My latest Machine Learning blog post Confidence Splitting Criterions Can Improve Precision And Recall in Random Forest Classifiers is out on the Airbnb Data blog:
The Trust and Safety Team maintains a number of models for predicting and detecting fraudulent online and offline behaviour. A common challenge we face is attaining high confidence in the identification of fraudulent actions. Both in terms of classifying a fraudulent action as a fraudulent action (recall) and not classifying a good action as a fraudulent action (precision).
A classification model we often use is a Random Forest Classifier (RFC). However, by adjusting the logic of this algorithm slightly, so that we look for high confidence regions of classification, we can significantly improve the recall and precision of the classifier’s predictions. To do this we introduce a new splitting criterion (explained below) and show experimentally that it can enable more accurate fraud detection.
Have a read and let me know what you think!