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Responsible LLM Deployment for High-Stake Decisions by Decentralized Technologies and Human-AI Interactions

Responsible LLM Deployment for High-Stake Decisions by Decentralized Technologies and Human-AI Interactions ArXiv ID: 2512.04108 “View on arXiv” Authors: Swati Sachan, Theo Miller, Mai Phuong Nguyen Abstract High-stakes decision domains are increasingly exploring the potential of Large Language Models (LLMs) for complex decision-making tasks. However, LLM deployment in real-world settings presents challenges in data security, evaluation of its capabilities outside controlled environments, and accountability attribution in the event of adversarial decisions. This paper proposes a framework for responsible deployment of LLM-based decision-support systems through active human involvement. It integrates interactive collaboration between human experts and developers through multiple iterations at the pre-deployment stage to assess the uncertain samples and judge the stability of the explanation provided by post-hoc XAI techniques. Local LLM deployment within organizations and decentralized technologies, such as Blockchain and IPFS, are proposed to create immutable records of LLM activities for automated auditing to enhance security and trace back accountability. It was tested on Bert-large-uncased, Mistral, and LLaMA 2 and 3 models to assess the capability to support responsible financial decisions on business lending. ...

November 28, 2025 · 2 min · Research Team

Alpha-GPT 2.0: Human-in-the-Loop AI for Quantitative Investment

Alpha-GPT 2.0: Human-in-the-Loop AI for Quantitative Investment ArXiv ID: 2402.09746 “View on arXiv” Authors: Unknown Abstract Recently, we introduced a new paradigm for alpha mining in the realm of quantitative investment, developing a new interactive alpha mining system framework, Alpha-GPT. This system is centered on iterative Human-AI interaction based on large language models, introducing a Human-in-the-Loop approach to alpha discovery. In this paper, we present the next-generation Alpha-GPT 2.0 \footnote{“Draft. Work in progress”}, a quantitative investment framework that further encompasses crucial modeling and analysis phases in quantitative investment. This framework emphasizes the iterative, interactive research between humans and AI, embodying a Human-in-the-Loop strategy throughout the entire quantitative investment pipeline. By assimilating the insights of human researchers into the systematic alpha research process, we effectively leverage the Human-in-the-Loop approach, enhancing the efficiency and precision of quantitative investment research. ...

February 15, 2024 · 2 min · Research Team