TY - JOUR
T1 - Simulation of foraging behavior using a decision-making agent with Bayesian and inverse Bayesian inference
T2 - Temporal correlations and power laws in displacement patterns
AU - Shinohara, Shuji
AU - Okamoto, Hiroshi
AU - Manome, Nobuhito
AU - Gunji, Pegio Yukio
AU - Nakajima, Yoshihiro
AU - Moriyama, Toru
AU - Chung, Ung il
N1 - Funding Information:
This work was supported by the Center of Innovation Program from the Japan Science and Technology Agency , JST; and JSPS KAKENHI [grant number JP21K12009 ].
Publisher Copyright:
© 2022 Elsevier Ltd
PY - 2022/4
Y1 - 2022/4
N2 - It has been stated that in human migratory behavior, the step length series may have temporal correlation and that there is some relationship between this time dependency and the fact that the frequency distribution of step length follows a power-law distribution. Furthermore, the frequency of occurrence of the step length in some large marine organisms has been found to switch between power-law and exponential distributions, depending on the difficulty of prey acquisition. However, to date it has not been clarified how the aforementioned three phenomena arise: the positive correlation created in the step length series, the relation between the positive correlation of the step length series and the form of an individual's step length distribution, and the switching between power-law and exponential distributions depending on the abundance of prey. This study simulated foraging behavior using the Bayesian decision-making agent simultaneously performing both knowledge learning and knowledge-based inference to analyze how the aforementioned three phenomena arise. In the agent with learning and inference, past experiences were stored as hypotheses (knowledge) and they were used in current foraging behavior; at the same time, the hypothesis continued to be updated based on new experiences. The simulation results show that the agent with both learning and inference has a mechanism that simultaneously causes all the phenomena.
AB - It has been stated that in human migratory behavior, the step length series may have temporal correlation and that there is some relationship between this time dependency and the fact that the frequency distribution of step length follows a power-law distribution. Furthermore, the frequency of occurrence of the step length in some large marine organisms has been found to switch between power-law and exponential distributions, depending on the difficulty of prey acquisition. However, to date it has not been clarified how the aforementioned three phenomena arise: the positive correlation created in the step length series, the relation between the positive correlation of the step length series and the form of an individual's step length distribution, and the switching between power-law and exponential distributions depending on the abundance of prey. This study simulated foraging behavior using the Bayesian decision-making agent simultaneously performing both knowledge learning and knowledge-based inference to analyze how the aforementioned three phenomena arise. In the agent with learning and inference, past experiences were stored as hypotheses (knowledge) and they were used in current foraging behavior; at the same time, the hypothesis continued to be updated based on new experiences. The simulation results show that the agent with both learning and inference has a mechanism that simultaneously causes all the phenomena.
KW - Bayesian and inverse Bayesian inference
KW - Decision-making agent
KW - Exponential distribution
KW - Foraging behavior
KW - Power-law distribution
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U2 - 10.1016/j.chaos.2022.111976
DO - 10.1016/j.chaos.2022.111976
M3 - Article
AN - SCOPUS:85126126242
SN - 0960-0779
VL - 157
JO - Chaos, Solitons and Fractals
JF - Chaos, Solitons and Fractals
M1 - 111976
ER -