Number of items: 3.
Article
Abdullahi, Husein Osman and Mahmud, Murni and Hassan, Abdikarim Abi and Abdullahi, Husein Osman
A Bibliometric Analysis of the Evolution of IoT Applications in Smart Agriculture.
Ingénierie des Systèmes d’Information.
Dahir, Ahmed Mohamed
Importance of principles of Islamic jurisprudence (Usul Fiqh) in Islamic banking product structuring.
See discussions, stats, and author profiles for this publication at: https://www.researchgate.net/publication/283706720.
Hassan, Fuad Mire
Stance detection is the task of determining the perspective “or stance” of pairs of text. Classifying the stance (e.g. agree, disagree, discuss or unrelated) expressed in news articles with respect to a certain claim is an important step in detecting fake news. Many neural and traditional models predict well on unrelated and discuss classes while they poorly perform on other minority represented classes in the Fake News Challenge-1 (FNC-1) dataset. We present a simple neural model that combines similarity and statistical features through a MLP network for news-stance detection. Aiding augmented training instances to overcome the data imbalance problem and adding batch-normalization and gaussian-noise layers enable the model to prevent overfitting and improve class-wise and overall accuracy. We also conduct additional experiments with a light-GBM and MLP network using the same features and text augmentation to show their effectiveness. In addition, we evaluate the proposed model on the Argument Reasoning Comprehension (ARC) dataset to assess the generalizability of the model. The experimental results of our models outperform the current state-of-the-art.
Conference paper.
This list was generated on Sat Nov 23 10:22:52 2024 UTC.