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Simulating outcomes of interventions using a multipurpose simulation program based on the Evolutionary Causal Matrices and Markov Chain

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arxiv 1711.09490 v1 pith:IQWBPFK3 submitted 2017-11-26 stat.AP cs.CEcs.CYcs.SI

Simulating outcomes of interventions using a multipurpose simulation program based on the Evolutionary Causal Matrices and Markov Chain

classification stat.AP cs.CEcs.CYcs.SI
keywords outcomesdatainterventionslong-termsimulationcausalchainclasses
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Predicting long-term outcomes of interventions is necessary for educational and social policy-making processes that might widely influence our society for the long-term. However, performing such predictions based on data from large-scale experiments might be challenging due to the lack of time and resources. In order to address this issue, computer simulations based on Evolutionary Causal Matrices and Markov Chain can be used to predict long-term outcomes with relatively small-scale lab data. In this paper, we introduce Python classes implementing a computer simulation model and presented some pilots implementations demonstrating how the model can be utilized for predicting outcomes of diverse interventions. We also introduce the class-structured simulation module both with real experimental data and with hypothetical data formulated based on social psychological theories. Classes developed and tested in the present study provide researchers and practitioners with a feasible and practical method to simulate intervention outcomes prospectively.

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