App to App Retrieval
App-to-app retrieval focuses on efficiently and accurately retrieving relevant information from large datasets, particularly within the context of augmented generation models. Current research emphasizes improving retrieval methods through techniques like contrastive learning, recursive abstractive processing, and the incorporation of derived features or semantic similarity searches, often within hierarchical memory structures. These advancements are crucial for enhancing various applications, including fact-checking, question answering, recommendation systems, and robotics, by enabling more effective use of large language models and multimodal data. The ultimate goal is to create more robust and efficient systems capable of handling increasingly complex information retrieval tasks.
Papers
GripRank: Bridging the Gap between Retrieval and Generation via the Generative Knowledge Improved Passage Ranking
Jiaqi Bai, Hongcheng Guo, Jiaheng Liu, Jian Yang, Xinnian Liang, Zhao Yan, Zhoujun Li
ChatGPT-powered Conversational Drug Editing Using Retrieval and Domain Feedback
Shengchao Liu, Jiongxiao Wang, Yijin Yang, Chengpeng Wang, Ling Liu, Hongyu Guo, Chaowei Xiao
Test-Time Training on Nearest Neighbors for Large Language Models
Moritz Hardt, Yu Sun
RAMP: Retrieval and Attribute-Marking Enhanced Prompting for Attribute-Controlled Translation
Gabriele Sarti, Phu Mon Htut, Xing Niu, Benjamin Hsu, Anna Currey, Georgiana Dinu, Maria Nadejde
Expand, Rerank, and Retrieve: Query Reranking for Open-Domain Question Answering
Yung-Sung Chuang, Wei Fang, Shang-Wen Li, Wen-tau Yih, James Glass