Input handling in agent based micro level simulators,Used

Input handling in agent based micro level simulators,Used

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SKU: DADAX365933300X
Brand: LAP Lambert Academic Publishing
Condition: New
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A new approach is presented for handling missing values in multilevel agentbased simulation (MABS) at microlevel by using truth tables and logical relations. Although microlevel simulation is a vast field to use logical relations with truth tables to find missing values but it takes values into account at individual levels. We used databases in form of tables to extract missing values. We have defined logical relations according to scenario by interacting with truth tables to find appropriate missing values. In this research we have concluded that missing values would be handled in different ways, such as: Artificial neural network, Knearest neighbor, Statistical method and Data mining; etc... These methods have not facilitated in finding appropriate missing values as we saw in literature. We have created a method that can find missing values and produce good results. We have run our method on a specific scenario to check the efficiency of input handling that motivated us to arrange database in a proper way to handle missing values along.

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