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Abstract- In this paper, we propose a power saving mechanism based on a simple moving average of the traffic rate in 802.3ad link aggregation. Two key components comprise the proposed mechanism: (1) a negotiation protocol for both nodes connected to an 802.3ad aggregated link and (2) an algorithm to estimate an appropriate number of active links to comprise the aggregated link in accordance with the...
Under the open fault model with considering the effects of adjacent lines, the open fault excitation is depended on the tests. Therefore, the layout information is needed to generate a test for an open fault. However, it is not easy to extract accurate circuit parameters of a deep sub-micron LSI. We have already proposed an open fault model without using the accurate circuit parameters. In this paper,...
The generalization ability of a learning model is one of the key elements of machine learning and data mining. Cross-validation is a common technique by which to evaluate the generalization error and to select the optimal model. However, the calculation required for sequential data processing by cross-validation is expensive in some generative models, such as hidden Markov models, stochastic context-free...
Hidden Markov models (HMMs) are widely applied to the analysis of time-dependent data sequences, such as nonlinear signal processing, natural language processing, and bioinformatics. Training data in HMMs have two possible formats: a large set of time-dependent sequential data and an infinitely long sequence. The learning process is one of the main concerns in machine learning. For a large set of...
In order to improve the accuracy of predicting blood glucose levels, it is necessary to obtain details about the lifestyle and to optimize the input variables dependent on diabetics. In this study, using four subjects who are type 1 diabetics, the fasting blood glucose level (FBG), metabolic rate, food intake, and physical condition are recorded for more than 5 months as a preliminary study. Then,...
Many diabetics carry a portable-type blood glucose monitor and collect their own blood to examine their blood glucose levels daily (self monitoring of blood glucose, SMBG). The use of a physical condition variable was suggested in order to estimate the blood glucose level for diabetics. Four sets of data, including FBG, food intake, metabolic rate and physical condition, were collected from four Type...
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