首页> 外文会议>Proceedings of the 2007 International Conference on Artificial Intelligence(ICAI'2007) >TFP Measurement and Semi-supervised Isomerous Neural Network (SSINN) with Output Consistency by Interaction
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TFP Measurement and Semi-supervised Isomerous Neural Network (SSINN) with Output Consistency by Interaction

机译:通过交互作用具有输出一致性的TFP测量和半监督异构神经网络(SSINN)

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Total factor productivity (TFP) has aroused great interest in recent years and TFP contribution rate is a very important economic index for a country. Some models such as C-D production function, Malmquist index and data envelopment analysis (DEA) as well as input-out table have been used to compute TFP measurement, but the results are not consistent often. This paper proposes a kind of isomerous neural network with output consistency by interaction. Firstly, we construct three neural networks for TFP measurement with the three models aforesaid respectively. Then the three isomerous models are put the total neural network simultaneity. Their output (TFP) must keep consistency (the square sum of the difference of each other tends to minimum) when the parameters of the models are adjusted respectively. This neural network is neither supervised nor unsupervised, we can call it semi-supervised isomerous NN (SSINN).
机译:近年来,全要素生产率(TFP)引起了人们的极大兴趣,TFP贡献率是一个国家非常重要的经济指标。一些模型(例如C-D生产函数,Malmquist指数和数据包络分析(DEA)以及输入输出表)已用于计算TFP测量,但结果经常不一致。提出了一种通过交互作用具有输出一致性的异构神经网络。首先,我们分别用上述三种模型构建了三个用于全要素生产率测量的神经网络。然后将三个异构模型放在总神经网络的同时性上。当分别调整模型的参数时,它们的输出(TFP)必须保持一致性(彼此差异的平方和趋于最小)。这个神经网络既非监督也非监督,我们可以称其为半监督异构NN(SSINN)。

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