Enterprise AI Analysis
Clarifying or Complicating?: Understanding Older Adults' Engagement with Real-World XAI in E-Commerce
This study investigates how older adults perceive and interact with explainable AI (XAI) features in real-world e-commerce. Findings reveal that XAI's effectiveness is not uniform, with many older adults overlooking or misunderstanding explanation features. Global explanations elicited polarized responses, while local explanations grounded in user behavior recalibrated skepticism. A user-model dashboard exposed tensions between empowerment and surveillance. We propose actionable design strategies for inclusive and adaptive XAI systems.
Executive Impact
Quantifiable insights into how tailored XAI solutions can transform user experience and operational efficiency for enterprises.
Deep Analysis & Enterprise Applications
Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.
Awareness: Invisible vs. Seen-but-Ignored
Many older adults did not notice personalized recommendations or explanation features, often mistaking them for generic advertising. This highlights a need for clearer visual differentiation and explicit signaling of personalization.
Evaluation: System-Level Awareness vs. Item-Level Judgment
Global explanations provided system-level understanding but did not help with concrete item-level judgments, leading to polarized trust. Local explanations, however, allowed for better relevance assessment.
Transparency: Seeking Control vs. Feeling Exposed
The user-model dashboard improved understanding and a sense of control for some, while others felt exposed by the extent of data collection. Transparency needs to be an adjustable interface for intervention, not an all-or-nothing reveal.
Enterprise Process Flow: Older Adults' XAI Engagement
| Tension | Our Approach (Design Strategy) | Traditional Approach (Common Issues) |
|---|---|---|
| Awareness |
|
|
| Evaluation |
|
|
| Transparency |
|
|
Understanding XAI Engagement: A Deeper Look
This study revealed that older adults' engagement with Explainable AI (XAI) features in e-commerce is complex and non-uniform. While some found explanations helpful for understanding and control, others overlooked them or interpreted them as marketing.
Key Highlights:
- XAI not uniformly beneficial: The same features had different impacts on different users.
- Polarized trust responses: Global explanations could either foster authority-based trust or increase skepticism.
- Need for adaptive design strategies: XAI must be aligned with users' capacities, goals, and comfort boundaries.
Calculate Your Potential AI ROI
Estimate the efficiency gains and cost savings your enterprise could achieve with a tailored AI implementation.
ROI Projection
Estimated Annual Gains
Your AI Implementation Roadmap
A clear path to integrating advanced AI solutions into your enterprise, designed for measurable results.
Discovery & Strategy
In-depth analysis of current systems, identifying key pain points and opportunities for AI integration. Defining clear objectives and KPIs.
Pilot & Prototyping
Develop and test AI prototypes on a smaller scale. Gather feedback, refine models, and demonstrate tangible value with minimal disruption.
Full-Scale Deployment
Seamless integration of proven AI solutions across your enterprise infrastructure. Comprehensive training and ongoing support.
Optimization & Scaling
Continuous monitoring, performance optimization, and identification of new areas for AI expansion to maximize long-term ROI.
Ready to Transform Your Enterprise with AI?
Schedule a personalized consultation with our AI experts to explore how our solutions can drive your business forward.