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METHOD FOR PSEUDO-RECURRENT PROCESSING OF DATA USING A FEEDFORWARD NEURAL NETWORK ARCHITECTURE

机译:基于前向神经网络架构的伪伪数据处理方法

摘要

Recurrent neural networks are powerful tools for handling incomplete data problems in machine learning thanks to their significant generative capabilities. However, the computational demand for algorithms to work in real time applications requires specialized hardware and software solutions. We disclose a method for adding recurrent processing capabilities into a feedforward network without sacrificing much from computational efficiency. We assume a mixture model and generate samples of the last hidden layer according to the class decisions of the output layer, modify the hidden layer activity using the samples, and propagate to lower layers. For an incomplete data problem, the iterative procedure emulates feedforward-feedback loop, filling-in the missing hidden layer activity with meaningful representations.
机译:递归神经网络具有强大的生成能力,是处理机器学习中不完整数据问题的强大工具。但是,算法在实时应用中的计算需求需要专门的硬件和软件解决方案。我们公开了一种将递归处理功能添加到前馈网络中而不牺牲很多计算效率的方法。我们假设一个混合模型,并根据输出层的类决策生成最后一个隐藏层的样本,使用样本修改隐藏层的活动,并传播到较低层。对于不完整的数据问题,迭代过程将模拟前馈-反馈循环,并使用有意义的表示填充缺少的隐藏层活动。

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