Deep Recurrent Neural Networks for Product Attribute Extraction in eCommerce

29 Mar 2018Bodhisattwa Prasad MajumderAditya SubramanianAbhinandan KrishnanShreyansh GandhiAjinkya More

Extracting accurate attribute qualities from product titles is a vital component in delivering eCommerce customers with a rewarding online shopping experience via an enriched faceted search. We demonstrate the potential of Deep Recurrent Networks in this domain, primarily models such as Bidirectional LSTMs and Bidirectional LSTM-CRF with or without an attention mechanism... (read more)

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