Building Dota 2 Hero Similarity Map Using Neural Networks
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The author used neural networks to build a similarity map of Dota 2 heroes, showcasing an interesting application of machine learning in game analysis, with the community showing interest in the technical approach.
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From that, I extracted 32-dimensional hero embeddings - the model's "understanding" of each character - and projected them into 2D. The result is a surprisingly coherent similarity map, showing how the game's structure emerges naturally from data.
The post includes visuals, code, and an explanation of how it works.
Happy to discuss details or answer any questions!