首页> 外国专利> DITHERED QUANTIZATION OF PARAMETERS DURING TRAINING WITH A MACHINE LEARNING TOOL

DITHERED QUANTIZATION OF PARAMETERS DURING TRAINING WITH A MACHINE LEARNING TOOL

机译:使用机器学习工具对参数进行训练后的数字化量化

摘要

A machine learning tool uses dithered quantization of parameters during training of a machine learning model such as a neural network. The machine learning tool receives training data and initializes certain parameters of the machine learning model (e.g., weights for connections between nodes of a neural network, biases for nodes). The machine learning tool trains the parameters in one or more iterations based on the training data. In particular, in a given iteration, the machine learning tool applies the machine learning model to at least some of the training data and, based at least in part on the results, determines parameter updates to the parameters. The machine learning tool updates the parameters using the parameter updates and a dithered quantizer function, which can add random values before a rounding or truncation operation.
机译:机器学习工具在训练诸如神经网络的机器学习模型期间使用参数的抖动量化。机器学习工具接收训练数据并初始化机器学习模型的某些参数(例如,神经网络节点之间连接的权重,节点的偏差)。机器学习工具根据训练数据以一次或多次迭代训练参数。特别地,在给定的迭代中,机器学习工具将机器学习模型应用于至少一些训练数据,并且至少部分地基于结果,确定对参数的参数更新。机器学习工具使用参数更新和抖动量化器功能更新参数,抖动量化器功能可以在舍入或截断操作之前添加随机值。

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