Papers by Stephanie Wang

5 papers
Can language models learn from explanations in context? (2022.findings-emnlp)

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Challenge: Language Models can adapt to a few in-context examples, but without training.
Approach: They examine how explanations of few-shot examples can help Language Models (LMs) explanations can improve performance even without tuning, they find .
Outcome: The proposed explanations outperform hand-tuned explanations on small validation sets.
PsychEthicsBench: Evaluating Large Language Models Against Australian Mental Health Ethics (2026.findings-acl)

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Challenge: Mental disorders affect nearly one in seven people worldwide, yet the vast majority do not receive adequate care.
Approach: They propose a framework to evaluate LLMs' ethical knowledge and behavioral responses through multiple-choice and open-ended tasks with fine-grained ethicality annotations.
Outcome: Empirical results across 14 models reveal that refusal rates are poor indicators of ethical behavior, revealing a significant divergence between safety triggers and clinical appropriateness.
PATIENT-πœ“: Using Large Language Models to Simulate Patients for Training Mental Health Professionals (2024.emnlp-main)

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Challenge: Mental illness remains one of the most critical public health issues.
Approach: They propose a patient simulation framework for cognitive behavior therapy training that uses large language models to act as a simulated therapy patient.
Outcome: The proposed framework improves the skill acquisition and confidence of mental health trainees beyond textbooks, videos, and role-play with non-patients.
Training Classifiers with Natural Language Explanations (P18-1)

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Challenge: a semantic parser converts explanations into programmatic labeling functions . a standard protocol for obtaining a labeled dataset provides only one bit of information per example .
Approach: They propose a framework where an annotator provides an explanation for each labeling decision . they use a semantic parser to convert these explanations into programmatic labeling functions .
Outcome: The proposed framework trains classifiers faster by providing explanations instead of labels . the proposed framework is based on a rule-based semantic parser .
CHiRPE: A Step Towards Real-World Clinical NLP with Clinician-Oriented Model Explanations (2026.eacl-short)

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Challenge: Psychotic disorders are a major contributor to the global health burden due to their relatively high mortality risk.
Approach: They propose an NLP pipeline that takes semi-structured clinical interviews to predict psychosis risk and generate novel SHAP explanation formats.
Outcome: The proposed pipeline outperforms baseline models and achieves 90% accuracy across three BERT variants.

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