Applications of Support Vector Machines In Chemo And Bioinformatics
2010
Conventional linear & nonlinear tools for classification, regression & data driven modeling are being replaced on a rapid scale by newer techniques & tools based on artificial intelligence and machine learning. While the linear techniques are not applicable for inherently nonlinear problems, newer methods serve as attractive alternatives for solving real life problems. Support Vector Machine (SVM) classifiers are a set of universal feed‐forward network based classification algorithms that have been formulated from statistical learning theory and structural risk minimization principle. SVM regression closely follows the classification methodology. In this work recent applications of SVM in Chemo & Bioinformatics will be described with suitable illustrative examples.
Keywords:
- Statistical learning theory
- Online machine learning
- Linear classifier
- Computational learning theory
- Relevance vector machine
- Structured support vector machine
- Support vector machine
- Least squares support vector machine
- Artificial intelligence
- Machine learning
- Pattern recognition
- Computer science
- Statistical classification
- Bioinformatics
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