Protein Secondary Structure Prediction with Long Short Term Memory Networks

12/25/2014
by   Søren Kaae Sønderby, et al.
0

Prediction of protein secondary structure from the amino acid sequence is a classical bioinformatics problem. Common methods use feed forward neural networks or SVMs combined with a sliding window, as these models does not naturally handle sequential data. Recurrent neural networks are an generalization of the feed forward neural network that naturally handle sequential data. We use a bidirectional recurrent neural network with long short term memory cells for prediction of secondary structure and evaluate using the CB513 dataset. On the secondary structure 8-class problem we report better performance (0.674) than state of the art (0.664). Our model includes feed forward networks between the long short term memory cells, a path that can be further explored.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/16/2016

Recurrent Dropout without Memory Loss

This paper presents a novel approach to recurrent neural network (RNN) r...
research
04/21/2021

Aedes-AI: Neural Network Models of Mosquito Abundance

We present artificial neural networks as a feasible replacement for a me...
research
01/29/2016

Lipreading with Long Short-Term Memory

Lipreading, i.e. speech recognition from visual-only recordings of a spe...
research
09/20/2021

Clustering in Recurrent Neural Networks for Micro-Segmentation using Spending Personality

Customer segmentation has long been a productive field in banking. Howev...
research
01/05/2021

Recurrent Neural Networks for Stochastic Control Problems with Delay

Stochastic control problems with delay are challenging due to the path-d...
research
06/02/2017

Yeah, Right, Uh-Huh: A Deep Learning Backchannel Predictor

Using supporting backchannel (BC) cues can make human-computer interacti...
research
03/06/2015

Convolutional LSTM Networks for Subcellular Localization of Proteins

Machine learning is widely used to analyze biological sequence data. Non...

Please sign up or login with your details

Forgot password? Click here to reset