This paper investigates the connections between two state of the art classifiers: decision forests (DFs, including decision jungles) and convolutional neural networks (CNNs). Decision forests are computationally efficient thanks to their conditional computation property (computation is confined to only a small region of the tree, the nodes along a single branch). CNNs achieve state of the art accuracy, thanks to their representation learning capabilities. We present a systematic analysis of how to fuse conditional computation with representation learning and achieve a continuum of hybrid models with different ratios of accuracy vs. efficiency. We call this new family of hybrid models conditional networks. Conditional networks can be thought...
Most of the real world applications can be formulated as structured learning problems, in which the ...
This thesis explores the relationship between two classification models: decision trees and multilay...
We propose an algorithm for compiling Bayesian network classifiers into decision graphs that mimic t...
This paper investigates the connections between two state of the art classifiers: decision forests (...
We present Deep Neural Decision Forests - a novel approach that unifies classification trees with th...
We present an alternative layer to convolution layers in convolutional neural networks (CNNs). Our a...
In this work we present Neural Decision Forests, a novel approach to jointly tackle data representat...
A conditional deep learning model that learns specialized representations on a decision tree is desc...
Approaches combining methods based on decision trees and neural networks are an important examples o...
Recent theoretical results for pattern classification with thresholded real-valued functions (such a...
Abstract – Feed forward, back propagation neural networks are known to be universal approximators in...
The capability to model unkown complex interactions between variables made machine learning a pervas...
There exist several methods for transforming decision trees to neural networks. These methods typica...
Deep neural networks and decision trees operate on largely separate paradigms; typically, the former...
Conventional decision trees have a number of favorable properties, including a small computational f...
Most of the real world applications can be formulated as structured learning problems, in which the ...
This thesis explores the relationship between two classification models: decision trees and multilay...
We propose an algorithm for compiling Bayesian network classifiers into decision graphs that mimic t...
This paper investigates the connections between two state of the art classifiers: decision forests (...
We present Deep Neural Decision Forests - a novel approach that unifies classification trees with th...
We present an alternative layer to convolution layers in convolutional neural networks (CNNs). Our a...
In this work we present Neural Decision Forests, a novel approach to jointly tackle data representat...
A conditional deep learning model that learns specialized representations on a decision tree is desc...
Approaches combining methods based on decision trees and neural networks are an important examples o...
Recent theoretical results for pattern classification with thresholded real-valued functions (such a...
Abstract – Feed forward, back propagation neural networks are known to be universal approximators in...
The capability to model unkown complex interactions between variables made machine learning a pervas...
There exist several methods for transforming decision trees to neural networks. These methods typica...
Deep neural networks and decision trees operate on largely separate paradigms; typically, the former...
Conventional decision trees have a number of favorable properties, including a small computational f...
Most of the real world applications can be formulated as structured learning problems, in which the ...
This thesis explores the relationship between two classification models: decision trees and multilay...
We propose an algorithm for compiling Bayesian network classifiers into decision graphs that mimic t...