text summarizer
ASR-enhanced Multimodal Representation Learning for Cross-Domain Product Retrieval
Zhao, Ruixiang, Jia, Jian, Li, Yan, Bai, Xuehan, Chen, Quan, Li, Han, Jiang, Peng, Li, Xirong
E-commerce is increasingly multimedia-enriched, with products exhibited in a broad-domain manner as images, short videos, or live stream promotions. A unified and vectorized cross-domain production representation is essential. Due to large intra-product variance and high inter-product similarity in the broad-domain scenario, a visual-only representation is inadequate. While Automatic Speech Recognition (ASR) text derived from the short or live-stream videos is readily accessible, how to de-noise the excessively noisy text for multimodal representation learning is mostly untouched. We propose ASR-enhanced Multimodal Product Representation Learning (AMPere). In order to extract product-specific information from the raw ASR text, AMPere uses an easy-to-implement LLM-based ASR text summarizer. The LLM-summarized text, together with visual data, is then fed into a multi-branch network to generate compact multimodal embeddings. Extensive experiments on a large-scale tri-domain dataset verify the effectiveness of AMPere in obtaining a unified multimodal product representation that clearly improves cross-domain product retrieval.
Three NLP Projects You Need in Your Portfolio
Natural Language Processing is one of the two big subfields in Machine Learning. In the 2020s, Natural Language Processing will be one of the biggest things to know for business. There is so much unstructured text data out there. The people who figure out how to turn that text data into actionable insights will be both rich and influential. You're here because you want to do machine learning.