Residual-Concatenate Neural Network with Deep Regularization Layers for Binary Classification

05/25/2022
by   Abhishek Gupta, et al.
0

Many complex Deep Learning models are used with different variations for various prognostication tasks. The higher learning parameters not necessarily ensure great accuracy. This can be solved by considering changes in very deep models with many regularization based techniques. In this paper we train a deep neural network that uses many regularization layers with residual and concatenation process for best fit with Polycystic Ovary Syndrome Diagnosis prognostication. The network was built with improvements from every step of failure to meet the needs of the data and achieves an accuracy of 99.3 seamlessly.

READ FULL TEXT
research
08/19/2019

On Regularization Properties of Artificial Datasets for Deep Learning

The paper discusses regularization properties of artificial data for dee...
research
06/12/2018

Pressure Predictions of Turbine Blades with Deep Learning

Deep learning has been used in many areas, such as feature detections in...
research
06/06/2021

Tabular Data: Deep Learning is Not All You Need

A key element of AutoML systems is setting the types of models that will...
research
01/15/2021

DeepWaste: Applying Deep Learning to Waste Classification for a Sustainable Planet

Accurate waste disposal, at the point of disposal, is crucial to fightin...
research
07/23/2019

Adaptive Regularization via Residual Smoothing in Deep Learning Optimization

We present an adaptive regularization algorithm that can be effectively ...
research
05/05/2017

Residual Squeeze VGG16

Deep learning has given way to a new era of machine learning, apart from...
research
01/27/2023

Deep Residual Compensation Convolutional Network without Backpropagation

PCANet and its variants provided good accuracy results for classificatio...

Please sign up or login with your details

Forgot password? Click here to reset