Deep Linear Discriminant Analysis with Variation for Polycystic Ovary
Syndrome Classification
- URL: http://arxiv.org/abs/2303.14401v1
- Date: Sat, 25 Mar 2023 08:39:06 GMT
- Title: Deep Linear Discriminant Analysis with Variation for Polycystic Ovary
Syndrome Classification
- Authors: Raunak Joshi, Abhishek Gupta, Himanshu Soni, Ronald Laban
- Abstract summary: The simple machine learning algorithms can be improved with advanced frameworks using Deep Learning.
The Linear Discriminant Analysis is a linear dimensionality reduction algorithm for classification that can be boosted in terms of performance using Deep LDA.
- Score: 3.1871776847712523
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The polycystic ovary syndrome diagnosis is a problem that can be leveraged
using prognostication based learning procedures. Many implementations of PCOS
can be seen with Machine Learning but the algorithms have certain limitations
in utilizing the processing power graphical processing units. The simple
machine learning algorithms can be improved with advanced frameworks using Deep
Learning. The Linear Discriminant Analysis is a linear dimensionality reduction
algorithm for classification that can be boosted in terms of performance using
deep learning with Deep LDA, a transformed version of the traditional LDA. In
this result oriented paper we present the Deep LDA implementation with a
variation for prognostication of PCOS.
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