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This paper studies the QoS classification problem in the electric power communication networks. A new QoS classification optimization algorithm is proposed based on the mixed artificial fish swarm algorithm, by considering energy efficiency. Firstly, a QoS classification optimization network model is built. The network delay and package loss ratio about the network model is described. Secondly, because...
This paper compares the performance of keyword and machine learning-based chest x-ray report classification for Acute Lung Injury (ALI). ALI mortality is approximately 30 percent. High mortality is, in part, a consequence of delayed manual chest x-ray classification. An automated system could reduce the time to recognize ALI and lead to reductions in mortality. For our study, 96 and 857 chest x-ray...
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