,以解决实体分析环境中的 em多任务结构化预测(MTSP)问题。在本文中,我们研究了三种不同的搜索体系结构来解决MTSP问题,这些问题在训练的速度和准确性以及推理之间做出了不同的权衡。在这三种体系结构中,我们学习一个或多个使用任务内和任务间功能的评分功能。在最快的“流水线”架构中,我们以流水线方式一个接一个地解决了不同的任务。在最昂贵的“联合”体系结构中,我们将MTSP公式化为单任务结构化预测,然后搜索多任务结构化输出的联合空间。为了提高联合体系结构的速度,我们引入了两种不同的修剪方法和相关的学习技术。在中间的“循环”架构中,我们依次循环执行任务,直到没有性能提高为止。在两个基准域上的结果表明,联合体系结构比流水线方法和以前基于图形模型的最新方法有所改进。循环体系结构比联合方法要快,并且可以实现竞争性能。

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