数据开采与知识发现原理/会议录Principles of data mining and knowledge discovery(数据开采与知识发现原理/会议录)

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  • 版 次:1
  • 页 数:514
  • 字 数:
  • 印刷时间:2006年12月01日
  • 开 本:
  • 纸 张:胶版纸
  • 包 装:平装
  • 是否套装:否
  • 国际标准书号ISBN:9783540440376
作者:Tapio Elomaa 著出版社:湖南文艺出版社出版时间:2002年12月 
编辑推荐
he LNAI series reports state-of-the-art results in artificial intelligence re-search, development, and education, at a high level and in both printed and electronic form. Enjoying tight cooperation with the R&D community, with numerous individuals, as well as with prestigious organizations and societies,LNAI has grown into the most comprehensive artificial intelligence research forum available.
The scope of LNAI spans the whole range of artificial intelligence and intelli-gent information processing including interdisciplinary topics in a variety of application fields. The type of material published traditionally includes
  proceedings (published in time for the respective conference);
 post-proceedings (consisting of thoroughly revised final full papers);
  research monographs (which may be based on Phi) work). 
内容简介
This book constitutes the refereed proceedings of the 6th European Conference on Principles of Data Mining and Knowledge Discovery, PKDD 2002, held in Helsinki, Finland in August 2002.The 39 revised full papers presented together with 4 invited contributions were carefully reviewed and selected from numerous submissions. Among the topics covered are kernel methods, probabilistic methods, association rule mining, rough sets, sampling algorithms, pattern discovery, web text mining, meta data clustering, rule induction, information extraction, dependency detection, rare class prediction, classifier systems, text classification, temporal sequence analysis, unsupervised learning, time series analysis, medical data mining, etc.
目  录
Contributed Papers
 Optimized Substructure Discovery for Semi-structured Data
 Fast Outlier Detection in High Dimensional Spaces
 Data Mining in Schizophrenia Research - Preliminary Analysis
 Fast Algorithms for Mining Emerging Patterns
 On the Discovery of Weak Periodicities in Large Time Series
 The Need for Low Bias Algorithms in Classification Learning from Large Data Sets
 Mining All Non-derivable Frequent Itemsets
 Iterative Data Squashing for Boosting Based on a Distribution-Sensitive Distance
 Finding Association Rules with Some Very Frequent Attributes
 Unsupervised Learning: Self-aggregation in Scaled Principal Component Space
 A Classification Approach for Prediction of Target Events in Temporal Sequences
 Privacy-Oriented Data Mining by Proof Checking
 Choose Your Words Carefully: An Empirical Study of Feature Selection Metrics for Text

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