残余网络的行为类似于增强算法

Chapman Siu
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引用次数: 6

摘要

我们证明了残余网络(ResNet)等同于增强特征表示,而不需要对底层ResNet训练算法进行任何修改。证明了基于在线梯度增强理论的后悔界,表明ResNet可以通过改变神经网络结构,在身份跳过连接中加入收缩参数,并使用具有最大范数边界的残差模块来实现在线梯度增强后悔界。通过ResNet与在线增强之间的这种关系,可以在改变残差模块的基础上构建新的特征表示增强算法。我们通过提出决策树残差模块来构造一个新的增强决策树算法,并证明了这两种方法的泛化误差界限。放松BoostResNet算法中的约束,允许它以一种外核的方式进行训练。我们评估了有收缩修改和没有收缩修改的卷积ResNet,以证明其有效性,并证明我们的在线增强决策树算法与最先进的离线增强决策树算法相当,而没有离线方法的缺点。
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Residual Networks Behave Like Boosting Algorithms
We show that Residual Networks (ResNet) is equivalent to boosting feature representation, without any modification to the underlying ResNet training algorithm. A regret bound based on Online Gradient Boosting theory is proved and suggests that ResNet could achieve Online Gradient Boosting regret bounds through neural network architectural changes with the addition of a shrinkage parameter in the identity skip-connections and using residual modules with max-norm bounds. Through this relation between ResNet and Online Boosting, novel feature representation boosting algorithms can be constructed based on altering residual modules. We demonstrate this through proposing decision tree residual modules to construct a new boosted decision tree algorithm and demonstrating generalization error bounds for both approaches; relaxing constraints within BoostResNet algorithm to allow it to be trained in an out-of-core manner. We evaluate convolution ResNet with and without shrinkage modifications to demonstrate its efficacy, and demonstrate that our online boosted decision tree algorithm is comparable to state-of-the-art offline boosted decision tree algorithms without the drawback of offline approaches.
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