 课程大纲:
        
    课程大纲:                    Data Mining培训
      
Introduction
        Data mining as the analysis step of the KDD process ("Knowledge Discovery in Databases")
        Subfield of computer science
        Discovering patterns in large data sets
        Sources of methods
        Artificial intelligence
        Machine learning
        Statistics
        Database systems
        What is involved?
        Database and data management aspects
        Data pre-processing
        Model and inference considerations
        Interestingness metrics
        Complexity considerations
        Post-processing of discovered structures
        Visualization
        Online updating
        Data mining main tasks
        Automatic or semi-automatic analysis of large quantities of data
        Extracting previously unknown interesting patterns
        groups of data records (cluster analysis)
        unusual records (anomaly detection)
        dependencies (association rule mining)
        Data mining
        Anomaly detection (Outlier/change/deviation detection)
        Association rule learning (Dependency modeling)
        Clustering
        Classification
        Regression
        Summarization
        Use and applications
        Able Danger
        Behavioral analytics
        Business analytics
        Cross Industry Standard Process for Data Mining
        Customer analytics
        Data mining in agriculture
        Data mining in meteorology
        Educational data mining
        Human genetic clustering
        Inference attack
        Java Data Mining
        Open-source intelligence
        Path analysis (computing)
        Reactive business intelligence
        Data dredging, data fishing, data snooping
 
     
     
         
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