International audienceThe growing number of annotated biological sequences available makes it possible to learn genotype-phenotype relationships from data with increasingly high accuracy. When large quantities of labeled samples are available for training a model, convolutional neural networks can be used to predict the phenotype of unannotated sequences with good accuracy. Unfortunately, their performance with medium- or small-scale datasets is mitigated, which requires inventing new data-efficient approaches. In this paper, we introduce a hybrid approach between convolutional neural networks and kernel methods to model biological sequences. Our method enjoys the ability of convolutional neural networks to learn data representations that a...
Over the past decade, neural networks have been successful at making predictions from biological seq...
Classifying biological sequences is one of the most important tasks in computational biology. In the...
Modern machine learning techniques are proving to be extremely valuable for the analysis of data in ...
International audienceThe growing number of annotated biological sequences available makes it possib...
To understand biology at a system level, I presented novel machine learning algorithms to reveal the...
To understand biology at a system level, I presented novel machine learning algorithms to reveal the...
Although convolutional neural networks (CNNs) have been applied to a variety of computational genomi...
Although convolutional neural networks (CNNs) have been applied to a variety of computational genomi...
International audienceSubstring kernels are classical tools for representing biological sequences or...
A common goal in the convolutional neural network (CNN) modeling of genomic data is to discover spec...
Recent advances in sequencing and synthesis technologies have sparked extraordinary growth in large-...
Motivation: Deep neural network architectures such as convolutional and long short-term memory netwo...
Biological sequence classification (such as protein remote homology detection) solely based on seque...
Transcription factors (TFs) bind DNA by recognizing specific sequence motifs, typically of length 6-...
In this report we perform a comparative study of kernel functions defined on generative models with ...
Over the past decade, neural networks have been successful at making predictions from biological seq...
Classifying biological sequences is one of the most important tasks in computational biology. In the...
Modern machine learning techniques are proving to be extremely valuable for the analysis of data in ...
International audienceThe growing number of annotated biological sequences available makes it possib...
To understand biology at a system level, I presented novel machine learning algorithms to reveal the...
To understand biology at a system level, I presented novel machine learning algorithms to reveal the...
Although convolutional neural networks (CNNs) have been applied to a variety of computational genomi...
Although convolutional neural networks (CNNs) have been applied to a variety of computational genomi...
International audienceSubstring kernels are classical tools for representing biological sequences or...
A common goal in the convolutional neural network (CNN) modeling of genomic data is to discover spec...
Recent advances in sequencing and synthesis technologies have sparked extraordinary growth in large-...
Motivation: Deep neural network architectures such as convolutional and long short-term memory netwo...
Biological sequence classification (such as protein remote homology detection) solely based on seque...
Transcription factors (TFs) bind DNA by recognizing specific sequence motifs, typically of length 6-...
In this report we perform a comparative study of kernel functions defined on generative models with ...
Over the past decade, neural networks have been successful at making predictions from biological seq...
Classifying biological sequences is one of the most important tasks in computational biology. In the...
Modern machine learning techniques are proving to be extremely valuable for the analysis of data in ...