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Understanding Sentiment Analysis with Hadoop


Sentiment Analysis is widely quoted as an ideal use case for Hadoop ecosystem usage. While certain research has gone to link machine analysis in conjunction with cognition and emotion research, we will limit our post to machine analysis. For those interested, basic emotions like anger, disgust, fear, happiness, sadness, and surprise are adequately explained in Ekman’spublished text on emotions.








First a quick intro from the recent Splunk .conf2012







Please note this post is not endorsing any product or company – just passing on common information on the topic for your awareness.


Comments

  1. I like the article. I used to follow the first approach during several years, but recently I changed my mind and think that “Proposal” approach is a way to go.

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