🌘 [2502.03575] Chartist:任務驅動的眼動控制用於閱讀圖表
➤ 對於設計易於理解的數據可視化至關重要
https://arxiv.org/abs/2502.03575
為了設計易於理解的數據可視化,我們需要理解不同背景的人如何閱讀圖表。過去的計算模型通常僅關注凝視模式,忽略了任務的影響。本研究提出了Chartist,一個模擬用戶如何移動眼睛來從圖表中提取信息的計算模型,以執行包括值檢索、篩選和查找極值等分析任務。模型的創新之處在於其雙層階層控制架構,具有預測人類化任務驅動的掃描路徑的能力。
+ 這個模型對於未來的AI人機互動設計有會有很大的幫助。
+ 這種以任務驅動為基礎的眼動控制對於數據可視化領域的發展具有潛力。
#人機互動
Chartist: Task-driven Eye Movement Control for Chart Reading

To design data visualizations that are easy to comprehend, we need to understand how people with different interests read them. Computational models of predicting scanpaths on charts could complement empirical studies by offering estimates of user performance inexpensively; however, previous models have been limited to gaze patterns and overlooked the effects of tasks. Here, we contribute Chartist, a computational model that simulates how users move their eyes to extract information from the chart in order to perform analysis tasks, including value retrieval, filtering, and finding extremes. The novel contribution lies in a two-level hierarchical control architecture. At the high level, the model uses LLMs to comprehend the information gained so far and applies this representation to select a goal for the lower-level controllers, which, in turn, move the eyes in accordance with a sampling policy learned via reinforcement learning. The model is capable of predicting human-like task-driven scanpaths across various tasks. It can be applied in fields such as explainable AI, visualization design evaluation, and optimization. While it displays limitations in terms of generalizability and accuracy, it takes modeling in a promising direction, toward understanding human behaviors in interacting with charts.

arXiv.org