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Prediction of emotional states in parent-adolescent conversations using non-linear autoregressive neural networks

机译:非线性自回归神经网络预测父母与青少年对话中的情绪状态

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This study investigates an application of nonlinear autoregressive (NAR) models to the prediction of the most likely time series of emotional state transitions of speakers engaged in dyadic conversations. While, previous methods analyzed each speaker in separation, the new approach proposes to couple both speakers into a nonlinear recursive predictive neural network system (NARX-NN). The NARX-NN system was tested and compared with its uncoupled version (NAR-NN). The tests were conducted using speech recordings from 63 parent-child dyads including 29 depressed and 34 non-depressed adolescent children, 14-18 years of age. The conversations were conducted on three different topics. The NARX-NN outperformed the NAR-NN method in all experimental scenarios and across all topics of conversation. Predictions of emotional states for depressed children led to higher accuracy than the predictions for non-depressed children. Modeling with class and/or speaker dependency improved the results compared to the class and/or speaker independent models.
机译:本研究调查了非线性自回归(NAR)模型在预测与二元对话中说话者情绪状态转变最可能的时间序列中的应用。虽然以前的方法分别分析了每个说话者,但新方法建议将两个说话者耦合到非线性递归预测神经网络系统(NARX-NN)中。测试了NARX-NN系统,并将其与非耦合版本(NAR-NN)进行了比较。测试使用来自63个亲子二元组的语音录音进行,包括29至14岁的抑郁和34名非抑郁的青少年儿童。对话是针对三个不同的主题进行的。在所有实验场景和对话的所有主题中,NARX-NN均优于NAR-NN方法。抑郁儿童的情绪状态预测比非抑郁儿童的预测准确性更高。与班级和/或说话者无关的模型相比,具有班级和/或说话者依赖性的建模改善了结果。

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