Gronchi Giorgio, Raglianti Marco, Noventa Stefano, Lazzeri Alessandro, Guazzini Andrea
Department of Neuroscience, Psychology, Drug Research and Child's Health - Section of Psychology, University of Florence Florence, Italy.
Formerly affiliated with the BioRobotics Institute, Scuola Superiore Sant'Anna Pisa, Italy.
Front Psychol. 2016 Jul 6;7:1027. doi: 10.3389/fpsyg.2016.01027. eCollection 2016.
Psychological research has found that human perception of randomness is biased. In particular, people consistently show the overalternating bias: they rate binary sequences of symbols (such as Heads and Tails in coin flipping) with an excess of alternation as more random than prescribed by the normative criteria of Shannon's entropy. Within data mining for medical applications, Marcellin proposed an asymmetric measure of entropy that can be ideal to account for such bias and to quantify subjective randomness. We fitted Marcellin's entropy and Renyi's entropy (a generalized form of uncertainty measure comprising many different kinds of entropies) to experimental data found in the literature with the Differential Evolution algorithm. We observed a better fit for Marcellin's entropy compared to Renyi's entropy. The fitted asymmetric entropy measure also showed good predictive properties when applied to different datasets of randomness-related tasks. We concluded that Marcellin's entropy can be a parsimonious and effective measure of subjective randomness that can be useful in psychological research about randomness perception.
心理学研究发现,人类对随机性的认知存在偏差。具体而言,人们始终表现出过度交替偏差:他们认为符号的二元序列(如抛硬币中的正面和反面)中交替过多的比香农熵的规范标准所规定的更具随机性。在医学应用的数据挖掘中,马塞兰提出了一种不对称熵度量,它可以很好地解释这种偏差并量化主观随机性。我们使用差分进化算法将马塞兰熵和雷尼熵(一种包含许多不同种类熵的广义不确定性度量形式)拟合到文献中发现的实验数据。与雷尼熵相比,我们观察到马塞兰熵的拟合效果更好。当应用于与随机性相关任务的不同数据集时,拟合的不对称熵度量也显示出良好的预测特性。我们得出结论,马塞兰熵可以是一种简洁有效的主观随机性度量,可用于关于随机性认知的心理学研究。