학술논문

Fake news detection using Ensemble model
Document Type
Conference
Source
2022 Second International Conference on Interdisciplinary Cyber Physical Systems (ICPS) ICPS Interdisciplinary Cyber Physical Systems (ICPS), 2022 Second International Conference on. :34-39 May, 2022
Subject
Computing and Processing
Deep learning
Machine learning algorithms
Databases
Buildings
Reliability
Fake news
Deep Learning
Soft Voting
Hard Voting
Convolution
Pooling
Ensemble
Supervised Learning
Epoch
Voting Classifier
Language
Abstract
Fake news is a piece of information that contains intentional false information. The motivation can be anything, from propaganda to personal benefits. For tackling this, we are building a solution based on Deep Learning, a step above the usual Machine learning approach, using these deep learning algorithms we will detect the accuracy of a piece of information. For this, we are using CNN and LSTM as the base algorithms. Apart from the base algorithms used, we are having used the Ensembling technique via the soft voting method which is a model having its accuracy, thus increasing the overall probability of truth for the given dataset. The model is tested with a huge database from Kaggle and trained by various news sites. This is our advancement to the Machine learning approach. With the use of a better deep learning algorithm, we can promise a better end-user experience with better automated and reliable accurate results.