Javascript must be enabled to continue!
RNN BASED FEATURE SELECTION MODEL WITH NOISY FEATURE REMOVAL
View through CrossRef
The evolution of emerging technologies leads into the unbeatable data growth and this circumstance brings out the necessity of
reduction in data dimensionality. Feature Selection is one of the dimensionality reduction techniques for identifying the most
important features for learning is the base to machine learning. Real-world data, which is given as an input to the Machine Learning algorithms, are affected
by many components; the presence of noise is a key aspect among them. The proposed Feature Selection Model incorporates Machine Learning with
Recurrent Neural Network and Cloud Databases to achieve better Classification accuracy by identifying and removing noisy features in the Cloud
environment. On the light of literature survey, most of the conventional Feature Selection Methods fail to remove noisy data exists in the feature.
Eventually, the dataset retrieved from the Cloud Database may contain noisy data which may reduce the performance of classification. Hence, a new
Feature Selection model “RNN based Feature Selection Model with Noisy Feature Removal” is proposed which removes noisy data and retains relevant,
correlated features in Cloud environment. The proposed model utilizes the Kohonen Self-Organizing Map (KSOM) to identify and remove noisy features
from the dataset retrieved from the Cloud Database. With the help of recursive path provided in the RNN approaches which is applied in the proposed
model makes the Feature Selection process to be finely tuned in terms of accuracy by removing noisy features. The primary goal of this proposed model is
to eliminate noisy features from the existing dataset and achieve Feature selection using RNN. The performance of the proposed Model is evaluated using
Five Medical Databases retrieved from AWS Cloud. The experimental and evaluation results obtained on these Cloud databases show that a proposed
Model eliminates noisy features with significant improvement in classification accuracy better than conventional Feature Selection Models.
Title: RNN BASED FEATURE SELECTION MODEL WITH NOISY FEATURE REMOVAL
Description:
The evolution of emerging technologies leads into the unbeatable data growth and this circumstance brings out the necessity of
reduction in data dimensionality.
Feature Selection is one of the dimensionality reduction techniques for identifying the most
important features for learning is the base to machine learning.
Real-world data, which is given as an input to the Machine Learning algorithms, are affected
by many components; the presence of noise is a key aspect among them.
The proposed Feature Selection Model incorporates Machine Learning with
Recurrent Neural Network and Cloud Databases to achieve better Classification accuracy by identifying and removing noisy features in the Cloud
environment.
On the light of literature survey, most of the conventional Feature Selection Methods fail to remove noisy data exists in the feature.
Eventually, the dataset retrieved from the Cloud Database may contain noisy data which may reduce the performance of classification.
Hence, a new
Feature Selection model “RNN based Feature Selection Model with Noisy Feature Removal” is proposed which removes noisy data and retains relevant,
correlated features in Cloud environment.
The proposed model utilizes the Kohonen Self-Organizing Map (KSOM) to identify and remove noisy features
from the dataset retrieved from the Cloud Database.
With the help of recursive path provided in the RNN approaches which is applied in the proposed
model makes the Feature Selection process to be finely tuned in terms of accuracy by removing noisy features.
The primary goal of this proposed model is
to eliminate noisy features from the existing dataset and achieve Feature selection using RNN.
The performance of the proposed Model is evaluated using
Five Medical Databases retrieved from AWS Cloud.
The experimental and evaluation results obtained on these Cloud databases show that a proposed
Model eliminates noisy features with significant improvement in classification accuracy better than conventional Feature Selection Models.
Related Results
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct
Introduction
Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Energy-efficient architectures for recurrent neural networks
Energy-efficient architectures for recurrent neural networks
Deep Learning algorithms have been remarkably successful in applications such as Automatic Speech Recognition and Machine Translation. Thus, these kinds of applications are ubiquit...
Selection Gradients
Selection Gradients
Natural selection and sexual selection are important evolutionary processes that can shape the phenotypic distributions of natural populations and, consequently, a primary goal of ...
Optimising tool wear and workpiece condition monitoring via cyber-physical systems for smart manufacturing
Optimising tool wear and workpiece condition monitoring via cyber-physical systems for smart manufacturing
Smart manufacturing has been developed since the introduction of Industry 4.0. It consists of resource sharing and networking, predictive engineering, and material and data analyti...
Preventive Mechanisms Against Cyberbullying in Social Media Environments
Preventive Mechanisms Against Cyberbullying in Social Media Environments
Cyberbullying has become more common on social media sites. Since people of all ages use social media frequently, it's really important to make these platforms safer from cyberbull...
Crude Oil Cost Forecasting using Variants of Recurrent Neural Network
Crude Oil Cost Forecasting using Variants of Recurrent Neural Network
Crude oil cost plays very important role in the country’s economic growth. It is having close impact on economical stability of nation. Because of these reasons it is very importa...
RNN-LSTM BASED REGULAR HEALTH FACTOR ANALYSIS IN MEDICAL ENVIRONMENT
RNN-LSTM BASED REGULAR HEALTH FACTOR ANALYSIS IN MEDICAL ENVIRONMENT
In an era where fast-paced routines, high stress,
and unhealthy habits have become the norm, modern
society is facing a surge in health problems such as high
blood pressure, diabet...

