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AGIの定義:汎用人工知能への道標
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ポイント
- AGIを定義する定量的なフレームワークを導入し、人間の認知能力との比較を可能にした。
- 既存のAIは知識領域では高い能力を示す一方、長期記憶などの基礎的な認知能力に課題が残る。
- GPT-4やGPT-5などのモデルを評価し、AGIスコアとして進捗と課題を定量的に示した。
Abstract
The lack of a concrete definition for Artificial General Intelligence (AGI) obscures the gap between today's specialized AI and human-level cognition. This paper introduces a quantifiable framework to address this, defining AGI as matching the cognitive versatility and proficiency of a well-educated adult. To operationalize this, we ground our methodology in Cattell-Horn-Carroll theory, the most empirically validated model of human cognition. The framework dissects general intelligence into ten core cognitive domains-including reasoning, memory, and perception-and adapts established human psychometric batteries to evaluate AI systems. Application of this framework reveals a highly "jagged" cognitive profile in contemporary models. While proficient in knowledge-intensive domains, current AI systems have critical deficits in foundational cognitive machinery, particularly long-term memory storage. The resulting AGI scores (e.g., GPT-4 at 27%, GPT-5 at 57%) concretely quantify both rapid progress and the substantial gap remaining before AGI.
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