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Building text analyzers

Updated on March 11, 2021

Text analyzer rule provides sentiment, categorization, text extraction, and intent analysis of text-based content such as news feeds, emails, and postings on social media streams including Facebook, and YouTube.

Text analyzers provide a combined set of powerful natural language processing (NLP) tools to ingest all text-based content, parse unstructured data into structured elements, and deliver actionable items. For example, by using the Pega Platform NLP capabilities, you can intelligently process emails in your application to deliver automatic responses to users, depending on the intent that the text analyzer detected in the user query.

You can use machine learning models in text analyzers to perform language processing tasks automatically, for example, to predict sentiment, assign topics and intents, detect entities, and so on. For more information about machine learning in Pega Platform, see Prediction Studio overview.

The Text Analyzer rule is available in applications that have access to the decision management rulesets along with the Pega-NLP ruleset or in applications built on that ruleset.

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