论文标题
致力于社交和引人入胜的同伴学习:预测儿童的后渠道和脱离接触
Towards Social & Engaging Peer Learning: Predicting Backchanneling and Disengagement in Children
论文作者
论文摘要
社交机器人和交互式计算机应用有可能通过充当同伴学习伴侣来促进幼儿的早期语言发展。但是,研究发现,儿童只能信任以人际交往方式行事的机器人。为了帮助机器人成为吸引人和细心的同伴学习伴侣,我们开发模型来预测听众是否会失去注意力(听众脱离接触预测,LDP)以及机器人应在接下来的几秒钟内产生回音响应(BackChannelling lationdionction,BEP)的程度。我们构成了日常生殖民原和BEP作为时间序列分类问题,并进行了多个实验,以评估不同时间序列特征和特征集对我们模型预测性能的影响。使用统计和机器学习,我们还研究了哪些社会人口统计学因素会影响儿童花费回音和倾听同龄人的时间。为了使我们的模型解释性,我们还分析了负责其预测性能的关键特征。我们的实验揭示了多模式特征的实用性,例如瞳孔扩张,眨眼率,头部运动,面部动作单元,从未使用过。我们还发现,时间序列功能的动态是听众脱离和回音的丰富预测指标。
Social robots and interactive computer applications have the potential to foster early language development in young children by acting as peer learning companions. However, studies have found that children only trust robots which behave in a natural and interpersonal manner. To help robots come across as engaging and attentive peer learning companions, we develop models to predict whether the listener will lose attention (Listener Disengagement Prediction, LDP) and the extent to which a robot should generate backchanneling responses (Backchanneling Extent Prediction, BEP) in the next few seconds. We pose LDP and BEP as time series classification problems and conduct several experiments to assess the impact of different time series characteristics and feature sets on the predictive performance of our model. Using statistics & machine learning, we also examine which socio-demographic factors influence the amount of time children spend backchanneling and listening to their peers. To lend interpretability to our models, we also analyzed critical features responsible for their predictive performance. Our experiments revealed the utility of multimodal features such as pupil dilation, blink rate, head movements, facial action units which have never been used before. We also found that the dynamics of time series features are rich predictors of listener disengagement and backchanneling.