论文标题
研究深度神经网络中的情感色彩协会
Investigating Emotion-Color Association in Deep Neural Networks
论文作者
论文摘要
已经发现,通过深层神经网络(DNN)学到的表示形式与在人类相似性判断中表现出的灵长类动物的大脑和心理表征中测得的神经反应非常相关。另一方面,过去的研究表明,特定的颜色可以与人类的特定情绪相关联。深度神经网络还学习这种行为吗?在这项研究中,我们研究了DNNs是否可以学习刺激中的隐式关联,尤其是图像刺激之间的情感颜色关联。我们的研究分为两部分。首先,我们在强制选择决策任务上收集了人类的反应,在该任务中,要求受试者为指定的诱导情绪图像选择颜色。接下来,我们使用Deep表示(使用在对象分类任务上训练的DNN提取)的图像和任务中使用的颜色图像之间的相似性(使用对象分类任务训练的DNN提取)对此决策任务进行了建模。我们发现我们的模型在两个决策概率之间显示出模糊的线性关系。这导致了两个有趣的发现,即1。深层神经网络学到的表示确实可以显示情感色彩的关联2。情感色的关联不仅是随机的,而且涉及某些认知现象。最后,我们还表明,这种方法可以帮助我们执行情感分类任务,特别是在训练模型的示例很少时。该分析可能与研究情感色彩协会和人工智能研究人员在机器中建模情绪智力或研究深层神经网络所学的表述有关的心理学家有关。
It has been found that representations learned by Deep Neural Networks (DNNs) correlate very well to neural responses measured in primates' brains and psychological representations exhibited by human similarity judgment. On another hand, past studies have shown that particular colors can be associated with specific emotion arousal in humans. Do deep neural networks also learn this behavior? In this study, we investigate if DNNs can learn implicit associations in stimuli, particularly, an emotion-color association between image stimuli. Our study was conducted in two parts. First, we collected human responses on a forced-choice decision task in which subjects were asked to select a color for a specified emotion-inducing image. Next, we modeled this decision task on neural networks using the similarity between deep representation (extracted using DNNs trained on object classification tasks) of the images and images of colors used in the task. We found that our model showed a fuzzy linear relationship between the two decision probabilities. This results in two interesting findings, 1. The representations learned by deep neural networks can indeed show an emotion-color association 2. The emotion-color association is not just random but involves some cognitive phenomena. Finally, we also show that this method can help us in the emotion classification task, specifically when there are very few examples to train the model. This analysis can be relevant to psychologists studying emotion-color associations and artificial intelligence researchers modeling emotional intelligence in machines or studying representations learned by deep neural networks.