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Boosted Trees Predictions
Mar2017
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The ultimate goal of creating any supervised learning model is to get a prediction for new intstances. Like other supervised models, Boosted Trees offer Single Predictions to predict a given single instance and Batch Predictions to predict multiple instances simultaneously. Instead of returning a single class along with its confidence, Boosted Trees return a set of probabilities for all the classes in the objective field which is visible in the predictions histogram.

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Boosted Trees
Mar2017
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The BigML team is proud to announce Boosted Trees, the third ensemble-based strategy that BigML provides to help you easily solve your classification and regression problems. Together with Bagging and Random Decision Forests, Boosted Trees make for a powerful combination available both via the BigML Dashboard and our REST API. This well-known technique is an ensemble of several single models, where each tree improves the mistakes made by the previously grown tree. It is one of the best performing Machine Learning methods to solve complex real-world problems.

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Partial Dependence Plot for Ensembles
Dec2016
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This new visualization for ensembles, commonly known as Partial Dependence Plot, allows you to visualize the impact that a set of fields have on predictions. You will be able to determine which fields are most relevant for ensemble predictions and how sensitive your ensemble predictions are to their different values.

The chart displays a heatmap representation of your predictions based on different values of the two selected fields in the axes regardless of the rest of the fields used to train your ensemble. You can select any categorical or numeric field for the axes and configure the values for the rest of the input fields by using the fields inspector panel on the right.

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Fast ensembles
Jul2014
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We have refined the way the models of an ensemble are built to save a great amount of time in data transportation. This will dramatically speed up creation of your ensembles.

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