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Discrete classification technique applied to TV advertisements liking recognition system based on low-cost EEG headsets

机译:基于低成本脑电图谱的离散分类技术在电视广告喜好识别系统中的应用

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Background In this paper a new approach is applied to the area of marketing research. The aim of this paper is to recognize how brain activity responds during the visualization of short video advertisements using discrete classification techniques. By means of low cost electroencephalography devices (EEG), the activation level of some brain regions have been studied while the ads are shown to users. We may wonder about how useful is the use of neuroscience knowledge in marketing, or what could provide neuroscience to marketing sector, or why this approach can improve the accuracy and the final user acceptance compared to other works. Methods By using discrete techniques over EEG frequency bands of a generated dataset, C4.5, ANN and the new recognition system based on Ameva, a discretization algorithm, is applied to obtain the score given by subjects to each TV ad. Results The proposed technique allows to reach more than 75?% of accuracy, which is an excellent result taking into account the typology of EEG sensors used in this work. Furthermore, the time consumption of the algorithm proposed is reduced up to 30?% compared to other techniques presented in this paper. Conclusions This bring about a battery lifetime improvement on the devices where the algorithm is running, extending the experience in the ubiquitous context where the new approach has been tested.
机译:背景技术本文将一种新方法应用于营销研究领域。本文的目的是认识到使用离散分类技术在短视频广告的可视化过程中大脑活动如何响应。通过低成本的脑电图设备(EEG),研究了一些大脑区域的激活水平,同时向用户展示了广告。我们可能想知道神经科学知识在市场营销中的用途是什么,或者可以为市场营销部门提供神经科学,或者为什么与其他著作相比,这种方法可以提高准确性和最终用户的接受度。方法通过在生成的数据集的EEG频带上使用离散技术,将C4.5,ANN和基于离散化算法Ameva的新识别系统应用于获得每个电视广告的主题评分。结果所提出的技术可以达到超过75%的准确度,考虑到这项工作中使用的EEG传感器的类型,这是一个极好的结果。此外,与本文提出的其他技术相比,该算法的时间消耗最多可减少30%。结论这可以改善运行算法的设备的电池寿命,从而扩展了在已经测试了新方法的情况下的使用体验。

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