Decision Forests: A Unified Framework for Classification, Regression, Density Estimation, Manifold Learning and Semi-Supervised Learning
Microsoft Research (United Kingdom)
Abstract
This review presents a unified, efficient model of random decision forests which can be applied to a number of machine learning, computer vision, and medical image analysis tasks. Our model extends existing forest-based techniques as it unifies classification, regression, density estimation, manifold learning, semisupervised learning, and active learning under the same decision forest framework. This gives us the opportunity to write and optimize the core implementation only once, with application to many diverse tasks. The proposed model may be used both in a discriminative or generative way and may be applied to discrete or continuous, labeled or unlabeled data. The main contributions of this review are: (1)…
Citation impact
- FWCI
- 72.05
- Percentile
- 100%
- References
- 57
Authors
3- ACAntonio CriminisiCorresponding
Microsoft Research (United Kingdom)
- JSJamie Shotton
Microsoft Research (United Kingdom)
- EKEnder Konukoglu
Microsoft Research (United Kingdom)
Topics & keywords
- Artificial intelligence
- Machine learning
- Nonlinear dimensionality reduction
- Density estimation
- Semi-supervised learning
- Regression
- Supervised learning
- Estimation