Bio-inspired data mining
著者
書誌事項
Bio-inspired data mining
(Studies in computational intelligence, v. 204 . Foundations of computational intelligence ; v. 4)
Springer, c2009
- タイトル別名
-
Bio inspired data mining
Bio-inspired data mining theoretical foundations and applications
大学図書館所蔵 全4件
  青森
  岩手
  宮城
  秋田
  山形
  福島
  茨城
  栃木
  群馬
  埼玉
  千葉
  東京
  神奈川
  新潟
  富山
  石川
  福井
  山梨
  長野
  岐阜
  静岡
  愛知
  三重
  滋賀
  京都
  大阪
  兵庫
  奈良
  和歌山
  鳥取
  島根
  岡山
  広島
  山口
  徳島
  香川
  愛媛
  高知
  福岡
  佐賀
  長崎
  熊本
  大分
  宮崎
  鹿児島
  沖縄
  韓国
  中国
  タイ
  イギリス
  ドイツ
  スイス
  フランス
  ベルギー
  オランダ
  スウェーデン
  ノルウェー
  アメリカ
注記
Includes bibliographical references and index
内容説明・目次
内容説明
Foundations of Computational Intelligence Volume 4: Bio-Inspired Data Mining Theoretical Foundations and Applications Recent advances in the computing and electronics technology, particularly in sensor devices, databases and distributed systems, are leading to an exponential growth in the amount of data stored in databases. It has been estimated that this amount doubles every 20 years. For some applications, this increase is even steeper. Databases storing DNA sequence, for example, are doubling their size every 10 months. This growth is occurring in several applications areas besides bioinformatics, like financial transactions, government data, environmental mo- toring, satellite and medical images, security data and web. As large organizations recognize the high value of data stored in their databases and the importance of their data collection to support decision-making, there is a clear demand for - phisticated Data Mining tools. Data mining tools play a key role in the extraction of useful knowledge from databases. They can be used either to confirm a parti- lar hypothesis or to automatically find patterns. In the second case, which is - lated to this book, the goal may be either to describe the main patterns present in dataset, what is known as descriptive Data Mining or to find patterns able to p- dict behaviour of specific attributes or features, known as predictive Data Mining. While the first goal is associated with tasks like clustering, summarization and association, the second is found in classification and regression problems.
目次
Bio-Inspired Approaches in Sequence and Data Streams.- Adaptive and Self-adaptive Techniques for Evolutionary Forecasting Applications Set in Dynamic and Uncertain Environments.- Sequence Pattern Mining.- Growing Self-Organizing Map for Online Continuous Clustering.- Synthesis of Spatio-temporal Models by the Evolution of Non-uniform Cellular Automata.- Bio-Inspired Approaches in Classification Problem.- Genetic Selection Algorithm and Cloning for Data Mining with GMDH Method.- Inducing Relational Fuzzy Classification Rules by Means of Cooperative Coevolution.- Post-processing Evolved Decision Trees.- Evolutionary Fuzzy and Swarm in Clustering Problems.- Evolutionary Fuzzy Clustering: An Overview and Efficiency Issues.- Stability-Based Model Order Selection for Clustering Using Multiple Cooperative Particle Swarms.- Genetic and Evolutionary Algorithms in Bioinformatics.- Data-Mining Protein Structure by Clustering, Segmentation and Evolutionary Algorithms.- A Clustering Genetic Algorithm for Genomic Data Mining.- Detection of Remote Protein Homologs Using Social Programming.- Bio-Inspired Approaches in Information Retrieval and Visualization.- Optimizing Information Retrieval Using Evolutionary Algorithms and Fuzzy Inference System.- Web Data Clustering.- Efficient Construction of Image Feature Extraction Programs by Using Linear Genetic Programming with Fitness Retrieval and Intermediate-Result Caching.- Mining Network Traffic Data for Attacks through MOVICAB-IDS.
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