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A brief look at sklearn.tree.DecisionTreeClassifierby@bmb21
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19,469 reads

A brief look at sklearn.tree.DecisionTreeClassifier

by Ben Brostoff5mJanuary 27th, 2018
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In my continuing attempt to <a href="https://medium.com/draftfast" target="_blank">automate as much as of my Daily Fantasy Sports lineup creation as possible</a>, I’ve been exploring <a href="https://hackernoon.com/tagged/decision-trees" target="_blank">decision trees</a>. I realized this <a href="https://hackernoon.com/tagged/technique" target="_blank">technique</a> might be valuable after listening to my thought process as it relates to fantasy sports. Generally, I’ll ask myself questions like “Has this player broken 10 rebounds the last 2 games?” or “Is this player consistently getting over 25 minutes per game?”. In addition to removing bias, a decision tree should ask better questions, improve given more data and generate insights over key features in data.

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Ben Brostoff

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