BiLSTM-based Approach to the Natural Language Text Dependencies Analysis
https://doi.org/10.31432/1994-2443-2019-14-1-44-47
Abstract
This article discusses the idea of conducting a multistage process of building a search image of a query in natural language for use in the semantic search system. Modern methods and tools for processing natural language are widely used in the field of machine translation. Research on search engines and semantic search mainly focuses on data storage and further analysis. Most search engines use a huge amount of previously accumulated user queries to predict search results, without taking into account the user’s intention through quality query processing. The proposed approach is based on the selection of the maximum amount of information from the original request by means of syntactic and semantic analysis, as well as the use of synonymous extension techniques. This article describes the first step in the process of building a search query model, based on extracting syntactic dependencies from the original sentence.
About the Author
A. ChernyshovRussian Federation
Artem Chernyshov - postgraduate student of the Department 22
Moscow
References
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Review
For citations:
Chernyshov A. BiLSTM-based Approach to the Natural Language Text Dependencies Analysis. Information and Innovations. 2019;14(1):44-47. (In Russ.) https://doi.org/10.31432/1994-2443-2019-14-1-44-47