| Literature DB >> 32194471 |
Mitsuhiko Ishikawa1,2, Atsushi Senju3, Shoji Itakura1.
Abstract
Many studies have explored factors which influence gaze-following behavior of young infants. However, the results of empirical studies were inconsistent, and the mechanism underlying the contextual modulation of gaze following remains unclear. In order to provide valuable insight into the mechanisms underlying gaze following, we conducted computational modeling using Q-learning algorithm and simulated the learning process of infant gaze following to suggest a feasible model. In Experiment 1, we simulated how communicative cues and infant internal states affect the learning process of gaze following. The simulation indicated that the model in which communicative cues enhance infant internal states is the most feasible to explain the infant learning process. In Experiment 2, we simulated how individual differences in motivation for communication affect the learning process. The results showed that low motivation for communication can delay the learning process and decrease the frequency of gaze following. These simulations suggest that communicative cues may enhance infants' internal states and promote the development of gaze following. Also, initial social motivation may affect the learning process of social behaviors in the long term.Entities:
Keywords: communicative cues; computational modeling; gaze following; infant internal state; reinforcement learning
Year: 2020 PMID: 32194471 PMCID: PMC7063100 DOI: 10.3389/fpsyg.2020.00213
Source DB: PubMed Journal: Front Psychol ISSN: 1664-1078
FIGURE 1Learning environment: an infant watches the situation with an actor and two objects (A). The actor closes his eyes in the initial phase (B). Next, the actor shows different actions such as opening his eyes (C) and then looks toward one of two objects (D).
Overview of model parameters and their allowed ranges.
| Number of trials | [1, 2000] | |
| Behavioral value of random looking | (0, 1) | |
| Behavioral value of gaze following | (0, 1) | |
| Probability of random looking | (0, 1) | |
| Reward value | 1 | |
| Probability of reward | 0.5 or 1 | |
| alpha | Learning rate | 0.005 |
| Infant state | [0, 1] | |
| Infant default state | [0, 1] | |
| Other’s communicative intent | [0.5, 1.5] | |
| Motivation for communication | constant |
FIGURE 2Decision tree of variable model parameters.
FIGURE 3The results of Experiment 1 in 2,000 steps. (A) Communicative cue model. (B) Communicative cue and infant internal state model. (C) Communicative cue enhancing infant internal state model. Q(A) the behavioral value of random looking; Q(B) the behavioral value of gaze following; P(A) the probability of random looking predicted by a soft-max strategy.
FIGURE 4The results of Experiment 2 in 2,000 steps. (A) M = –0.2; (B) M = –0.1; (C) M = 0.1. Q(A) the behavioral value of random looking. Q(B) the behavioral value of gaze following. P(A) the probability of random looking predicted by a soft-max strategy.