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The effectiveness of using diversity to select multiple classifier systems with varying classification thresholds
2018
Journal of Algorithms & Computational Technology
In classification applications, the goal of fusion techniques is to exploit complementary approaches and merge the information provided by these methods to provide a solution superior than any single method. Associated with choosing a methodology to fuse pattern recognition algorithms is the choice of algorithm or algorithms to fuse. Historically, classifier ensemble accuracy has been used to select which pattern recognition algorithms are included in a multiple classifier system. More
doi:10.1177/1748301818761132
fatcat:samr6inmzvh5fmldqbt44rl4vi