Over the past decade, neural networks have been successful at making predictions from biological sequences, especially in the context of regulatory genomics. As in other fields of deep learning, tools have been devised to extract features such as sequence motifs that can explain the predictions made by a trained network. Here we intend to go beyond explainable machine learning and introduce SEISM, a selective inference procedure to test the association between these extracted features and the predicted phenotype. In particular, we discuss how training a one-layer convolutional network is formally equivalent to selecting motifs maximizing some association score. We adapt existing sampling-based selective inference procedures by quantizing th...
International audienceThe growing number of annotated biological sequences available makes it possib...
Includes bibliographical referencesMetagenomic sequencing projects have produced a glut of sequence ...
We describe the application of a hybrid symbolic/connectionist machine learning algorithm to the tas...
Over the past decade, neural networks have been successful at making predictions from biological seq...
Over the past decade, neural networks have been successful at making predictions from biological seq...
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...
A central challenge in population genetics is the detection of genomic footprints of selection. As m...
ABSTRACT Deep convolutional neural networks (CNNs) trained on regulatory genomic sequences tend to b...
New architectures of multilayer artificial neural networks and new methods for training them are rap...
Deep neural networks (DNNs) have demonstrated great promise at taking DNA sequences as input and pre...
Deep neural networks have demonstrated improved performance at predicting the sequence specificities...
The detection of regulatory sequences in DNA is a challenging problem, especially when considered in...
ABSTRACT Deep neural networks have demonstrated improved performance at predicting the sequence spec...
A common goal in the convolutional neural network (CNN) modeling of genomic data is to discover spec...
International audienceThe growing number of annotated biological sequences available makes it possib...
Includes bibliographical referencesMetagenomic sequencing projects have produced a glut of sequence ...
We describe the application of a hybrid symbolic/connectionist machine learning algorithm to the tas...
Over the past decade, neural networks have been successful at making predictions from biological seq...
Over the past decade, neural networks have been successful at making predictions from biological seq...
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...
A central challenge in population genetics is the detection of genomic footprints of selection. As m...
ABSTRACT Deep convolutional neural networks (CNNs) trained on regulatory genomic sequences tend to b...
New architectures of multilayer artificial neural networks and new methods for training them are rap...
Deep neural networks (DNNs) have demonstrated great promise at taking DNA sequences as input and pre...
Deep neural networks have demonstrated improved performance at predicting the sequence specificities...
The detection of regulatory sequences in DNA is a challenging problem, especially when considered in...
ABSTRACT Deep neural networks have demonstrated improved performance at predicting the sequence spec...
A common goal in the convolutional neural network (CNN) modeling of genomic data is to discover spec...
International audienceThe growing number of annotated biological sequences available makes it possib...
Includes bibliographical referencesMetagenomic sequencing projects have produced a glut of sequence ...
We describe the application of a hybrid symbolic/connectionist machine learning algorithm to the tas...