FUZZY SIMILARITY RELATION AND IT’S APPLICATION IN FEATURE SELECTION
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Date
2022-05-06Author
YADAV, RANJAN KUMAR
BALIYAN, NAMAN
SAINI, SANSKRITI
Shreevastava, Dr. Shivam SUPERVISOR
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Owing to technology advancements and the rising expansion of electronically stored information, automated solutions are required to assist users in processing and maintaining this large volume
of information. The primary sources of knowledge are subject matter experts and computer
program that evaluate enormous amounts of data using machine learning. Knowledge extraction
is a crucial process stage in the construction of clever and skilled systems. However, because of
the noise and the volume of data, the knowledge extraction stage is extremely sluggish or
perhaps impossible. The effectiveness of classifiers and the readability of data in machine
learning algorithms both benefit from the decision of pertinent and characteristics without
repetition. This process the term "feature selection" or attribute reduction. Numerous domains, such as the use of image processing, artificial intelligence, bioinformatics, data mining, natural
language processing, etc., use feature selection in ways that are very relevant to expert and
intelligent systems. The discretization process may result in some information being lost, rendering rough set theory unsuitable for attribute reduction of real-valued data sets, despite the
fact that it has been employed effectively for attribute reduction. Real-valued data can be
handled easily thanks to the numerous attribute selection algorithms that have been given, In
addition, the integration of collection of blurry and rough theories.