Masterclass Certificate in NLP: Mastering Economic Data
-- ViewingNowThe Masterclass Certificate in NLP: Mastering Economic Data course is a comprehensive program designed to equip learners with essential skills in analyzing and interpreting economic data using Natural Language Processing (NLP). This course is of significant importance in today's data-driven world, where businesses and organizations rely heavily on accurate economic data to make informed decisions.
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โข Unit 1: Introduction to NLP & Economic Data – Understanding the basics of Natural Language Processing (NLP) and its application in analyzing economic data.
โข Unit 2: Data Preprocessing – Cleaning and preprocessing economic data for NLP tasks.
โข Unit 3: Sentiment Analysis – Analyzing the sentiment of economic news and reports using NLP techniques.
โข Unit 4: Named Entity Recognition (NER) – Identifying and categorizing key entities such as organizations, people, and locations in economic data.
โข Unit 5: Topic Modeling – Identifying hidden topics in large economic datasets using NLP.
โข Unit 6: Text Classification – Classifying economic texts into predefined categories using NLP techniques.
โข Unit 7: Part-of-Speech (POS) Tagging – Analyzing the grammatical structure of economic texts using NLP techniques.
โข Unit 8: Dependency Parsing – Understanding the relationships between words in economic texts using NLP techniques.
โข Unit 9: Coreference Resolution – Identifying and linking entities to their mentions in economic texts using NLP techniques.
โข Unit 10: Evaluation Metrics – Measuring the performance of NLP models in analyzing economic data.
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