Article ID Journal Published Year Pages File Type
5000823 Digital Communications and Networks 2016 6 Pages PDF
Abstract
Given the exponentially increasing volume of heterogenous medical cases, it is difficult to efficiently perform similarity-based reasoning (SBR) on a centralized machine. In this paper, we investigate how to perform SBR using MapReduce (SBRMR), which is an inference framework for data-intensive applications over clusters of computers. To combine the similarities from the individual machines, a mixed integer optimization problem is formulated to filter the priority reference cases. Besides, a resilient mapping mechanism is employed using a quadratic optimization model for weighting the attributes and making the neighborhoods in the same class compact, hence improving the inference capacity. Our experiments on classifying the medical cases demonstrate that SBRMR has approximately 4.1% improvement in classification accuracy over SBR, which suggests that SBRMR is an efficient and resilient similarity-based inference approach.
Related Topics
Physical Sciences and Engineering Engineering Control and Systems Engineering
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