Timezone: »
Spotlight
Scalable Semi-Supervised Aggregation of Classifiers
Akshay Balsubramani · Yoav Freund
We present and empirically evaluate an efficient algorithm that learns to aggregate the predictions of an ensemble of binary classifiers. The algorithm uses the structure of the ensemble predictions on unlabeled data to yield significant performance improvements. It does this without making assumptions on the structure or origin of the ensemble, without parameters, and as scalably as linear learning. We empirically demonstrate these performance gains with random forests.
Author Information
Akshay Balsubramani (Ucsd)
Yoav Freund (UC San Diego)
More from the Same Authors
-
2015 Poster: Scalable Semi-Supervised Aggregation of Classifiers »
Akshay Balsubramani · Yoav Freund -
2013 Poster: The Fast Convergence of Incremental PCA »
Akshay Balsubramani · Sanjoy Dasgupta · Yoav Freund -
2009 Poster: A Parameter-free Hedging Algorithm »
Kamalika Chaudhuri · Yoav Freund · Daniel Hsu