280 research outputs found

    Replication for Logic Bipartitioning

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    Logic replication, the duplication of logic in order to limit communication between partitions, is an effective part of a complete partitioning solution. In this paper we seek a better understanding of the important issues in logic replication. By developing new optimizations to existing algorithms we are able to significantly improve the quality of these techniques, achieving up to 12.5 % better results than the best existing replication techniques. When integrated into our already state-of-the-art partitioner, we improve overall cutsizes by 37.8%, while requiring the duplication of at most 7 % of the logic.

    Grouped Variable Model Selection for Heterogeneous Medical Signals

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    ABSTRACT We explore statistical regression techniques for use in medical monitoring and telehealth applications. Medical embedded systems of the present and future are recording vast sets of data related to medical conditions and physiology. In this paper, distributed time-lag linear models are proposed as a means to help explain relationships between two or more medical and physiological measurements. The issues associated with performing multiple regression with heterogeneous medical data are treated as problems in model selection. An automatic method of model selection is proposed to construct models for high sample rate data by grouping sets of predictor variables. The grouped predictor variable model optimization problem is formalized. Once an initial regression is performed on all available variables, our approximate algorithm for finding the grouped variable model with the greatest validity runs in O(n 2 ) time, where n is the number of available predictor variables. This is compared to the all subsets technique which requires O(2 n ) time for the same predictor set. In our experiments with medical signal data, we find that the method produces models with reasonable goodness of fit scores and high average confidence levels for grouped predictors
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