Recently, the importance of weather parameters and location information to better understand the context of the communication of children with profound intellectual and multiple disabilities (PIMD) or severe motor and intellectual disorders (SMID) has been proposed. However, an investigation on whether these data can be used to classify their behavior for system optimization aimed for predicting their behavior for independent communication and mobility has not been done. Thus, this study investigates whether recalibrating the datasets including either minor or major behavior categories or both, combining location and weather data and feature selection method training (Boruta) would allow more accurate classification of behavior discriminated to binary and multiclass classification outcomes using eXtreme Gradient Boosting (XGB), support vector machine (SVM), random forest (RF), and neural network (NN) classifiers. Multiple single-subject face-to-face and video-recorded sessions were conducted among 20 purposively sampled 8 to 10 -year old children diagnosed with PIMD/SMID or severe or profound intellectual disabilities and their caregivers.
翻译:最近,有人提出,天气参数和位置信息对于更好地了解智力和多重严重残疾(PIMD)或严重运动和智力失常(SMID)儿童沟通环境的重要性,但对于这些数据是否可以用于系统优化行为分类以预测其独立沟通和流动性的行为,尚未进行调查,因此,这项研究调查了是否重新调整数据集,包括次要或主要行为类别或两者,将位置和天气数据与特征选择方法培训(Boruta)结合起来,将可更准确地将歧视行为分类为二进制和多级分类结果,使用eXtreme梯级推车(XGB)、支持病媒机(SVM)、随机森林(RF)和神经网络(NN)分类,在20个抽样抽样的8至10岁被诊断患有PIMD/SMID或严重或严重智力残疾的幼儿及其照顾者中举行了多个单一对象面对面和录像会议。