MULTIPLE KERNEL FUZZY CLUSTERING FOR UNCERTAIN DATA CLASSIFICATION

Abstract

Traditional1call tree classifiers work1with information whose values1area unitcelebrated and precise. We1have a tendency to extend1such classifiers to handle information1with unsureinfo. Worth uncertainty1arises in several applications throughoutthe1informationassortmentmethod.Example1source of uncertainty embrace1measurement/quantization errors, information staleness, and multiple recurrent measurements. With1uncertainty, the worth of a knowledge item1is commonlydepicted not by one1single worth, however by1multiple values forming a probability distribution. Instead of1abstracting unsureinformation by applied1math derivatives (such as1mean and median), we have a1tendency to discover that1the accuracy of a call1tree classifier will bea lot1of improved if the “complete1information” of a knowledge item is utilized. Since1process pdf’sis computationall1 a lot of pricey than1process single values (e.g., averages), call tree1construction on unsure information1is more electronic equipment1demanding than that sure information. To1tackle this problem, we have a tendency1to propose a series of pruning1techniques which will greatly improve1construction potency.

Authors and Affiliations

NIJAGUNA GS AND DR. THIPPESWAMY K

Keywords

Related Articles

8 BIT SINGLE CYCLE PROCESSOR

Processors are an integral part of the computer and electronics industry. Every computational unit contains some sort of processing circuit, designed to perform multiple operations on a single device and can be categor...

APPLICATION OF NEURAL NETWORK IN DROUGHT FORECASTING; AN INTENSE LITERATURE REVIEW

India is the agrarian country. The overall economy of our country is based on agriculture. Although the methods of cultivation are traditional and not hi-tech thus more over 75% of our farmers are dependent on monsoon....

AN IMPLEMENTATION OF SOFTWARE EFFORT DURATION AND COST ESTIMATION WITH STATISTICAL AND MACHINE LEARNING APPROACHES

In software industry estimation of effort, cost (EDC) and duration is a troublesome procedure. The exertion itself is in charge of experiencing trouble in evaluating EDC. In any software estimation process, the preemin...

ALGORITHMIC APPROACH FOR DOMINATION NUMBER OF UNICYCLIC GRAPHS

Let 𝐺(𝑉, 𝐸) be a unicyclic graph. A unicyclic graph is a connected graph that contains exactly one cycle. A dominating set of a graph G = (V, E) is a subset D of V, such that every vertex which is not in D is adjacent...

COMPARATIVE ANALYSIS OF FACE RECOGNITION BASED ON SIGNIFICANT PRINCIPAL COMPONENTS OF PCA TECHNIQUE

Face recognition systems have been emerging as acceptable approaches for human authorization. Face recognition help in searching and classifying a face database and at a higher level help in identification of possible...

Download PDF file
  • EP ID EP46527
  • DOI 10.34218/IJCET.10.1.2019.026
  • Views 187
  • Downloads 0

How To Cite

NIJAGUNA GS AND DR. THIPPESWAMY K (2019). MULTIPLE KERNEL FUZZY CLUSTERING FOR UNCERTAIN DATA CLASSIFICATION. International Journal of Computer Engineering & Technology (IJCET), 10(1), -. https://europub.co.uk./articles/-A-46527