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Unipolar Depression vs. Bipolar Disorder: An Elicitation-based Approach to Short-Term Detection of Mood Disorder

机译:单极抑郁症与双相情感障碍:一种基于精英的情绪障碍的短期检测方法

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Mood disorders include unipolar depression (UD) and bipolar disorder (BD). In this work, an elicitation-based approach to short-term detection of mood disorder based on the elicited speech responses is proposed. First, a long-short term memory (LSTM)-based classifier was constructed to generate the emotion likelihood for each segment in the elicited speech responses. The emotion likelihoods were then clustered into emotion codewords using the K-means algorithm. Latent semantic analysis (LSA) was then adopted to model the latent relationship between the emotion codewords and the elicited responses. The structural relationships among the emotion codewords in the LSA-based matrix were employed to construct a latent affective structure model (LASM) for characterizing each mood. For mood disorder detection, the similarity between the input speech LASM and each of the mood-specific LASMs was estimated. Finally, the mood with its LASM most similar to the input speech LASM is regarded as the detected mood. Experimental results show that the proposed LASM-based method achieved 73.3%, improving the detection accuracy by 13.3% compared to the commonly used SVM-based classifiers.
机译:情绪障碍包括单极抑制(UD)和双极性障碍(BD)。在这项工作中,提出了一种基于诱导的基于引发语音响应的情绪障碍的短期检测方法。首先,构建长短术语存储器(LSTM)的分类器以为引发的语音响应中的每个段产生情绪似然。然后使用K-Means算法将情绪似然集聚集到情绪码字中。然后采用潜在语义分析(LSA)来模拟情绪码字与引发反应之间的潜在关系。基于LSA基矩阵中的情感码字之间的结构关系来构建潜在情感结构模型(LASM)以表征每个情绪。对于情绪障碍检测,估计输入语音暴跌与每个情绪特异性扬声器之间的相似性。最后,与输入语音Lasm最相似的情况的情绪被认为是检测到的心情。实验结果表明,与常用的基于SVM的分类器相比,所提出的基于LASM的方法达到73.3%,通过13.3%提高了检测精度。

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