Please use this identifier to cite or link to this item: http://nopr.niscair.res.in/handle/123456789/55728
Title: A New Improved Approach for Feature Generation and Selection in Multi-Relational Statistical Modelling using ML
Authors: Yadav, Vikash
Rahul, Mayur
Shukla, Rati
Keywords: Feature Selection;Inductive Logical Programming;Natural Join;SVM;Statistical Learning
Issue Date: Dec-2020
Publisher: NISCAIR-CSIR, India
Abstract: Multi-relational classification is highly challengeable task in data mining, because so much data in our world is organised in multiple relations. The challenge comes from the huge collection of search spaces and high calculation cost arises in the selection of feature due to excessive complexity in the various relations. The state-of-the-art approach is based on clusters and inductive logical programming to retrieve important features and derived hypothesis. However, those techniques are very slow and unable to create enough data and information to produce efficient classifiers. In the given paper, we proposed a fast and effective method for the feature selection using multi-relational classification. Moreover we introduced the natural join and SVM based feature selection in multi-relation statistical learning. The performance of our model on various datasets indicates that our model is efficient, reliable and highly accurate.
Page(s): 1095-1100
URI: http://nopr.niscair.res.in/handle/123456789/55728
ISSN: 0975-1084 (Online); 0022-4456 (Print)
Appears in Collections:JSIR Vol.79(12) [December 2020]

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