[A-18-4] Judgement of Fraud Emails by Natural Language Processing and Machine Learning
この講演はキャリアエクスプローラーの掲載を希望しています。
Keywords:電子メールの分類、機械学習、自然言語処理、感情分析、サイバーセキュリティ
Due to its ease of use, speed, adaptability, and ability to keep a complete record of correspondence, email is a commonly used and trusted communication medium. The vulnerability of these emails to cyberattacks has increased. This study utilized the hybrid-based sentiment analysis approach for email fraud detection. The lexicon-based using the Word2Vec feature and Machine Learning (ML) classification approach using both the Bag of Words and TF-IDF feature extraction techniques were adopted to optimize accuracy. The Machine Learning classifiers adopted are Multilayer Perception, Decision Tree, Random Forest, KNN, SVM, and logistic model.
Abstract password authentication.
Password is required to view the abstract. Please enter a password to authenticate.