KNOWLEDGE DISCOVERY DATA

Descripción

Principales aspectos de la obtención del conocimiento con Knowledge Discovery Data
Rosalía Iñiguez
Mapa Mental por Rosalía Iñiguez, actualizado hace más de 1 año
Rosalía Iñiguez
Creado por Rosalía Iñiguez hace más de 9 años
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Resumen del Recurso

KNOWLEDGE DISCOVERY DATA
  1. ITERATIVE SEQUENCE OF STEPS
    1. DATA CLEANING
      1. DATA INTEGRATION
        1. DATA SELECTION
          1. DATA TRANSFORMATION
            1. DATA MINING

              Nota:

              • PROCESS OF DISCOVERING INTERESTING PATTERN AND KNOWLEDGE FROM LARGE AMOUNTS OF DATA
              1. DESCRIPTIVES
                1. PREDICTIVES
                  1. DOMAINS
                    1. STATISTICS

                      Nota:

                      •  Statistics studies the collection, analysis, interpretation or explanation, and presentation of data  
                      1. MACHINE LEARNING

                        Nota:

                        •  Machinelearning investigates how computers can learn (or improve their performance) based on data  
                        1. PATTERN RECOGNITION
                          1. DATABASE
                            1. DATA WAREHOUSE
                              1. INFORMATION RETRIEVAL
                                1. VISUALIZATION
                                  1. ALGORITHMS
                                    1. HIGH PERFORMANCE COMPUTING
                                    2. PATTERNS CAN BE MINED DATA MINING FUNCTIONALITIES
                                      1. DISCRIMINATION

                                        Nota:

                                        • DISCRIMINATION: COMPARISON OF FEATURES OF ONE CLASS DATA OBJETC AGAINST GENERAL FEATURES OF OBJECTS FROM ONE OR MULTIPLE CLASS OBJECTS CHARACTERIZATION:  summarizing the data of the class under study (often called the target class) in general terms  
                                        1. FREQUEN PATTERNS

                                          Nota:

                                          •  There are many kinds of frequent patterns, including frequent itemsets, frequent subsequences (also known as sequential patterns), and frequent substructures.  
                                          1. SUPPORT
                                            1. CONFIDENCE
                                              1. accuracy and coverage
                                              2. ASSOCIATIONS
                                                1. CORRELATIONS
                                                  1. CLASSIFICATION AND REGRESSION

                                                    Nota:

                                                    •  Classification is the process of finding a model (or function) that describes and distinguishes data classes or concepts.  Regression analysis is astatistical methodology that is most often used for numeric prediction,   
                                                    1. CLUSTERING ANALYSIS AND OULIER ANALYSIS

                                                      Nota:

                                                      •  Unlike classification and regression, which analyze class-labeled (training) data sets, clustering analyzes data objects without consulting class labels.  
                                                      1. INTERESTING PATTERNS
                                                        1. NOVEL
                                                          1. CERTAINTY
                                                            1. POTENTIALLY USEFUL
                                                              1. EASILY UNSDERSTOOD
                                                                1. PATTERN INTERSTINGNESS
                                                                  1. SUBJECTIVE
                                                                    1. OBJECTIVE
                                                                2. DATA CAN BE MINED
                                                                  1. DATABASES
                                                                    1. DATA WAREHOUSES
                                                                      1. TRANSACTIONAL DATA
                                                                        1. MANY OTHERS
                                                                        2. ISSUES OF DATA MINING RESEARCH
                                                                          1. MINING METHODOLOGIES
                                                                            1. USER INTERACTION
                                                                              1. EFFICIENCY AND SCALABILITY
                                                                                1. DIVERSITY OF DATA TYPES
                                                                                  1. DATA MINING AND SOCIETY
                                                                                  2. VIEWS
                                                                                    1. APPLICATION
                                                                                      1. TECHNOLOGIES
                                                                                        1. DATA
                                                                                          1. KNOWLEDGE
                                                                                        2. PATTERN EVALUATION

                                                                                          Nota:

                                                                                          • ¿Interesante?:  (1) easily understood byhumans, (2) valid on new or test data with some degree of certainty, (3) potentiallyuseful, and(4) novel. A pattern is also interesting if it validates a hypothesis that the user sought to confirm.  
                                                                                          1. KNOWLEDGE PRESENTATION
                                                                                          2. APPLICATIONS
                                                                                            1. BUSINESS INTELIGENCE
                                                                                              1. WEB SEARCH
                                                                                                1. BIOINFORMATICS
                                                                                                  1. HEALTH INFORMATICS
                                                                                                    1. FINANCE
                                                                                                      1. DIGITAL LIBRARIES
                                                                                                        1. DIGITAL GOVERMENT
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