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An Empirical Study on Incorporating Prior Knowledge into BLSTM Framework in Answer Selection

机译:在选择答案中将先验知识纳入BLSTM框架的实证研究

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摘要

Deep learning has become the state-of the art solution to answer selection. One distinguishing advantage of deep learning is that it avoids manual engineering via its end-to-end structure. But in the literature, substantial practices of introducing prior knowledge into the deep learning process are still observed with positive effect. Following this thread, this paper investigates the contribution of incorporating different prior knowledge into deep learning via an empirical study. Under a typical BLSTM framework, 3 levels, totaling 27 features are jointly integrated into the answer selection task. Experiment result confirms that incorporating prior knowledge can enhances the model, and different levels of linguistic features can improve the performance consistantly.
机译:深度学习已成为答案选择的最新解决方案。深度学习的一个显着优势是,它通过端到端的结构避免了人工工程。但是在文献中,仍然观察到将先验知识引入深度学习过程的大量实践,并产生了积极的效果。遵循这一思路,本文通过实证研究,研究了将不同的先验知识纳入深度学习的贡献。在典型的BLSTM框架下,将3个级别(共27个功能)联合集成到答案选择任务中。实验结果证实,结合先验知识可以增强模型,不同层次的语言特征可以持续改善性能。

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