Constructive Approach
Constructive approaches in machine learning focus on building models and algorithms to solve specific problems, often by integrating diverse data sources and leveraging pre-trained models for efficiency. Current research emphasizes the use of deep learning architectures, including convolutional neural networks and transformers, alongside techniques like ensemble learning, transfer learning, and meta-learning, to improve model performance and interpretability across various domains. These approaches are proving valuable in diverse applications, ranging from medical image analysis and fake news detection to robotics and space mission planning, demonstrating the broad impact of constructive methodologies on scientific advancement and practical problem-solving.
Papers
A Domain-adaptive Pre-training Approach for Language Bias Detection in News
Jan-David Krieger, Timo Spinde, Terry Ruas, Juhi Kulshrestha, Bela Gipp
Sequential/Session-based Recommendations: Challenges, Approaches, Applications and Opportunities
Shoujin Wang, Qi Zhang, Liang Hu, Xiuzhen Zhang, Yan Wang, Charu Aggarwal
Application of WGAN-GP in recommendation and Questioning the relevance of GAN-based approaches
Hichem Ammar Khodja, Oussama Boudjeniba
SkillNet-NLG: General-Purpose Natural Language Generation with a Sparsely Activated Approach
Junwei Liao, Duyu Tang, Fan Zhang, Shuming Shi
A Comparative Study on Approaches to Acoustic Scene Classification using CNNs
Ishrat Jahan Ananya, Sarah Suad, Shadab Hafiz Choudhury, Mohammad Ashrafuzzaman Khan
Approach to Predicting News -- A Precise Multi-LSTM Network With BERT
Chia-Lin Chen, Pei-Yu Huang, Yi-Ting Huang, Chun Lin