从眼动到性格特征:献血广告中的机器学习方法

AI Pub Date : 2024-05-10 DOI:10.3390/ai5020034
Stefanos Balaskas, Maria Koutroumani, Maria Rigou, S. Sirmakessis
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引用次数: 0

摘要

献血在很大程度上依赖于自愿参与,但激励和留住潜在献血者的问题依然存在。了解献血者的个性特征有助于消除沟通障碍,提高参与率和保留率。为此,我们设计了一项眼动跟踪实验,以检查 75 名参与者在观看各种献血相关广告时的观看行为。这些刺激的目的是诱发各种类型的情绪(积极/消极)和信息框架(利他/利己),从而利用眼动跟踪参数(如固定持续时间、固定次数、囊状移动持续时间和囊状移动幅度)研究献血引起的认知反应。结果表明,眼动跟踪指标之间存在明显差异,这表明视觉参与对不同类型广告的反应存在很大差异。定格持续时间也显示了情绪、标识类型和情绪唤醒的巨大差异,表明刺激的性质会影响观众如何分散注意力。眼跳幅度和眼跳持续时间也受到信息框架的影响,从而表明它们与眼动行为有关。广义线性模型(GLMs)显示,人格特质效应对眼动跟踪指标有显著影响,包括诚实-谦逊与凝视持续时间之间的负相关,以及开放性与眼动持续时间和凝视次数之间的正相关。这些结果表明,性格特征会对视觉注意过程产生重大影响。本研究通过对收集到的眼动跟踪数据采用机器学习技术来识别可能影响捐赠决策和体验的人格特质,从而拓宽了当前的研究领域。通过分析参与者的眼球运动,采用分层聚类对他们的主要人格特质进行分类,同时采用机器学习算法,包括支持向量机(SVM)、随机森林(Random Forest)和k-近邻(KNN)来预测人格特质。在这些模型中,SVM 和 KNN 的准确率较高 (86.67%),而随机森林的准确率较低 (66.67%)。这项研究揭示了计算模型可以从眼动推断出人格特质,这在心理分析和人机交互方面显示出巨大的潜力。这项研究将心理学研究与机器学习结合在一起,为进一步研究通过眼动追踪进行人格评估铺平了道路。
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From Eye Movements to Personality Traits: A Machine Learning Approach in Blood Donation Advertising
Blood donation heavily depends on voluntary involvement, but the problem of motivating and retaining potential blood donors remains. Understanding the personality traits of donors can assist in this case, bridging communication gaps and increasing participation and retention. To this end, an eye-tracking experiment was designed to examine the viewing behavior of 75 participants as they viewed various blood donation-related advertisements. The purpose of these stimuli was to elicit various types of emotions (positive/negative) and message framings (altruistic/egoistic) to investigate cognitive reactions that arise from donating blood using eye-tracking parameters such as the fixation duration, fixation count, saccade duration, and saccade amplitude. The results indicated significant differences among the eye-tracking metrics, suggesting that visual engagement varies considerably in response to different types of advertisements. The fixation duration also revealed substantial differences in emotions, logo types, and emotional arousal, suggesting that the nature of stimuli can affect how viewers disperse their attention. The saccade amplitude and saccade duration were also affected by the message framings, thus indicating their relevance to eye movement behavior. Generalised linear models (GLMs) showed significant influences of personality trait effects on eye-tracking metrics, including a negative association between honesty–humility and fixation duration and a positive link between openness and both the saccade duration and fixation count. These results indicate that personality traits can significantly impact visual attention processes. The present study broadens the current research frontier by employing machine learning techniques on the collected eye-tracking data to identify personality traits that can influence donation decisions and experiences. Participants’ eye movements were analysed to categorize their dominant personality traits using hierarchical clustering, while machine learning algorithms, including Support Vector Machine (SVM), Random Forest, and k-Nearest Neighbours (KNN), were employed to predict personality traits. Among the models, SVM and KNN exhibited high accuracy (86.67%), while Random Forest scored considerably lower (66.67%). This investigation reveals that computational models can infer personality traits from eye movements, which shows great potential for psychological profiling and human–computer interaction. This study integrates psychology research and machine learning, paving the way for further studies on personality assessment by eye tracking.
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