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Local Search Inspired Rough Sets for Improving Multiobjective Evolutionary Algorithm

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Figure

Figure 2. Decision variable space (left) and objective function space (right) [29].
Figure 3. Block diagram of Archive/selection strategy.
Table 1. The parameter setting.
Table 2. Test benchmark problems used in our study.
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