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you can count on categorical data but the text is still unstructured we need a way to impose structure on the text preferably in a way that is consistent with the tidy verse principles so we can continue to use the functions we know and love the Teddy Techs package does just that developed by Julia silky and David Robinson the Teddy Tex package provides a suite of powerful tools that allow us to quickly and easily structure text and analyze it taking full advantage of the tidy verse for text analysis we imposed structure on text by splitting each review into separate words in natural language processing or NLP circles this is called a bag of words we dont care about the syntax or structure of the reviews were simply cutting out each word in each review and mixing them up in a bag a bag of words each separate body of text is a document in this case the reviews each unique word is known as a term every occurrence of a term is known as a thus cutting up documents into words is k