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Published:2026/1/7 3:21:44

信頼を数式で解析!IT業界をアゲる新技術✨

最新論文をギャルが解説しちゃうよ~! IT企業の未来を明るくする、激アツ研究だよ!

超要約:協調と競争の世界で、信頼を計算式にしてビジネスを最強にする方法を発見したってコト💖

ギャル的キラキラポイント

● 信頼を数値化(数値か)して、ビジネスの未来を予測するんだって! 未来が見えちゃうなんて、マジ卍じゃん? ● 過去のデータから、信頼がどう変化するかを計算! 過去から未来が読めるって、占いみたいで面白~い🔮 ● ルノー・日産アライアンスの事例で、その計算がマジで合ってるか検証済み! 実用性もバッチリってコト!

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Computational Foundations for Strategic Coopetition: Formalizing Trust and Reputation Dynamics

Vik Pant / Eric Yu

Modern socio-technical systems increasingly involve multi-stakeholder environments where actors simultaneously cooperate and compete. These coopetitive relationships exhibit dynamic trust evolution based on observed behavior over repeated interactions. While conceptual modeling languages like i* represent trust relationships qualitatively, they lack computational mechanisms for analyzing how trust changes with behavioral evidence. Conversely, computational trust models from multi-agent systems provide algorithmic updating but lack grounding in conceptual models that capture strategic dependencies covering mixed motives of actors. This technical report bridges this gap by developing a computational trust model that extends game-theoretic foundations for strategic coopetition with dynamic trust evolution. Building on companion work that achieved 58/60 validation (96.7%) for logarithmic specifications, we introduce trust as a two-layer system with immediate trust responding to current behavior and reputation tracking violation history. Trust evolves through asymmetric updating where cooperation builds trust gradually while violations erode it sharply, creating hysteresis effects and trust ceilings that constrain relationship recovery. We develop a structured translation framework enabling practitioners to instantiate computational trust models from i* dependency networks encompassing mixed motives of actors. Comprehensive experimental validation across 78,125 parameter configurations establishes robust emergence of negativity bias, hysteresis effects, and cumulative damage amplification. Empirical validation using the Renault-Nissan Alliance case study (1999-2025) achieves 49/60 validation points (81.7%), successfully reproducing documented trust evolution across five distinct relationship phases including crisis and recovery periods.

cs / cs.MA / cs.AI / cs.SE