Modeling Behavior and Designing Evidence-Based Technologies: What We Can Learn for Empirical Data

M. Avraamides
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Abstract

To be effective, modern technological applications should take into account the needs, preferences, capabilities, and limitations of human users. In recent years, this requirement has made more imperative the need to understand in more detail the human cognition and its constraints. Cognitive processes and their underlying neural substrates are traditionally investigated with laboratory studies that yield data of different forms, ranging from accuracy and reaction time data in behavioural experiments to electrophysiological responses and neuro-imaging data in neuroscience studies. But how do such data enable psychologists and other scientists to draw conclusions about cognition? Also, how can the extracted knowledge be exploited for the design of evidence-based smart systems and innovative technologies? In this talk, I will address these questions by drawing examples from my research that employs various methods and techniques, including behavioural experiments in Virtual Reality, eye-tracking, and physiological recordings. Although most of this research focuses on how people attend, perceive, and memorize spatial information, studies investigating more general cognitive mechanisms (e.g., selective attention and executive functions) will be also presented.
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行为建模和基于证据的技术设计:我们可以从经验数据中学到什么
为了有效,现代技术应用应该考虑到人类用户的需要、偏好、能力和限制。近年来,这一需求使得更详细地了解人类认知及其约束的需求变得更加迫切。认知过程及其潜在的神经基质传统上是通过实验室研究来研究的,这些研究产生了不同形式的数据,从行为实验中的准确性和反应时间数据到神经科学研究中的电生理反应和神经成像数据。但是,这些数据是如何使心理学家和其他科学家得出关于认知的结论的呢?此外,如何利用提取的知识来设计基于证据的智能系统和创新技术?在这次演讲中,我将通过从我的研究中引用例子来解决这些问题,这些研究采用了各种方法和技术,包括虚拟现实中的行为实验、眼动追踪和生理记录。虽然大多数研究集中在人们如何参与、感知和记忆空间信息,但研究更一般的认知机制(例如,选择性注意和执行功能)也将被提出。
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