Fast semantic object search and detection for vegetable trading information using Steiner tree

作者:Ming Zhao, Tengyang Tao, Xiaoyin Duanmu

摘要

We propose an approach to speed up the semantic object search and detection for vegetable trading information using Steiner Tree. Through analysis, comparing the relevant ontology construction method, we present a set of ontology construction methods based on domain ontology for vegetables transaction information. With Jena2 provides rule-based reasoning engine, More related information could be searched with the help of ontology database and ontology reasoning, query expansion is to achieve sub-vocabulary of user input, the parent class of words, equivalence class of extensions, and use of ontology reasoning to get some hidden information to use of these technologies, we design and implementation of ontology-based semantic vegetables transaction information retrieval system, and through compare to keyword-based matching of large-scale vegetable trading site retrieval systems, the results show that the recall and precision rate of ontology-based information retrieval system much better than keyword-based information retrieval system, and has some practical value.

论文关键词:Object, Detection, Search, Steiner tree, Information extraction

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10462-012-9316-4