1. 复旦大学计算机科学与工程系,上海,200433
2. 复旦大学计算机与信息技术系,上海,200433
3. 复旦大学计算机科学与工程系,上海,200433
4. 复旦大学计算机与信息技术系,上海,200433
纸质出版:2004
移动端阅览
薛云皎, 钱乐秋, 花鸣, 等. 一种基于关联挖掘的自适应构件检索方法[J]. 电子学报, 2004,32(S1):207-210,195.
XUE Yun-jiao, QIAN Le-qiu, HUA Ming, et al. A Self-Adaptive Approach of Component Retrieval Based on Association Mining[J]. Acta Electronica Sinica, 2004, 32(S1): 207-210,195.
构件复用过程中
用户常因对构件描述机制认识有限而难以提出准确的检索需求
从而影响查准率.针对基于刻面描述的软件构件
借鉴数据挖掘中关联规则挖掘的有关理论
提出了带有用户反馈的自适应构件检索模型以及基于关联挖掘的自适应学习算法
从用户检索的历史记录中挖掘用户的显式检索条件与隐性检索需求之间的内在联系
从而完整化和精确化用户的检索条件
提高构件检索的查准率.同时
用实验结果证明了该方法的有效性和可行性.
During the process of component reusing
users often have no all-around understanding of the component description mechanism.So its difficult for users to propose exact retrieval requirements
which leads to lower precision.We refer to association mining theory in data mining field
and present a self-adaptive component retrieval model with user-feedback and the association mining-based self-adaptive learning algorithm.It can obtain the internal relationships between users explicit retrieval conditions and their implicit requirements through mining in the retrieval history
thus making the retrieval conditions more complete and precise
which increase the precision of component retrieval.The experimental results show that this solution is feasible and effective.
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