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Predicting interactions and contexts with context trees

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Figure

Figure 1: Example Context Tree
Figure 2:Classification methods for Predictive ContextTrees. Classification begins at the root node, selecting chil-dren to follow based on the output of their binary classifiers.The algorithm would follow the solid green arrows for con-text prediction, or carry on down the dotted orange arrowfor element prediction
Figure 5: Predictive accuracy for element prediction usingthe PCT, with SVMs shown as a comparison
Figure 8: Selection threshold, Ts, against accuracy (dmin =20min). The dotted blue line represents Ts = 0, i.e

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