University of Miami, United States.
Neural Netw. 2010 Oct-Nov;23(8-9):1004-16. doi: 10.1016/j.neunet.2010.08.008. Epub 2010 Sep 21.
The face-to-face interactions of infants and their parents are a model system in which critical communicative abilities emerge. We apply machine learning methods to explore the predictability of infant and mother behavior during interaction with an eye to understanding the preconditions of infant intentionality. Overall, developmental changes were most evident when the probability of specific behaviors was examined in specific interactive contexts. Mother's smiled predictably in response to infant smiles, for example, and infant smile initiations become more predictable over developmental time. Analysis of face-to-face interaction--a tractable model system--promise to pave the way for the construction of virtual and physical agents who are able to interact and develop.
婴儿及其父母的面对面互动是一个关键交际能力出现的模式系统。我们应用机器学习方法来探索互动过程中婴儿和母亲行为的可预测性,以期了解婴儿意向性的前提条件。总的来说,当在特定的互动情境中检查特定行为的概率时,发展变化最为明显。例如,母亲会有规律地微笑回应婴儿的微笑,而婴儿的微笑发起在发展过程中变得更具可预测性。对面部互动的分析——一个易于处理的模式系统——有望为构建能够进行互动和发展的虚拟和物理代理铺平道路。