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A COMBINATORIAL APPROACH FOR SUPERVISED NEURAL NETWORK LEARNING

机译:监督神经网络学习的组合方法

摘要

A technique for machine learning, such as supervised artificial neural network learning includes receiving data and checking the dimensionality of the read data and reducing the dimensionality to enhance machine learning performance using Principal Component Analysis methodology. The technique further includes specifying the neural network architecture and initializing weights to establish a connection between read data including the reduced dimensionality and the predicted values. The technique also includes performing supervised machine learning using the specified neural network architecture, initialized weights, and the read data including the reduced dimensionality to predict values. Predicted values are then compared to a normalized system error threshold value and the initialized weights are revised based on the outcome of the comparison to generate a learnt neural network having a reduced error in weight space. The learnt neural network is validated using known values and is then used for predicting values.
机译:一种用于机器学习的技术,例如有监督的人工神经网络学习,包括使用主成分分析方法接收数据并检查读取数据的维数并降低维数以增强机器学习性能。该技术还包括指定神经网络架构和初始化权重,以在包括减小的维数和预测值的读取数据之间建立连接。该技术还包括使用指定的神经网络体系结构,初始化的权重以及包含减少的维度以预测值的读取数据来执行监督机器学习。然后将预测值与归一化的系统误差阈值进行比较,并根据比较结果修改初始化的权重,以生成在权重空间中误差减小的学习型神经网络。使用已知值验证学习的神经网络,然后将其用于预测值。

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