Synthesizing Behaviorally-Grounded Reasoning Chains: A Data-Generation Framework for Personal Finance LLMs
Abstract
A novel framework integrates financial context and behavioral finance to fine-tune a Qwen-3-8B model for personalized financial advice, achieving performance comparable to larger models with lower costs.
Personalized financial advice requires consideration of user goals, constraints, risk tolerance, and jurisdiction. Prior LLM work has focused on support systems for investors and financial planners. Simultaneously, numerous recent studies examine broader personal finance tasks, including budgeting, debt management, retirement, and estate planning, through agentic pipelines that incur high maintenance costs, yielding less than 25% of their expected financial returns. In this study, we introduce a novel and reproducible framework that integrates relevant financial context with behavioral finance studies to construct supervision data for end-to-end advisors. Using this framework, we create a 19k sample reasoning dataset and conduct a comprehensive fine-tuning of the Qwen-3-8B model on the dataset. Through a held-out test split and a blind LLM-jury study, we demonstrate that through careful data curation and behavioral integration, our 8B model achieves performance comparable to significantly larger baselines (14-32B parameters) across factual accuracy, fluency, and personalization metrics while incurring 80% lower costs than the larger counterparts.
Community
Hey HF community! 👋
TL;DR: Instead of building complex agent systems, I focused on creating high-quality training data that bakes in financial knowledge AND behavioral psychology. The result? An 8B model that competes with 27-32B baselines at ~80% lower cost.
What I did:
- Built a structured data generation framework that creates reasoning chains combining financial facts with psychological cues
- Fine-tuned Qwen-3-8B on 19k samples from this framework
- The model learns to recognize behavioral biases (loss aversion, overconfidence) and factor them into advice
Key insight: Most financial advice isn't about having real-time market data - it's about understanding the person asking the question and giving contextually appropriate guidance.
Available now:
- Model:
Akhil-Theerthala/Kuvera-8B-qwen3-v0.2.1 - Dataset:
Akhil-Theerthala/Kuvera-PersonalFinance-V2.1
Would love to hear your feedback and see what you build with it!
This is an automated message from the Librarian Bot. I found the following papers similar to this paper.
The following papers were recommended by the Semantic Scholar API
- Agentar-Fin-R1: Enhancing Financial Intelligence through Domain Expertise, Training Efficiency, and Advanced Reasoning (2025)
- Diverse And Private Synthetic Datasets Generation for RAG evaluation: A multi-agent framework (2025)
- Fin-PRM: A Domain-Specialized Process Reward Model for Financial Reasoning in Large Language Models (2025)
- Arg-LLaDA: Argument Summarization via Large Language Diffusion Models and Sufficiency-Aware Refinement (2025)
- A Role-Aware Multi-Agent Framework for Financial Education Question Answering with LLMs (2025)
- FinAgentBench: A Benchmark Dataset for Agentic Retrieval in Financial Question Answering (2025)
- User-centric Subjective Leaderboard by Customizable Reward Modeling (2025)
Please give a thumbs up to this comment if you found it helpful!
If you want recommendations for any Paper on Hugging Face checkout this Space
You can directly ask Librarian Bot for paper recommendations by tagging it in a comment:
@librarian-bot
recommend
Models citing this paper 1
Datasets citing this paper 1
Spaces citing this paper 0
No Space linking this paper