计算机科学
利用
图形
构造(python库)
人工智能
深度学习
辍学(神经网络)
欧几里德几何
理论计算机科学
匹配(统计)
机器学习
航程(航空)
数学
统计
材料科学
几何学
计算机安全
复合材料
程序设计语言
作者
Mikael Henaff,Joan Bruna,Yann LeCun
出处
期刊:Cornell University - arXiv
日期:2015-06-16
被引量:484
摘要
Deep Learning's recent successes have mostly relied on Convolutional Networks, which exploit fundamental statistical properties of images, sounds and video data: the local stationarity and multi-scale compositional structure, that allows expressing long range interactions in terms of shorter, localized interactions. However, there exist other important examples, such as text documents or bioinformatic data, that may lack some or all of these strong statistical regularities.
In this paper we consider the general question of how to construct deep architectures with small learning complexity on general non-Euclidean domains, which are typically unknown and need to be estimated from the data. In particular, we develop an extension of Spectral Networks which incorporates a Graph Estimation procedure, that we test on large-scale classification problems, matching or improving over Dropout Networks with far less parameters to estimate.
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