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Biomedical Question Answering via Weighted Neural Network Passage Retrieval

机译:通过加权神经网络段落检索进行生物医学问答

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The amount of publicly available biomedical literature has been growing rapidly in recent years, yet question answering systems still struggle to exploit the full potential of this source of data. In a preliminary processing step, many question answering systems rely on retrieval models for identifying relevant documents and passages. This paper proposes a weighted cosine distance retrieval scheme based on neural network word embeddings. Our experiments are based on publicly available data and tasks from the BioASQ biomedical question answering challenge and demonstrate significant performance gains over a wide range of state-of-the-art models.
机译:近年来,可公开获得的生物医学文献数量迅速增长,但问答系统仍在努力开发这种数据源的全部潜力。在初步处理步骤中,许多问答系统都依赖于检索模型来标识相关文档和段落。提出了一种基于神经网络词嵌入的加权余弦距离检索方案。我们的实验基于来自BioASQ生物医学问答式挑战的公开可用数据和任务,并证明了在各种最新模型中的显着性能提升。

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