Sparse linear models approximate target variable(s) by a sparse linear combination of input variables. Since they are simple, fast, and able to select features, they are widely used in classification and regression. Essentially they are shallow feed-forward neural networks that have three limitations: (1) incompatibility to model nonlinearity of features, (2) inability to learn high-level features, and (3) unnatural extensions to select features in a multiclass case. Deep neural networks are models structured by multiple hidden layers with nonlinear activation functions. Compared with linear models, they have two distinctive strengths: the capability to (1) model complex systems with nonlinear structures and (2) learn high-level representat...
High-throughput technologies nowadays are leading to massive availability of data to be explored. T...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
Machine learning models are difficult to employ in biology-related research. On the one hand, the av...
BACKGROUND: Visualization tools for deep learning models typically focus on discovering key input fe...
Enhancers are short deoxyribonucleic acid fragments that assume an important part in the genetic pro...
Enhancers are short motifs that contain high position variability and free scattering. Identifying t...
Feature or variable selection when the number of features is relatively large to the number of sampl...
Unravelling gene expression has become a critical procedure in bioinformatics world today and requir...
Abstract Background With the rapid development of deep sequencing techniques in the recent years, en...
A Deep Boltzmann Machine is a model of a Deep Neural Network formed from multiple layers of neurons ...
Feature selection is central to contemporary high-dimensional data analysis. Group structure among f...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
A Deep Boltzmann Machine is a model of a Deep Neural Network formed from multiple layers of neurons ...
Motivation: Recent advances in the areas of bioinformatics and predictive chemogenomics are poised t...
As a data-driven science, genomics largely utilizes machine learning to capture dependencies in data...
High-throughput technologies nowadays are leading to massive availability of data to be explored. T...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
Machine learning models are difficult to employ in biology-related research. On the one hand, the av...
BACKGROUND: Visualization tools for deep learning models typically focus on discovering key input fe...
Enhancers are short deoxyribonucleic acid fragments that assume an important part in the genetic pro...
Enhancers are short motifs that contain high position variability and free scattering. Identifying t...
Feature or variable selection when the number of features is relatively large to the number of sampl...
Unravelling gene expression has become a critical procedure in bioinformatics world today and requir...
Abstract Background With the rapid development of deep sequencing techniques in the recent years, en...
A Deep Boltzmann Machine is a model of a Deep Neural Network formed from multiple layers of neurons ...
Feature selection is central to contemporary high-dimensional data analysis. Group structure among f...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
A Deep Boltzmann Machine is a model of a Deep Neural Network formed from multiple layers of neurons ...
Motivation: Recent advances in the areas of bioinformatics and predictive chemogenomics are poised t...
As a data-driven science, genomics largely utilizes machine learning to capture dependencies in data...
High-throughput technologies nowadays are leading to massive availability of data to be explored. T...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
Machine learning models are difficult to employ in biology-related research. On the one hand, the av...