A Multi-Resolution Word Embedding for Document Retrieval from Large Unstructured Knowledge Bases

2 Feb 2019 Tolgahan Cakaloglu Xiaowei Xu

Deep language models learning a hierarchical representation proved to be a powerful tool for natural language processing, text mining and information retrieval. However, representations that perform well for retrieval must capture semantic meaning at different levels of abstraction or context-scopes... (read more)

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