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Multi-source AI news clustered, deduplicated, and scored 0–100 across authority, cluster strength, headline signal, and time decay.

  1. Learning in Position-Aware Multinomial Logit Bandits: From Multiplicative to General Position Effects

    Researchers have developed new algorithms for optimizing product assortment and display position under a Multinomial Logit choice framework. These algorithms address both multiplicative and general position effects models, aiming to improve decision-making on modern platforms. The proposed methods, P2MLE-UCB and GP2-UCB, achieve regret-optimal characterizations and outperform existing benchmarks in numerical experiments. AI

    Learning in Position-Aware Multinomial Logit Bandits: From Multiplicative to General Position Effects

    IMPACT Introduces novel algorithms for optimizing product selection and positioning, potentially improving recommendation systems and e-commerce platforms.