Download - SupremeBrief Demo PDF version 2
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SupremeBrief Summarizing Legal Cases with NLP
Andrew Koo - Insight Data Science
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Bush v. Gore (2000) - 121 S.Ct. 525
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Bush v. Gore (121 S.Ct. 525)
In this instance, however, the question is not whether to believe a witness but how to interpret the marks or holes or scratches on an inanimate object, a piece of cardboard or paper which, it is said, might not have registered as a vote during the machine count.
What Counts as a Legal Vote?
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Neural Network (word2vec)Vectorizing: The neural network finds features which are vector representations of the word
Calculating:
Ranking: Rank the sentences in the graph by applying PageRank
vector(Sentence)= mean( vector(Words) )
Converting: Use the sentence vectors and their cosine similarities to create a graph
Training: Use 120K documents to train a neural network model optimizing Θ so that it maximizes p(w |c)
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U.S. Constitution
U.S. Government
U.S. Laws
U.S. Courts
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Validation with 1000 Human Written Summaries
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LSA Luhn TextRank TextRank NN 1K NN 120K
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Sumy scikit-learn word2vec
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Andrew Koo