Automated Identification of Disaster News For Crisis Management Using Machine Learning
This addresses the challenge of filtering fake news for crisis management, but it is incremental as it applies standard ML methods to a specific domain.
The study tackled the problem of distinguishing legitimate from illegitimate news articles during disasters like Typhoon Rai, achieving an accuracy of around 91% using combined machine learning models with Bag of Words and TF-IDF features.
A lot of news sources picked up on Typhoon Rai (also known locally as Typhoon Odette), along with fake news outlets. The study honed in on the issue, to create a model that can identify between legitimate and illegitimate news articles. With this in mind, we chose the following machine learning algorithms in our development: Logistic Regression, Random Forest and Multinomial Naive Bayes. Bag of Words, TF-IDF and Lemmatization were implemented in the Model. Gathering 160 datasets from legitimate and illegitimate sources, the machine learning was trained and tested. By combining all the machine learning techniques, the Combined BOW model was able to reach an accuracy of 91.07%, precision of 88.33%, recall of 94.64%, and F1 score of 91.38% and Combined TF-IDF model was able to reach an accuracy of 91.18%, precision of 86.89%, recall of 94.64%, and F1 score of 90.60%.