Additive Groves code: TreeExtra package

TreeExtra is a set of tools implementing the following algorithms:
The code along with executable binaries is available on GitHub under BSD license and is free to use for any purpose. (It also makes use of external libraries available under LGPLv2.1 license.)

TreeExtra is maintained for both Windows and Linux platforms. There is no support for OS X/macOS systems at this time.

Primary contact: Daria Sorokina. Questions about the package can be submitted through GitHub.

Updates Manuals Downloads Research papers

Updates

Manuals

Research papers and presentations

Daria Sorokina.
Application of Additive Groves to the Yahoo! Learning to Rank Challenge.

Daria Sorokina.
Modeling Additive Structure and Detecting Interactions with Additive Groves of Regression Trees
CMU Machine Learning Lunch, March 2010
Video (You need to scroll down to March 1 2010 talk. Sound is bad for the first few minutes only.)
Slides (.ppt)

Daria Sorokina, Rich Caruana, Mirek Riedewald, Wes Hochachka, Steve Kelling.
Detecting and Interpreting Variable Interactions in Observational Ornithology Data.
In proceedings of the ICDM'09 Workshop on Domain Driven Data Mining (DDDM'09).

Daria Sorokina.
Application of Additive Groves Ensemble with Multiple Counts Feature Evaluation to KDD Cup'09 Small Data Set.
In proceedings of the KDD Cup 2009 workshop.

Daria Sorokina.
Modeling Additive Structure and Detecting Interactions with Groves of Trees.
PhD dissertation, Cornell University, 2008.

Daria Sorokina, Rich Caruana, Mirek Riedewald, Daniel Fink.
Detecting Statistical Interactions with Additive Groves of Trees.
In proceedings of the 25th International Conference on Machine Learning (ICML'08).
Video of ICML presentation
Slides (.ppt)

Daria Sorokina, Rich Caruana, Mirek Riedewald.
Additive Groves of Regression Trees.
In proceedings of the 18th European Conference on Machine Learning (ECML'07) (Best Student Paper award.)
Video of ECML presentation
Slides (.ppt)

R. Caruana, M. Elhawary, A. Munson, M. Riedewald, D. Sorokina, D. Fink, W. Hochachka, S. Kelling.
Mining Citizen Science Data to Predict Prevalence of Wild Bird Species. <-- feature evaluation methods described here
In proceedings of the 12th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (KDD'06).