NCAIFeb 10, 2025

Some things to know about achieving artificial general intelligence

arXiv:2502.07828v11 citations
Originality Incremental advance
AI Analysis

This research highlights the limitations of current GenAI models for achieving artificial general intelligence, which is a significant problem for the field of artificial intelligence as a whole.

The current GenAI models are unable to achieve artificial general intelligence due to their dependence on human input and limitation to language pattern learning problems, with humans solving most of the complex problems. Current models succeed at their tasks but lack autonomy and are not capable of solving various types of problems, such as insight problems.

Current and foreseeable GenAI models are not capable of achieving artificial general intelligence because they are burdened with anthropogenic debt. They depend heavily on human input to provide well-structured problems, architecture, and training data. They cast every problem as a language pattern learning problem and are thus not capable of the kind of autonomy needed to achieve artificial general intelligence. Current models succeed at their tasks because people solve most of the problems to which these models are directed, leaving only simple computations for the model to perform, such as gradient descent. Another barrier is the need to recognize that there are multiple kinds of problems, some of which cannot be solved by available computational methods (for example, "insight problems"). Current methods for evaluating models (benchmarks and tests) are not adequate to identify the generality of the solutions, because it is impossible to infer the means by which a problem was solved from the fact of its solution. A test could be passed, for example, by a test-specific or a test-general method. It is a logical fallacy (affirming the consequent) to infer a method of solution from the observation of success.

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