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arxiv: 1207.4132 · v1 · pith:HPDUUM4Unew · submitted 2012-07-11 · 💻 cs.LG · cs.AI· stat.ML

MOB-ESP and other Improvements in Probability Estimation

classification 💻 cs.LG cs.AIstat.ML
keywords mob-espprobabilityestimationalgorithmclassmetricsaccuracyaccurate
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A key prerequisite to optimal reasoning under uncertainty in intelligent systems is to start with good class probability estimates. This paper improves on the current best probability estimation trees (Bagged-PETs) and also presents a new ensemble-based algorithm (MOB-ESP). Comparisons are made using several benchmark datasets and multiple metrics. These experiments show that MOB-ESP outputs significantly more accurate class probabilities than either the baseline BPETs algorithm or the enhanced version presented here (EB-PETs). These results are based on metrics closely associated with the average accuracy of the predictions. MOB-ESP also provides much better probability rankings than B-PETs. The paper further suggests how these estimation techniques can be applied in concert with a broader category of classifiers.

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