Exploring Computational Journalism Spring 2013 Lecture 7 Drawing Conclusions From Data

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What does randomness look like? Variation from rolling dice. Base rate fallacy. Conditional probability. Bayes' theorem. Cognitive ... The definition of What's a social network? Link analysis. Homophily and structural determinants of behavior. Centrality measurements. Community ... Telling stories from quantitative analysis of language, word frequencies, the bag-of-words document vector model, cosine ...

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