EAVE: Efficient Product Attribute Value Extraction via Lightweight Sparse-layer Interaction
Product attribute value extraction involves identifying the specific values associated with various attributes from a product profile. While existing methods often prioritize the development of effective models to improve extraction performance, there has been limited emphasis on extraction efficien...
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Zusammenfassung: | Product attribute value extraction involves identifying the specific values
associated with various attributes from a product profile. While existing
methods often prioritize the development of effective models to improve
extraction performance, there has been limited emphasis on extraction
efficiency. However, in real-world scenarios, products are typically associated
with multiple attributes, necessitating multiple extractions to obtain all
corresponding values. In this work, we propose an Efficient product Attribute
Value Extraction (EAVE) approach via lightweight sparse-layer interaction.
Specifically, we employ a heavy encoder to separately encode the product
context and attribute. The resulting non-interacting heavy representations of
the context can be cached and reused for all attributes. Additionally, we
introduce a light encoder to jointly encode the context and the attribute,
facilitating lightweight interactions between them. To enrich the interaction
within the lightweight encoder, we design a sparse-layer interaction module to
fuse the non-interacting heavy representation into the lightweight encoder.
Comprehensive evaluation on two benchmarks demonstrate that our method achieves
significant efficiency gains with neutral or marginal loss in performance when
the context is long and number of attributes is large. Our code is available
\href{https://anonymous.4open.science/r/EAVE-EA18}{here}. |
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DOI: | 10.48550/arxiv.2406.06839 |