YuriyGuts/thrones2vec
Using Word2Vec to explore semantic similarities between the entities of "A Song of Ice and Fire" ("Game of Thrones").
Thrones2Vec helps you discover how characters, places, and other elements from "A Song of Ice and Fire" (Game of Thrones) relate to each other in terms of meaning. You provide character names or other story elements and it tells you which other elements are most similar or dissimilar. This is ideal for Game of Thrones fans, writers, or researchers who want to deeply analyze the narrative's underlying structure and relationships.
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Use this if you're a Game of Thrones enthusiast, writer, or literary analyst wanting to uncover hidden connections and semantic relationships between the complex entities within George R.R. Martin's world.
Not ideal if you're looking for a tool to analyze semantic similarities in texts outside of 'A Song of Ice and Fire' or if you need to train a custom model on different datasets.
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Last pushed
Jul 09, 2016
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