HCAICLIRMar 31

Semantic Interaction for Narrative Map Sensemaking: An Insight-based Evaluation

arXiv:2603.2965110.5
Predicted impact top 86% in HC · last 90 daysOriginality Incremental advance
AI Analysis

This work provides empirical evidence for improving narrative sensemaking tools for analysts, though it is incremental as it builds on existing SI frameworks.

The paper tackled the problem of evaluating semantic interaction (SI) for narrative map sensemaking by conducting a user study with 33 participants, finding that map-based prototypes yielded more insights than a timeline baseline, with the SI-enabled condition showing the highest mean performance and reaching statistical significance.

Semantic interaction (SI) enables analysts to incorporate their cognitive processes into AI models through direct manipulation of visualizations. While SI frameworks for narrative extraction have been proposed, empirical evaluations of their effectiveness remain limited. This paper presents a user study that evaluates SI for narrative map sensemaking, involving 33 participants under three conditions: a timeline baseline, a basic narrative map, and an interactive narrative map with SI capabilities. The results show that the map-based prototypes yielded more insights than the timeline baseline, with the SI-enabled condition reaching statistical significance and the basic map condition trending in the same direction. The SI-enabled condition showed the highest mean performance; differences between the map conditions were not statistically significant but showed large effect sizes (d > 0.8), suggesting that the study was underpowered to detect them. Qualitative analysis identified two distinct SI approaches-corrective and additive-that enable analysts to impose quality judgments and organizational structure on extracted narratives. We also find that SI users achieved comparable exploration breadth with less parameter manipulation, suggesting that SI serves as an alternative pathway for model refinement. This work provides empirical evidence that map-based representations outperform timelines for narrative sensemaking, along with qualitative insights into how analysts use SI for narrative refinement.

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