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《Journal of Beijing Institute of Technology》 EI CAS 2011年第1期F0003-F0003,共1页
An abstract not more than results and conclusion, should stracting journals, so it should 150 words, adequate as an index and summary, and including the aim, methods, appear at the beginning of the paper. The abstract... An abstract not more than results and conclusion, should stracting journals, so it should 150 words, adequate as an index and summary, and including the aim, methods, appear at the beginning of the paper. The abstract may be used in toto by the ab be self contained. 展开更多
关键词 key words should be 3-8 pieces of words or phrases that will assist readers and indexers in cross-indexing thisstudy.
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AUTOMATIC PATENT DOCUMFNT SUMMARIZATION FOR COLLABORATIVE KNOWLEDGE SYSTEMS AND SERVICES 被引量:9
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作者 Amy J.C. TRAPPEY Charles V. TRAPPEY Chun-Yi WU 《Journal of Systems Science and Systems Engineering》 SCIE EI CSCD 2009年第1期71-94,共24页
Engineering and research teams often develop new products and technologies by referring to inventions described in patent databases. Efficient patent analysis builds R&D knowledge, reduces new product development tim... Engineering and research teams often develop new products and technologies by referring to inventions described in patent databases. Efficient patent analysis builds R&D knowledge, reduces new product development time, increases market success, and reduces potential patent infringement. Thus, it is beneficial to automatically and systematically extract information from patent documents in order to improve knowledge sharing and collaboration among R&D team members. In this research, patents are summarized using a combined ontology based and TF-IDF concept clustering approach. The ontology captures the general knowledge and core meaning of patents in a given domain. Then, the proposed methodology extracts, clusters, and integrates the content of a patent to derive a summary and a cluster tree diagram of key terms. Patents from the International Patent Classification (IPC) codes B25C, B25D, B25F (categories for power hand tools) and B24B, C09G and H011 (categories for chemical mechanical polishing) are used as case studies to evaluate the compression ratio, retention ratio, and classification accuracy of the summarization results. The evaluation uses statistics to represent the summary generation and its compression ratio, the ontology based keyword extraction retention ratio, and the summary classification accuracy. The results show that the ontology based approach yields about the same compression ratio as previous non-ontology based research but yields on average an 11% improvement for the retention ratio and a 14% improvement for classification accuracy. 展开更多
关键词 Semantic knowledge service key phrase extraction document summarization text mining patent document analysis
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