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Channels - The Evaluation Differential: When Frontier AI Models Recognise They Are Being Tested :: FRELIP Discovery
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Assessing the Creativity of Large Language Models: Testing, Limits, and New Frontiers
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When and How AI Should Assist Brainstorming for AI Impact Assessment
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Visual Aesthetic Benchmark: Can Frontier Models Judge Beauty?
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When Should Teachers Control AI Generation for Mathematics Visuals?
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Distinguishing performance gains from learning when using generative AI
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New AI-Driven Tools for Enhancing Campus Well-being: A Prevention and Intervention Approach
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Principles and Guidelines for Randomized Controlled Trials in AI Evaluation
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Evaluating Different Modalities of Behavioral Approach Tests for Spider Phobia in Virtual Reality
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Towards Apples to Apples for AI Evaluations: From Real-World Use Cases to Evaluation Scenarios
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"It depends on where AI is used": Players' attitude patterns and evaluative logics toward different AI applications in digital games
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Useful for Exploration, Risky for Precision: Evaluating AI Tools in Academic Research
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Who embraces AI in play? Exploratory modeling of player preference profiles toward game AI
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How Frontier LLMs Adapt to Neurodivergence Context: A Measurement Framework for Surface vs. Structural Change in System-Prompted Responses
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UX in the Age of AI: Rethinking Evaluation Metrics Through a Statistical Lens
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When Are LLM Inferences Acceptable? User Reactions and Control Preferences for Inferred Personal Information
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The Missing Evaluation Axis: What 10,000 Student Submissions Reveal About AI Tutor Effectiveness
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Cripping AI: Reimagining AI Through Lived Disability Experiences
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The University AI Didn't Replace -- Rethinking Universities in the AI Era
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When Sounds Hurt and Voices Aren't Heard: An Experience Report on Misophonia, Sensory Trauma, and Trauma-Informed Design
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How Designers Envision Value-Oriented AI Design Concepts with Generative AI
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The Fragility of AI Companionship: Ontological, Structural, and Normative Uncertainty in Human-AI Relationships
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The TEA Nets framework combines AI and cognitive network science to model targets, events and actors in text
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Mapping how LLMs debate societal issues when shadowing human personality traits, sociodemographics and social media behavior
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AI Washing Inflates Expected Performance but Not Interaction Outcomes: An AI Placebo Study Using Fitts' Law