Abstract Classification is an important data mining technique with broad applications. Classification is a gradual practice for allocating a given piece of input into any of the known category. The Data Mining refers to extracting or mining knowledge from huge volume of data. In this paper different classification techniques of Data Mining are compared using diverse datasets from University of California Irvine UCI Machine Learning Repository. Accuracy and time complexity for execution by each classifier is observed. . Finally different classifiers are also compared with the help of Confusion Matrix. Classification is used to classify each item in a set of data into one of predefined set of classes or group
Abstract. Biomedical datasets pose a unique challenge for machine learning and data mining technique...
Abstract There are different techniques in conducting data mining that range from clustering, associ...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
Data Mining refers to the process of digging into the data so that one can find out patterns and gai...
Data mining involves the computational process to find patterns from large data sets. Classification...
Classification is a data mining (machine learning) technique used to predict group membership for da...
Abstract- Data mining is a process of extracting the knowledge pattern from large data.Classificatio...
Abstract: In the context of data mining the feature size is very large and it is believed that it ne...
Classification is a widely used technique in the data mining domain, where scalability and efficienc...
Abstract – Classification in data mining has gained a lot of importance in literature and it has a g...
At the same time of information age, digital revolution has made necessary using some of technologie...
Abstract Background Various kinds of data mining algorithms are continuously raised with the develop...
This thesis deals with a comparison of classification methods. At first, these classification method...
Biomedical datasets pose a unique challenge for machine learning and data mining techniques to extra...
In today’s world,enormous amount of data is available in every field including science, industry, bu...
Abstract. Biomedical datasets pose a unique challenge for machine learning and data mining technique...
Abstract There are different techniques in conducting data mining that range from clustering, associ...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
Data Mining refers to the process of digging into the data so that one can find out patterns and gai...
Data mining involves the computational process to find patterns from large data sets. Classification...
Classification is a data mining (machine learning) technique used to predict group membership for da...
Abstract- Data mining is a process of extracting the knowledge pattern from large data.Classificatio...
Abstract: In the context of data mining the feature size is very large and it is believed that it ne...
Classification is a widely used technique in the data mining domain, where scalability and efficienc...
Abstract – Classification in data mining has gained a lot of importance in literature and it has a g...
At the same time of information age, digital revolution has made necessary using some of technologie...
Abstract Background Various kinds of data mining algorithms are continuously raised with the develop...
This thesis deals with a comparison of classification methods. At first, these classification method...
Biomedical datasets pose a unique challenge for machine learning and data mining techniques to extra...
In today’s world,enormous amount of data is available in every field including science, industry, bu...
Abstract. Biomedical datasets pose a unique challenge for machine learning and data mining technique...
Abstract There are different techniques in conducting data mining that range from clustering, associ...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...