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COMPUTATIONALLY-EFFICIENT QUATERNION-BASED MACHINE-LEARNING SYSTEM

机译:基于高效四元数的机器学习系统

摘要

A deep neural network (DNN) includes hidden layers arranged along a forward propagation path between an input layer and an output layer. The input layer accepts training data comprising quaternion values, outputs a quaternion-valued signal along the forward path to at least one of the hidden layers. At least some of the hidden layers include quaternion layers to execute consistent quaternion (QT) forward operations based on one or more variable parameters. A loss function engine produces a loss function representing an error between the DNN result and an expected result. QT backpropagation-based training operations include computing layer-wise QT partial derivatives, consistent with an orthogonal basis of quaternion space, of the loss function with respect to a QT conjugate of the one or more variable parameters and of respective inputs to the quaternion layers.
机译:深度神经网络(DNN)包括沿输入层和输出层之间的正向传播路径排列的隐藏层。输入层接受包含四元数值的训练数据,沿着前向路径将四元数值的信号输出到至少一个隐藏层。隐藏层中的至少一些包括四元数层,以基于一个或多个可变参数执行一致的四元数(QT)正向操作。损失函数引擎会产生代表DNN结果与预期结果之间的错误的损失函数。基于QT反向传播的训练操作包括计算与四元数空间的正交基础一致的,相对于一个或多个可变参数的QT共轭的损失函数以及四元数层的各个输入的分层QT偏导数。

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