Study of ontology technology in field word segmentation system of digital library
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Aiming at the disadvantages of the word segmentation method based on string matching, the word segmentation method based on comprehension and the word segmentation method based on statistic, a novel field word segmentation model based on ontology was studied. With ontology technology introduced into Chinese word segmentation, the novel model eliminates ambiguities to a great extent and avoids semantic losing problem which is result from ignoring the context information in traditional Chinese word segmentation method. The experimental results show that the novel method can improve the segmentation precision greatly. And this study is valuable for next semantic retrieval in the future work.
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