We propose the concepts of philomatics and psychomatics as hybrid
combin...
This is a tutorial paper on Recurrent Neural Network (RNN), Long Short-T...
Due to the effectiveness of using machine learning in physics, it has be...
After the development of different machine learning and manifold learnin...
Stochastic Neighbor Embedding (SNE) is a manifold learning and dimension...
Multidimensional Scaling (MDS) is one of the first fundamental manifold
...
Variants of Triplet networks are robust entities for learning a
discrimi...
We analyze the effect of offline and online triplet mining for colorecta...
Human action recognition is one of the important fields of computer visi...
We propose a new embedding method, named Quantile-Quantile Embedding (QQ...
As many algorithms depend on a suitable representation of data, learning...
After the tremendous development of neural networks trained by
backpropa...
We propose a novel approach to anomaly detection called Curvature Anomal...
Siamese neural network is a very powerful architecture for both feature
...
Generative models and inferential autoencoders mostly make use of ℓ_2
no...
Fisher Discriminant Analysis (FDA) is a subspace learning method which
m...
We propose a new method, named isolation Mondrian forest (iMondrian fore...
In this paper, we propose two distributed algorithms, named Distributed
...
We present a new method which generalizes subspace learning based on
eig...
This paper proposes a new subspace learning method, named Quantized Fish...
Most of existing manifold learning methods rely on Mean Squared Error (M...
Despite the advances of deep learning in specific tasks using images, th...
This is a detailed tutorial paper which explains the Fisher discriminant...
This tutorial explains Linear Discriminant Analysis (LDA) and Quadratic
...
In this tutorial paper, we first define mean squared error, variance,
co...
Pattern analysis often requires a pre-processing stage for extracting or...
This paper is a tutorial for eigenvalue and generalized eigenvalue probl...
This paper proposes a novel trading system which plays the role of an
ar...
Two main methods for exploring patterns in data are data visualization a...
This paper is a step-by-step tutorial for fitting a mixture distribution...
Designing search algorithms for finding global optima is one of the most...
Nowadays, metaheuristic optimization algorithms are used to find the glo...
The variation of pose, illumination and expression makes face recognitio...
This paper proposes a fusion-based gender recognition method which uses
...