Making Sense of Scams: Understanding Scam Conversations Through Multi-Level Alignment
Zhenyu Mao, Jacky Keung, Xiangyu Li, Yicheng Sun, Kehui Chen + 2 more
TLDR
This paper introduces multi-level alignment-based hints to detect online scams in conversations, showing high-level alignment declines as scams progress.
Key contributions
- Introduces multi-level alignment-based hints for non-interruptive scam detection in conversations.
- Demonstrates high-level alignment systematically declines as conversations approach scam attempts.
- User study shows hints increase scam detection precision by 0.25 and recall by 0.16 over baselines.
- Proposed hints support earlier and more stable confidence formation, outperforming keyword alerts.
Why it matters
This research addresses the gap in detecting conversational scams by providing non-interruptive, dynamic signals. It offers a novel approach to help users make sense of scam risks, improving early detection and user confidence. This could lead to more effective and less disruptive scam prevention tools.
Original Abstract
Online scams often unfold gradually through interaction, yet existing detection systems predominantly rely on snapshot-based signals and interruptive warnings, revealing two research gaps in the lack of signals that represent scam risk within conversational dynamics and the underexplored design of non-interruptive interaction. To address these gaps, we introduce multi-level alignment-based hints, informed by the Interactive Alignment Model, as a new detection signal for supporting sensemaking in scam-related conversations. These hints operationalize low-level lexical and syntactic alignments and high-level semantic and situation-model alignments between conversational participants, making conversational dynamics visible to users. We first conduct a preliminary evaluation on real-life scam dialogues, showing that as conversations approach scam attempts, low-level alignment scores remain stable while high-level alignment scores systematically decline, revealing a consistent cross-level pattern indicative of scam progression. Building on this insight, we conduct a user study with thirty participants, indicating that relative to the no-hint baseline, multi-level alignment-based hints increase precision by 0.25, recall by 0.16, and F1 score by 0.21, yielding substantially larger gains than the marginal improvements achieved by keyword-triggered alerts. Statistical analyses reveal that the proposed hints support earlier and more stable confidence formation over time, with ablation results further highlighting the effectiveness of combining alignment hints across levels in achieving these advantages.
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