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Exploring similarity between academic paper and patent based on Latent Semantic Analysis and Vector Space Model

机译:基于潜在语义分析和向量空间模型的学术论文与专利相似性研究

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With the development of network technology, the storage format of science and technology literature changes from paper to electronic version, and its size also is increasing. The academic papers and patents are important science and technology literature. To a certain extent, they represent the highest level of academic research and technical innovation. In this paper, we perform a study to measure the semantic similarity between academic papers and patents. The paper argues it's important to get similarity between single paper and single patent. To find linkage between them, four semantic similarity measurements are compared: Latent Semantic Analysis (LSA) based on words, LSA based on terms, Vector Space Model (VSM) based on words, VSM based on terms. A case study is conducted in the area of optical sensors. And result shows that the measurement method of terms based VSM is the best to find the similarity between single paper and single patent.
机译:随着网络技术的发展,科技文献的存储格式由纸质变为电子版,并且其规模也在不断扩大。学术论文和专利是重要的科学技术文献。在一定程度上,它们代表了最高水平的学术研究和技术创新。在本文中,我们进行了一项研究,以衡量学术论文和专利之间的语义相似性。该论文认为,获得单篇论文和一项专利之间的相似性很重要。为了找到它们之间的联系,比较了四个语义相似性度量:基于词的潜在语义分析(LSA),基于词的LSA,基于词的向量空间模型(VSM),基于词的VSM。在光学传感器领域进行了案例研究。结果表明,基于术语的VSM的度量方法是发现单篇论文和一项专利之间相似性的最佳方法。

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