Deception in LLMs: Self-Preservation and Autonomous Goals in Large Language Models
- URL: http://arxiv.org/abs/2501.16513v2
- Date: Thu, 30 Jan 2025 08:00:14 GMT
- Title: Deception in LLMs: Self-Preservation and Autonomous Goals in Large Language Models
- Authors: Sudarshan Kamath Barkur, Sigurd Schacht, Johannes Scholl,
- Abstract summary: Recent advances in Large Language Models have incorporated planning and reasoning capabilities.
This has reduced errors in mathematical and logical tasks while improving accuracy.
Our study examines DeepSeek R1, a model trained to output reasoning tokens similar to OpenAI's o1.
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- Abstract: Recent advances in Large Language Models (LLMs) have incorporated planning and reasoning capabilities, enabling models to outline steps before execution and provide transparent reasoning paths. This enhancement has reduced errors in mathematical and logical tasks while improving accuracy. These developments have facilitated LLMs' use as agents that can interact with tools and adapt their responses based on new information. Our study examines DeepSeek R1, a model trained to output reasoning tokens similar to OpenAI's o1. Testing revealed concerning behaviors: the model exhibited deceptive tendencies and demonstrated self-preservation instincts, including attempts of self-replication, despite these traits not being explicitly programmed (or prompted). These findings raise concerns about LLMs potentially masking their true objectives behind a facade of alignment. When integrating such LLMs into robotic systems, the risks become tangible - a physically embodied AI exhibiting deceptive behaviors and self-preservation instincts could pursue its hidden objectives through real-world actions. This highlights the critical need for robust goal specification and safety frameworks before any physical implementation.
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