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

  1. Smooth Partial Lotteries for Stable Randomized Selection

    Researchers have developed a new method for stable randomized selection in competitive processes, such as funding or hiring. Their approach, termed the Clipped Linear Lottery, introduces a "smoothness" principle to ensure that minor score changes do not drastically alter selection probabilities. This method scales probabilities linearly between acceptance and rejection thresholds, offering a better tradeoff between stability and utility compared to existing lottery designs, as demonstrated by experiments on real-world peer review data. AI

    Smooth Partial Lotteries for Stable Randomized Selection

    IMPACT Introduces a more stable and predictable method for randomized selection, potentially improving fairness in AI-driven hiring and funding processes.