AI RESEARCH

Compressed Video Aggregator: Content-driven Module for Efficient Micro-Video Recommendation

arXiv CS.AI

ArXi:2605.08810v1 Announce Type: cross We propose Compressed Video Aggregator (CVA), a lightweight micro-video recommendation module that decouples video information from preference learning. It aggregates frozen VFM embeddings, and uses latent reasoning without cross-attention projection, producing compact video embeddings for recommenders. Due to the redundancy in the frame count of the original benchmark and its overly coarse sampling, we used titles to re-select key frames based on CLIP. Experiments on MicroLens and Short-Video show consistent gains with orders-of-magnitude reductions in.