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Paragraph vector based retrieval model for similar cases recommendation

机译:基于向量的类似案例推荐的检索模型

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Internet inquiry is playing an increasingly important role as the complement of the traditional medical service system, especially the similar cases recommendation. It can not only save the patients' waiting time, but also make use of the historical resources, for many cases with the same purpose have been solved perfectly. However, because of the diversity and non-standard of the patients' descriptions, the inquiry platform cannot find the cases with similar semantic easily. Most traditional retrieval methods require the overlap of two sentences, and this is not suitable with the diversity and non-standard descriptions. In this paper, we try to utilize the sentences' semantic representation in a continuous space to understand the cases, and then recommend the similar cases. We also incorporate it into query likelihood language models, trying to get better results. Our experimental data are all collected from a real internet inquiry platform, and the results show that our methods significantly outperform the state-of-the-art translation based methods for similar cases recommendation.
机译:互联网咨询正在发挥传统医疗服务系统的补充,特别是类似案例推荐的越来越重要的作用。它不仅可以节省患者的等待时间,还可以利用历史资源,对于许多具有相同目的的案例完全解决了。但是,由于患者描述的多样性和非标准,查询平台无法轻易找到具有类似语义的案例。大多数传统的检索方法都需要两个句子的重叠,这不适用于多样性和非标准描述。在本文中,我们尝试在连续空间中利用句子的语义表示来了解案例,然后推荐类似的情况。我们还将其纳入查询似然语言模型,试图获得更好的结果。我们的实验数据都从真正的互联网查询平台收集,结果表明,我们的方法显着优于类似案例推荐的最先进的基于方式的方式。

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