This document presents a novel fake news detection system utilizing machine learning, specifically through a deep learning model known as bimpm, which enhances the identification of misleading information within news articles. The proposed system overcomes existing challenges in detecting highly ambiguous fake news by utilizing a fact database built from human judgment, employing advanced sentence matching techniques. The authors demonstrate improved accuracy in fake news detection through their methodology, highlighting the importance of semantic analysis and updated information verification.