Natural language processing for word sense disambiguation and information extraction
K. R. Chowdhary

TL;DR
This paper presents new NLP methods for word sense disambiguation and information extraction, including a thesaurus-based approach, fuzzy logic retrieval, SDL-based extraction, and Dempster-Shafer reasoning, enhancing speed and flexibility.
Contribution
It introduces novel strategies for word sense disambiguation and document retrieval that improve efficiency and overcome limitations of traditional probabilistic methods.
Findings
Effective disambiguation using thesaurus-based approach
Fuzzy logic enhances document retrieval accuracy
Dempster-Shafer theory offers flexible reasoning in information extraction
Abstract
This research work deals with Natural Language Processing (NLP) and extraction of essential information in an explicit form. The most common among the information management strategies is Document Retrieval (DR) and Information Filtering. DR systems may work as combine harvesters, which bring back useful material from the vast fields of raw material. With large amount of potentially useful information in hand, an Information Extraction (IE) system can then transform the raw material by refining and reducing it to a germ of original text. A Document Retrieval system collects the relevant documents carrying the required information, from the repository of texts. An IE system then transforms them into information that is more readily digested and analyzed. It isolates relevant text fragments, extracts relevant information from the fragments, and then arranges together the targeted…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Advanced Text Analysis Techniques
