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S2A3: Thompson Sampling and Stochastic Exposure Control for High-Stakes CATs

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High-stakes computerized adaptive tests (CATs) require a continuous supply of calibrated items, yet traditional item piloting is slow, expensive, and operationally hazardous. We introduce the S2A3 framework -- Soft Scoring (S2) and Adaptive Adaptive Administration (A3) -- which unifies item calibration and test administration into a single online process. Thompson sampling enhances item selection by drawing provisional parameters from each item's posterior distribution and selecting the item maximizing expected Fisher information, naturally routing uncertain items to informative test-takers while maintaining measurement precision. Soft scoring integrates over parameter uncertainty so that incompletely calibrated items exert appropriately attenuated influence on ability estimates. A stochastic variant of Sympson-Hetter exposure control balances measurement efficiency against bank security via a tunable temperature parameter and item-specific weights. We validate S2A3 on Yes/No Vocabulary and Vocabulary-in-Context tasks from the Duolingo English Test, demonstrating rapid item calibration and preserved scoring reliability even when cold-start items constitute a significant fraction of the active pool.

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