Optimization Based Data Mining: Theory and Applications
Optimization techniques have been widely adopted to implement various data mining algorithms. In addition to well-known Support Vector Machines (SVMs) (which are based on quadratic programming), different versions of Multiple Criteria Programming (MCP) have been extensively used in data separations....
Clasificación: | Libro Electrónico |
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Autores principales: | , , , , |
Autor Corporativo: | |
Formato: | Electrónico eBook |
Idioma: | Inglés |
Publicado: |
London :
Springer London : Imprint: Springer,
2011.
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Edición: | 1st ed. 2011. |
Colección: | Advanced Information and Knowledge Processing,
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Temas: | |
Acceso en línea: | Texto Completo |
Tabla de Contenidos:
- Support Vector Machines for Classification Problems
- Method of Maximum Margin.-Dual Problem
- Soft Margin
- C- Support Vector Classification.-C- Support Vector Classification with Nominal Attributes
- LOO Bounds for Support Vector Machines.-Introduction
- LOO bounds for ε−Support Vector Regression
- LOO Bounds for Support Vector Ordinal Regression Machine
- Support Vector Machines for Multi-class Classification Problems.-K-class Linear Programming Support Vector Classification Regression Machine (KLPSVCR).-Support Vector Ordinal Regression Machine for Multi-class Problems
- Unsupervised and Semi-Supervised Support Vector Machines
- Unsupervised and Semi-Supervised ν-Support Vector Machine
- Numerical Experiments.-Unsupervised and Semi-supervised Lagrange Support Vector Machine.-Unconstrained Transductive Support Vector Machine.-Robust Support Vector Machines.-Support Vector Ordinal Regression Machine
- Robust Multi-class Algorithm
- Robust Unsupervised and Semi-Supervised Bounded C-Support Vector Machine.-Feature Selection via lp-norm Support Vector Machines.-lp-norm Support Vector Classification.-lp-norm Proximal Support Vector Machine.-Multiple Criteria Linear Programming.-Comparison of Support Vector Machine and Multiple Criteria Programming.-Multiple Criteria Linear Programming.-Multiple Criteria Linear Programming for Multiple Classes
- Penalized Multiple Criteria Linear Programming.-Regularized Multiple Criteria Linear Programs for Classification.-MCLP Extensions
- Fuzzy MCLP.-FMCLP with Soft Constraints.-FMCLP by Tolerances.-Kernel based MCLP
- Knowledge based MCLP
- Rough set based MCLP
- Regression by MCLP.-Multiple Criteria Quadratic Programming.-A General Multiple Mathematical Programming
- Multi-criteria Convex Quadratic Programming Model Kernel based MCQP
- Non-additiveMCLP.-Non-additiveMeasures and Integrals.-Non-additive Classification Models.-Non-additive MCP
- Reducing the time complexity.-Hierarchical Choquet integral.-Choquet integral with respect to k-additive measure.-MC2LP.-MC2LP Classification.-Minimal Error and Maximal Between-class Variance Model.-Firm Financial Analysis.-Finance and Banking
- General Classification Process.-Firm Bankruptcy Prediction
- Personal Credit Management
- Credit Card Accounts Classification
- Two-class Analysis.-FMCLP Analysis
- Three-class Analysis
- Four-class Analysis.-Empirical Study and Managerial Significance of Four-class Models
- Health Insurance Fraud Detection
- Problem Identification
- A Real-life Data Mining Study
- Network Intrusion Detection
- Problem and Two Datasets
- Classify NeWT Lab Data by MCMP, MCMP with kernel and See5
- Classify KDDCUP-Data by Nine Different Methods
- Internet Service Analysis
- VIP Mail Dataset
- Empirical Study of Cross-validation.-Comparison of Multiple-Criteria Programming Models and SVM.-HIV-1 Informatics
- HIV-1 Mediated Neuronal Dendritic and Synaptic Damage
- Materials and Methods
- Designs of Classifications
- Analytic Results
- Anti-gen and Anti-body Informatics
- Problem Background
- MCQP,LDA and DT Analyses.-Kernel-based MCQP and SVM Analyses.-Geol-chemical Analyses.-Problem Description
- Multiple-class Analyses
- More Advanced Analyses.-Intelligent Knowledge Management
- Purposes of the Study
- Definitions and Theoretical Framework of Intelligent Knowledge.-Some Research Directions.