Text Data Augmentation Techniques in the Era of LLMs, A Function Calling Approach to Database Querying with LLMs, and More!
Vol.90 for Feb 03 - Feb 09, 2025
Stay Ahead of the Curve with the Latest Advancements and Discoveries in Information Retrieval.
This week’s newsletter highlights the following research:
Adaptive Knowledge Retrieval through Markov Decision Processes, by Guan et al.
A Comprehensive Review of Text Data Augmentation for LLMs, from Chai et al.
A Function Calling Approach to Database Querying with LLMs, from Weaviate
A Two-Stage Framework for Integrating Language Models into CTR Prediction, from Huawei
A Two-Stage Framework for Knowledge Transfer from LLMs to Retrievers, from Korea University
Distilling Cross Encoder Knowledge into Efficient Dual Encoders, from IBM
Context-Aware Token Pruning for Memory-Efficient Dense Retrieval Systems, from Amazon
A Graph Foundation Model for Efficient Multi-hop Knowledge Retrieval, from Luo et al.
Enhancing Result Variety in Differentiable Search Indexes, from Walmart
A Scalable Transformer-Based Ranking Framework for Large-Scale Personalization, from LinkedIn
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