Generating Synthetic Queries for Virtual Assistants using LLMs, Matryoshka Representations for Recommender Systems, and More!
Vol.56 for Jun 10 - Jun 16, 2024
Stay Ahead of the Curve with the Latest Advancements and Discoveries in Information Retrieval.
This week’s newsletter highlights the following research:
Leveraging Large Language Models for Synthetic Query Generation in Virtual Assistants, from Apple
Matryoshka Representations for Enhanced Recommender Systems, from HKBU
Towards Cost-Aware and Accurate Query Retrieval via Progressive LLM-Assisted Expansion, from UCR
In-context Learning vs. Fine-tuning: Evaluating LLM Adaptation for Diverse Dialogue Tasks, from UNITN
A Unified Framework for Text-to-Image Generation and Retrieval with Multimodal Large Language Models, from Qu et al.
Asynchronous Learning of User Representations for Large-Scale Recommendation, from Meta
A Comprehensive Survey for Bridging Generative AI and Industrial Recommenders, from Xu et al.
Leveraging Multi-Head Attention for Improved Retrieval Augmented Generation, from Besta et al.
Rectifying Unsuitable Recommendations without Retraining, from Lai et al.
An Efficient MLP-like Architecture for Sequential Recommendation, from Jian et al.
Keep reading with a 7-day free trial
Subscribe to Top Information Retrieval Papers of the Week to keep reading this post and get 7 days of free access to the full post archives.