This paper presents a novel neural network model, called Similarity Neural Network (SNN), designed to learn similarity measures for pairs of patterns exploiting binary supervision. The model guarantees to compute a non negative and symmetric measure, and shows good generalization capabilities even if a small set of supervised examples is used for training. The approximation capabilities of the proposed model are also investigated. Moreover, the experiments carried out on some benchmark datasets show that SNNs almost always outperform other similarity learning methods proposed in the literature
The aim of this paper is to present a k-nearest neighbour (k-NN) classifier based on a neural model ...
Following the approach of extracting similarity metrics directly from labelled data, a standard back...
Currently, in machine learning, there is a growing interest in finding new and better predictive mo...
This paper presents a novel neural network model, called Similarity Neural Network (SNN), designed t...
This paper presents a novel neural network model, called Similarity Neural Network (SNN), designed t...
This paper presents a novel neural network model, called similarity neural network (SNN), designed t...
This paper presents a novel neural network model, called similarity neural network (SNN), designed t...
This paper presents a novel neural network model, called similarity neural network (SNN), designed t...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
Similarity neural networks (SNNs) are a novel neural network model designed to learn similarity meas...
Similarity neural networks (SNNs) are a novel neural network model designed to learn similarity meas...
Similarity neural networks (SNNs) are a novel neural network model designed to learn similarity meas...
The aim of this paper is to present a k-nearest neighbour (k-NN) classifier based on a neural model ...
Following the approach of extracting similarity metrics directly from labelled data, a standard back...
Currently, in machine learning, there is a growing interest in finding new and better predictive mo...
This paper presents a novel neural network model, called Similarity Neural Network (SNN), designed t...
This paper presents a novel neural network model, called Similarity Neural Network (SNN), designed t...
This paper presents a novel neural network model, called similarity neural network (SNN), designed t...
This paper presents a novel neural network model, called similarity neural network (SNN), designed t...
This paper presents a novel neural network model, called similarity neural network (SNN), designed t...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
Similarity neural networks (SNNs) are a novel neural network model designed to learn similarity meas...
Similarity neural networks (SNNs) are a novel neural network model designed to learn similarity meas...
Similarity neural networks (SNNs) are a novel neural network model designed to learn similarity meas...
The aim of this paper is to present a k-nearest neighbour (k-NN) classifier based on a neural model ...
Following the approach of extracting similarity metrics directly from labelled data, a standard back...
Currently, in machine learning, there is a growing interest in finding new and better predictive mo...