Entanglement and Differentiable Information Gain Maximization
- Albert Montillo ,
- J. Tu ,
- Jamie Shotton ,
- John Winn ,
- J. E. Iglesias ,
- D. N. Metaxas ,
- Antonio Criminisi
Decision forests can be thought of as a flexible optimization toolbox with many avenues to alter or recombine the underlying architectural components and improve recognition accuracy and efficiency. In this chapter, we present two fundamental approaches for re-architecting decision forests that yield higher prediction accuracy and shortened decision time.