Download Neural Networks: Tricks of the Trade by Grégoire Montavon, Geneviève Orr, Klaus-Robert Müller PDF

By Grégoire Montavon, Geneviève Orr, Klaus-Robert Müller

The belief for this e-book dates again to the NIPS'96 workshop "Tips of the exchange" the place, for the 1st time, a scientific try used to be made to make an review and overview of methods for successfully exploiting neural community concepts. motivated through the good fortune of this assembly, the amount editors have ready the current finished documentation. along with together with chapters constructed from the workshop contributions, they've got commissioned additional chapters to around out the presentation and entire the insurance of proper subareas. this useful reference booklet is geared up in 5 elements, each one such as a number of coherent chapters utilizing constant terminology. The paintings starts off with a common advent and every half opens with an advent through the quantity editors. A entire topic index permits quick access to person subject matters. The ebook is a gold mine not just for execs and researchers within the sector of neural details processing, but additionally for novices to the sector.

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