jmlr jmlr2010 jmlr2010-93 jmlr2010-93-reference knowledge-graph by maker-knowledge-mining
Source: pdf
Author: Tom Schaul, Justin Bayer, Daan Wierstra, Yi Sun, Martin Felder, Frank Sehnke, Thomas Rückstieß, Jürgen Schmidhuber
Abstract: PyBrain is a versatile machine learning library for Python. Its goal is to provide flexible, easyto-use yet still powerful algorithms for machine learning tasks, including a variety of predefined environments and benchmarks to test and compare algorithms. Implemented algorithms include Long Short-Term Memory (LSTM), policy gradient methods, (multidimensional) recurrent neural networks and deep belief networks. Keywords: Python, neural networks, reinforcement learning, optimization
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