Deep neural networks and decision trees operate on largely separate paradigms; typically, the former performs representation learning with pre-specified architectures, while the latter is characterised by learning hierarchies over pre-specified features with data-driven architectures. We unite the two via adaptive neural trees (ANTs) that incorporates representation learning into edges, routing functions and leaf nodes of a decision tree, along with a backpropagation-based training algorithm that adaptively grows the architecture from primitive modules (e.g., convolutional layers). We demonstrate that, whilst achieving competitive performance on classification and regression datasets, ANTs benefit from (i) lightweight inference via conditio...
This paper investigates the connections between two state of the art classifiers: decision forests (...
This thesis explores the relationship between two classification models: decision trees and multilay...
We propose a novel algorithm called Backpropagation Neural Tree (BNeuralT), which is a stochastic co...
A conditional deep learning model that learns specialized representations on a decision tree is desc...
Published version of a chapter from the book Pattern Recognition and Machine Intelligence. Also avai...
Neural networks (NNs) and decision trees (DTs) are both popular models of machine learning, yet comi...
We present a novel approach to enrich classification trees with the representation learning ability ...
Decision trees are a method commonly used in machine learning to either predict a categorical respon...
Deep neural networks (DNNs) and decision trees (DTs) are both state-of-the-art classifiers. DNNs per...
In this paper, a new classifier, called adaptive high order neural tree (AHNT), is proposed for patt...
Abstract – Feed forward, back propagation neural networks are known to be universal approximators in...
This paper documents an effort to design and implement a neural network-based, automatic classificat...
This paper proposes a way of improving classification performance for classes which have very few tr...
The ease of learning concepts from examples in empirical machine learning depends on the attributes ...
A new neural tree model, called adaptive high-order neural tree (AHNT), is proposed for classifying ...
This paper investigates the connections between two state of the art classifiers: decision forests (...
This thesis explores the relationship between two classification models: decision trees and multilay...
We propose a novel algorithm called Backpropagation Neural Tree (BNeuralT), which is a stochastic co...
A conditional deep learning model that learns specialized representations on a decision tree is desc...
Published version of a chapter from the book Pattern Recognition and Machine Intelligence. Also avai...
Neural networks (NNs) and decision trees (DTs) are both popular models of machine learning, yet comi...
We present a novel approach to enrich classification trees with the representation learning ability ...
Decision trees are a method commonly used in machine learning to either predict a categorical respon...
Deep neural networks (DNNs) and decision trees (DTs) are both state-of-the-art classifiers. DNNs per...
In this paper, a new classifier, called adaptive high order neural tree (AHNT), is proposed for patt...
Abstract – Feed forward, back propagation neural networks are known to be universal approximators in...
This paper documents an effort to design and implement a neural network-based, automatic classificat...
This paper proposes a way of improving classification performance for classes which have very few tr...
The ease of learning concepts from examples in empirical machine learning depends on the attributes ...
A new neural tree model, called adaptive high-order neural tree (AHNT), is proposed for classifying ...
This paper investigates the connections between two state of the art classifiers: decision forests (...
This thesis explores the relationship between two classification models: decision trees and multilay...
We propose a novel algorithm called Backpropagation Neural Tree (BNeuralT), which is a stochastic co...