On the Role of Artificial Intelligence in Human-Machine Symbiosis
Ching-Chun Chang, Yuchen Guo, Hanrui Wang, Timo Spinde, Isao Echizen

TL;DR
This paper proposes a methodology to trace and infer the functional role of AI in human-machine natural language generation, distinguishing between assistive and creative roles.
Contribution
It introduces a novel approach to identify AI's latent role in generated content, enhancing transparency and ethical assessment of AI involvement.
Findings
Method effectively discriminates AI roles in text generation.
Approach is robust against perturbations in input.
Maintains high linguistic quality in generated content.
Abstract
The evolution of artificial intelligence (AI) has rendered the boundary between humanity and computational machinery increasingly ambiguous. In the presence of more interwoven relationships within human-machine symbiosis, the very notion of AI-generated information becomes difficult to define, as such information arises not from either humans or machines in isolation, but from their mutual shaping. Therefore, a more pertinent question lies not merely in whether AI has participated, but in how it has participated. In general, the role assumed by AI is often specified, either implicitly or explicitly, in the input prompt, yet becomes less apparent or altogether unobservable when the generated content alone is available. Once detached from the dialogue context, the functional role may no longer be traceable. This study considers the problem of tracing the functional role played by AI in…
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