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Social Learning in Networks: Extraction of Deterministic Rules

机译:网络中的社会学习:确定性规则的提取

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In this paper, we want to introduce experimental economics to the field of data mining and vice versa. It continues related work on mining deterministic behavior rules of human subjects in data gathered from experiments. Game-theoretic predictions partially fail to work with this data. Equilibria also known as game-theoretic predictions solely succeed with experienced subjects in specific games - conditions, which are rarely given. Contemporary experimental economics offers a number of alternative models apart from game theory. In relevant literature, these models are always biased by philosophical plausibility considerations and are claimed to fit the data. An agnostic data mining approach to the problem is introduced in this paper - the philosophical plausibility considerations follow after the correlations are found. No other biases are regarded apart from determinism. The dataset of the paper ``Social Learning in Networks" by Choi et al 2012 is taken for evaluation. As a result, we come up with new findings. As future work, the design of a new infrastructure is discussed.
机译:在本文中,我们想将实验经济学引入数据挖掘领域,反之亦然。它继续进行有关从实验收集的数据中挖掘人类对象的确定性行为规则的相关工作。博弈论的预测部分无法使用此数据。均衡(也称为博弈论预测)仅在特定博弈中的经验丰富的受测者身上才能成功-条件很少给出。除了博弈论之外,当代实验经济学还提供了许多替代模型。在相关文献中,这些模型始终受到哲学上的合理性考虑的偏见,并声称适合数据。本文介绍了一种针对该问题的不可知论的数据挖掘方法-在找到相关性之后遵循哲学上的合理性考虑。除了确定性之外,没有其他偏见。 Choi等人(2012)的论文《网络中的社会学习》的数据集用于评估,结果我们提出了新的发现,并在未来的工作中讨论了新基础架构的设计。

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