Multi Hop
Multi-hop reasoning, a crucial aspect of artificial intelligence, focuses on solving problems requiring the integration of information from multiple sources or steps. Current research emphasizes improving multi-hop capabilities in various domains, including question answering, knowledge graph traversal, and network routing, often employing techniques like graph neural networks, retrieval-augmented generation, and reinforcement learning algorithms. These advancements are significant for enhancing the capabilities of large language models and improving efficiency in diverse applications such as recommender systems, autonomous systems, and scientific knowledge discovery.
Papers
Image Manipulation via Multi-Hop Instructions -- A New Dataset and Weakly-Supervised Neuro-Symbolic Approach
Harman Singh, Poorva Garg, Mohit Gupta, Kevin Shah, Ashish Goswami, Satyam Modi, Arnab Kumar Mondal, Dinesh Khandelwal, Dinesh Garg, Parag Singla
Towards Graph-hop Retrieval and Reasoning in Complex Question Answering over Textual Database
Minjun Zhu, Yixuan Weng, Shizhu He, Kang Liu, Jun Zhao