Z. A. Zavrumov, Oksana Vladimirovna Goncharova, Alina Aleksandrovna Levit
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During the study, an experimental corpus of speech of representatives of three ethnic groups (Russians, Kabardians and Armenians) was created with an annotation of the degree of accent, prosodic (94 signs) and spectral (74 signs) characteristics were extracted from speech signals, a comparative analysis of the effectiveness of machine learning algorithms (logistic regression, k-nearest neighbors, the method of support vectors, decision trees) in the problem of binary classification of the presence/absence of emphasis. The results of the study showed that at the syllabic level, the most effective is the decision tree model with combined features, and at the phrasal level, the k-nearest neighbor model with prosodic features. 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引用次数: 0
摘要
本研究的目的是根据对各种机器学习算法有效性的比较分析结果,确定识别情绪状态的最佳分类器,这些算法的基础是前音和频谱特征的组合。研究的新颖之处在于,在识别北高加索双语者带有情感特征的语音时,应用了 ML 算法,对有无口音进行二元分类,并确定了通用前音和频谱特征的最佳组合。在研究过程中,建立了三个民族(俄罗斯人、卡巴尔人和亚美尼亚人)代表的语音实验语料库,并标注了口音程度,从语音信号中提取了前音(94 个符号)和频谱(74 个符号)特征,比较分析了机器学习算法(逻辑回归、k-近邻、支持向量法、决策树)在有/无口音二元分类问题中的有效性。研究结果表明,在音节层面,最有效的是具有综合特征的决策树模型,在短语层面,最有效的是具有拟声特征的 k 近邻模型。研究确定了构成 "情感语言模型 "基础的通用前音特征,以及在实施过程中的类型差异,这反映了母语对双语者情感语音的影响。
Analysis of the effectiveness of ML algorithms for emotion recognition, taking into account prosodic and spectral features
The aim of the study is to determine the optimal classifier for identifying an emotional state based on the results of a comparative analysis of the effectiveness of various machine learning algorithms based on a combination of prosodic and spectral features. The scientific novelty consists in the application of ML algorithms in the recognition of emotionally marked speech of North Caucasian bilinguals in the problem of binary classification of the presence or absence of an accent with the determination of the optimal combination of universal prosodic and spectral features. During the study, an experimental corpus of speech of representatives of three ethnic groups (Russians, Kabardians and Armenians) was created with an annotation of the degree of accent, prosodic (94 signs) and spectral (74 signs) characteristics were extracted from speech signals, a comparative analysis of the effectiveness of machine learning algorithms (logistic regression, k-nearest neighbors, the method of support vectors, decision trees) in the problem of binary classification of the presence/absence of emphasis. The results of the study showed that at the syllabic level, the most effective is the decision tree model with combined features, and at the phrasal level, the k-nearest neighbor model with prosodic features. Universal prosodic features that form the basis of the "language model of emotions" were identified, as well as typological differences in their implementation, reflecting the influence of the native language on the emotional speech of bilinguals.