Sciweavers
Explore
Publications
Books
Software
Tutorials
Presentations
Lectures Notes
Datasets
Labs
Conferences
Community
Upcoming
Conferences
Top Ranked Papers
Most Viewed Conferences
Conferences by Acronym
Conferences by Subject
Conferences by Year
Tools
Sci2ools
International Keyboard
Graphical Social Symbols
CSS3 Style Generator
OCR
Web Page to Image
Web Page to PDF
Merge PDF
Split PDF
Latex Equation Editor
Extract Images from PDF
Convert JPEG to PS
Convert Latex to Word
Convert Word to PDF
Image Converter
PDF Converter
Community
Sciweavers
About
Terms of Use
Privacy Policy
Cookies
2
search results - page 1 / 1
»
Co-evolving recurrent neurons learn deep memory POMDPs
Sort
relevance
views
votes
recent
update
View
thumb
title
28
click to vote
GECCO
2005
Springer
155
views
Optimization
»
more
GECCO 2005
»
Co-evolving recurrent neurons learn deep memory POMDPs
14 years 4 months ago
Download
www.idsia.ch
Recurrent neural networks are theoretically capable of learning complex temporal sequences, but training them through gradient-descent is too slow and unstable for practical use i...
Faustino J. Gomez, Jürgen Schmidhuber
claim paper
Read More »
18
click to vote
ICANN
2007
Springer
95
views
Neural Networks
»
more
ICANN 2007
»
Solving Deep Memory POMDPs with Recurrent Policy Gradients
14 years 5 months ago
Download
www.idsia.ch
Abstract. This paper presents Recurrent Policy Gradients, a modelfree reinforcement learning (RL) method creating limited-memory stochastic policies for partially observable Markov...
Daan Wierstra, Alexander Förster, Jan Peters,...
claim paper
Read More »
« Prev
« First
page 1 / 1
Last »
Next »