超要約: LLM(大規模言語モデル)の「人工年齢」で、AIを賢くコントロールしちゃお!🚀
ギャル的キラキラポイント✨ ● LLMの「老化」(劣化)を数値化!まるで人間みたい?😳 ● 「モナド句構造」っていう、LLMの頭の中を覗ける魔法の設計図🪄 ● 教育、医療、金融…色んな分野でAIがもっと頼れる存在になるかも💖
詳細解説 背景 最近のAIはスゴイけど、中身はブラックボックス🗃️。どう動いてるか分かんないと、変なことしだすかも…😱 そこで、AIの「年齢」に注目👀!
方法 AIの「人工年齢スコア(AAS)」ってので、AIの頭の劣化具合をチェック✨。そして「モナド句構造」っていう設計図で、AIの思考回路を整理整頓!まるで、頭の中を大掃除🧹
続きは「らくらく論文」アプリで
Large language models (LLMs) are often deployed as powerful yet opaque systems, leaving open how their internal memory and "self-like" behavior should be governed in a principled and auditable way. The Artificial Age Score (AAS) was previously introduced and mathematically justified through three theorems that characterise it as a metric of artificial memory aging. Building on this foundation, the present work develops an engineering-oriented, clause-based architecture that imposes law-like constraints on LLM memory and control. Twenty selected monads from Leibniz's Monadology are grouped into six bundles: ontology, dynamics, representation and consciousness, harmony and reason, body and organisation, and teleology, and each bundle is realised as an executable specification on top of the AAS kernel. Across six minimal Python implementations, these clause families are instantiated in numerical experiments acting on channel-level quantities such as recall scores, redundancy, and weights. Each implementation follows a four-step pattern: inputs and setup, clause implementation, numerical results, and implications for LLM design, emphasising that the framework is not only philosophically motivated but also directly implementable. The experiments show that the clause system exhibits bounded and interpretable behavior: AAS trajectories remain continuous and rate-limited, contradictions and unsupported claims trigger explicit penalties, and hierarchical refinement reveals an organic structure in a controlled manner. Dual views and goal-action pairs are aligned by harmony terms, and windowed drift in perfection scores separates sustained improvement from sustained degradation. Overall, the monad-based clause framework uses AAS as a backbone and provides a transparent, code-level blueprint for constraining and analyzing internal dynamics in artificial agents.