Multi labeled imbalanced data classification based on advanced min-max machine learning

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Abstract

Some true applications, for example, content arrangement and sub-cell confinement of protein successions, include multi-mark grouping with imbalanced information. Different types of traditional approaches are introduced to describe the relation of hubristic and undertaking formations, classification of different attributes with imbalanced for different uncertain data sets. Here this addresses the issues by utilizing the min-max particular system. The min-max measured system can break down a multi-mark issue into a progression of little two-class sub-issues, which would then be able to be consolidated by two straightforward standards. Additionally present a few decay procedures to improve the presentation of min-max particular systems. Trial results on sub-cellular restriction demonstrate that our strategy has preferable speculation execution over customary SVMs in settling the multi-name and imbalanced information issues. In addition, it is additionally a lot quicker than customary SVMs.

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Lakshmi Tanuja, A., & Rajani Kanth, J. (2019). Multi labeled imbalanced data classification based on advanced min-max machine learning. International Journal of Innovative Technology and Exploring Engineering, 9(1), 1776–1778. https://doi.org/10.35940/ijitee.L3718.119119

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