Apriori-based Analysis of Learned Helplessness in Mathematics Tutoring: Behavioral Patterns by Level, Intervention, and Outcome
arXiv cs.AI / 4/30/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The study uses the Apriori algorithm on mathematics tutoring log data to identify behavioral patterns linked to learned helplessness (LH), considering LH level, whether system interventions were used, and whether problems were solved.
- Across the full dataset, the most frequent unsolved-associated pattern is skipping problems without using hints, while persistence behaviors (e.g., not skipping) appear less dominant overall.
- By LH level, low-LH students show stronger relationships between problem-solving and not skipping, and hints are positively associated with solved outcomes, whereas high-LH students exhibit more avoidance, with skipping strongly linked to unsolved outcomes.
- Intervention condition comparisons indicate that students without intervention have the highest lift for persistence-success links, while the intervention group shows stronger skipping-to-unsolved patterns.
- Outcome-specific results show that not skipping consistently correlates with solved problems, while skipping without hints reliably predicts unsolved outcomes, leading to practical recommendations for tutoring design.
Related Articles
Vector DB and ANN vs PHE conflict, is there a practical workaround? [D]
Reddit r/MachineLearning

Agent Amnesia and the Case of Henry Molaison
Dev.to

Azure Weekly: Microsoft and OpenAI Restructure Partnership as GPT-5.5 Lands in Foundry
Dev.to

Proven Patterns for OpenAI Codex in 2026: Prompts, Validation, and Gateway Governance
Dev.to

Vibe coding is a tool, not a shortcut. Most people are using it wrong.
Dev.to