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Article citations


Kroupi, E., Hanhart, P., Lee, J.S., Rerabek, M. and Ebrahimi, T. (2014) Predicting Subjective Sensation of Reality during Multimedia Consumption Based on EEG and Peripheral Physiological Signals. 2014 IEEE International Conference on Multimedia and Expo (ICME), Chengdu, 14-18 July 2014, 1-6.

has been cited by the following article:

  • TITLE: Quality Assessment of Training Data with Uncertain Labels for Classification of Subjective Domains

    AUTHORS: Ying Dai

    KEYWORDS: Quality Assessment, Subjective Domain, Multimodal Sensor Data, Label Noise, Likelihood Adjusting, TCM Zheng

    JOURNAL NAME: Journal of Computer and Communications, Vol.5 No.7, May 24, 2017

    ABSTRACT: In order to improve the performance of classifiers in subjective domains, this paper defines a metric to measure the quality of the subjectively labelled training data (QoSTD) by means of K-means clustering. Then, the QoSTD is used as a weight of the predicted class scores to adjust the likelihoods of instances. Moreover, two measurements are defined to assess the performance of the classifiers trained by the subjective labelled data. The binary classifiers of Traditional Chinese Medicine (TCM) Zhengs are trained and retrained by the real-world data set, utilizing the support vector machine (SVM) and the discrimination analysis (DA) models, so as to verify the effectiveness of the proposed method. The experimental results show that the consistency of likelihoods of instances with the corresponding observations is increased notable for the classes, especially in the cases with the relatively low QoSTD training data set. The experimental results also indicate the solution how to eliminate the miss-labelled instances from the training data set to re-train the classifiers in the subjective domains.