Attribute Value Extraction
Attribute value extraction (AVE) focuses on automatically identifying and extracting specific attribute-value pairs from unstructured data, such as text and images, to create structured information. Current research emphasizes improving accuracy and efficiency across diverse data sources, including e-commerce product descriptions, scientific papers, and medical reports, using techniques like large language models (LLMs), graph convolutional networks, and multimodal learning approaches. These advancements are crucial for various applications, including improved e-commerce search and recommendation systems, enhanced data analysis in scientific domains, and more efficient data entry in healthcare. The development of robust and scalable AVE methods is driving progress in numerous fields by facilitating the transformation of unstructured data into readily usable structured formats.
Papers
Large Scale Generative Multimodal Attribute Extraction for E-commerce Attributes
Anant Khandelwal, Happy Mittal, Shreyas Sunil Kulkarni, Deepak Gupta
PV2TEA: Patching Visual Modality to Textual-Established Information Extraction
Hejie Cui, Rongmei Lin, Nasser Zalmout, Chenwei Zhang, Jingbo Shang, Carl Yang, Xian Li