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In the example below you can see the overall sentiment across several different channels. AI researchers came up with Natural Language Understanding algorithms to automate this task. Thematic analysis is the process of discovering repeating themes in text. Good customer reviews and posts on social media encourage other customers to buy from your company.
Negative social media posts or reviews can be very costly to your business. The text mining analyst, preferably working along with a domain expert, must delimit the text mining application scope, including the text collection that will be mined and how the result will be used. Using sentiment analysis, you can weight the overall positivity or negativity of a news article based on sentiment extracted sentence-by-sentence.
With this subjective information extracted from either the article headline or news article text, you can weight news sentiment into you algorithmic trading strategy to better optimize buying and selling decisions. They can be understood by taking class-object as an analogy.
For example: 'Color' is a hypernymy while 'grey', 'blue', 'red', etc, are its hyponyms. Homonymy: Homonymy refers to two or more lexical terms with the same spellings but completely distinct in meaning.