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Turing Test 2.0: The General Intelligence Threshold

Created by
  • Haebom

Author

Georgios Mappouras

Outline

This paper discusses the race to achieve artificial general intelligence (AGI) triggered by advances in artificial intelligence (AI) and large-scale language models. We point out that existing intelligence measures such as the Turing Test are inadequate for detecting AGI, and propose a new practical method to determine AGI. This includes establishing a clear definition of general intelligence (GI), a GI threshold (GIT), and proposing a simple and comprehensive Turing Test 2.0 framework to determine whether a system has achieved GI. Finally, we present a real-world example of applying the Turing Test 2.0 framework to a modern AI model.

Takeaways, Limitations

Takeaways: Contributes to solving the difficulty of AGI determination by proposing a new framework for AGI detection, "Turing Test 2.0". Provides a clear definition and measurable threshold for general intelligence. Demonstrates the practicality of the framework through application cases to real AI models.
Limitations: Further validation of the proposed GI definition and the objectivity and universality of GIT is needed. In-depth research on the practical applicability and limitations of the Turing Test 2.0 framework is needed. Further analysis of the test results and limitations for various types of AI models is needed. There is a lack of discussion on the ethical implications of the proposed framework.
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