Machine learning is a burgeoning technology used for extractions of knowledge from an ocean of data. It has robust binding with optimization and artificial intelligence that delivers theory, methodologies and application domain to the field of statistics and computer science. Machine learning tasks are broadly classified into two groups namely supervised learning and unsupervised learning. The analysis of the unsupervised data requires thorough computational activities using different clustering algorithms. Microarray gene expression data are taken into consideration for cluster regulating genes from non-regulating genes. In our work optimization technique (Cat Swarm Optimization) is used to minimize the number of cluster by evaluating the Euclidean distance among the centroids. A comparative study is being carried out by clustering the regulating genes before optimization and after optimization. In our work Principal component analysis (PCA) is incorporated for dimensionality reduction of vast dataset to ensure qualitative cluster analysis.
In the late 19th century, the advent of malignant tissu been carried out to detect the tumorous cells and sub types of cancerous cells. Gene expression based micro field of cancer classification, prediction, diagnosis an which is a collection of microscopic spots. Since ther is done at the first stage of our work. At the second final stage, we have optimized the objective functi computing refers to a consortium of computational m their efforts in designing highly powerful intelligent using two classifiers called SVM (support vector m being incorporated on significant parameters that resu
In today's highly integrated world, when solutions to problems are cross disciplinary in nature, Soft computing promises to become a powerful means for obtaining solutions to problem quickly, accurately and acceptably. Soft computing refers to a consortium of computational methodologies that has motivated many scientific researchers to contribute their efforts in designing highly powerful intelligent systems. During the early 20 th century, the advent of malignant tissues in the human cells came into knowledge of medical researchers. A herculean task of classifying the tumorous cells became a very challenging task in the gamut of information, especially in the field of intelligent systems. In this work, we have applied Artificial Bee Colony (ABC) optimization along with the supervised learning technique i.e. support vector machine (SVM) to estimate the cost of classification. We have also simulated the cancerous dataset with the implementation of Cat Swarm Optimization (CSO) with SVM. Prior to classification, we have tried our level best to eliminate redundant and unwanted data with the help of Principal Component Analysis (PCA) technique. A great deal of work in predicting feasible as well as global best solutions have been put forward by many innovative and advanced heuristic search strategies.
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