yashasvimisra2798/NamedEntityRecognition
Information extraction technique that automatically identifies named entities in a text and classifies them into predefined categories.
This tool helps you automatically scan any text and identify important real-world entities like names of people, organizations, locations, and dates. You provide a block of text, and it returns the same text with these key entities highlighted and categorized. Anyone who needs to quickly extract structured information from unstructured text, like a researcher, data analyst, or journalist, would find this useful.
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Use this if you need to quickly find and categorize specific pieces of information, such as names, places, or times, within large amounts of text.
Not ideal if you need to understand the sentiment or complex relationships between entities in a text, as it focuses only on identification and categorization.
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Last pushed
Sep 05, 2020
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