Hassan Naderi
2025
HamRaz: A Culture-Based Persian Conversation Dataset for Person-Centered Therapy Using LLM Agents
Mohammad Amin Abbasi
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Farnaz Sadat Mirnezami
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Ali Neshati
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Hassan Naderi
Proceedings of the First on Natural Language Processing and Language Models for Digital Humanities
We present HamRaz, a culturally adapted Persian-language dataset for AI-assisted mental health support, grounded in Person-Centered Therapy (PCT). To reflect real-world therapeutic challenges, we combine script-based dialogue with adaptive large language models (LLM) role-playing, capturing the ambiguity and emotional nuance of Persian-speaking clients. We introduce HamRazEval, a dual-framework for assessing conversational and therapeutic quality using General Metrics and specialized psychological relationship measures. Human evaluations show HamRaz outperforms existing baselines in empathy, coherence, and real-ism. This resource contributes to the Digital Humanities by bridging language, culture, and mental health in underrepresented communities.
2024
PsychoLex: Unveiling the Psychological Mind of Large Language Models
Mohammad Amin Abbasi
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Farnaz Sadat Mirnezami
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Hassan Naderi
Proceedings of the 1st Workshop on NLP for Science (NLP4Science)
This paper explores the intersection of psychology and artificial intelligence through the development and evaluation of specialized Large Language Models (LLMs). We introduce PsychoLex , a suite of resources designed to enhance LLMs’ proficiency in psychological tasks in both Persian and English. Key contributions include the PsychoLexQA dataset for instructional content and the PsychoLexEval dataset for rigorous evaluation of LLMs in complex psychological scenarios. Additionally, we present the PsychoLexLLaMA model, optimized specifically for psychological applications, demonstrating superior performance compared to general-purpose models. The findings underscore the potential of tailored LLMs for advancing psychological research and applications, while also highlighting areas for further refinement. This research offers a foundational step towards integrating LLMs into specialized psychological domains, with implications for future advancements in AI-driven psychological practice.