We consider sequential hypothesis testing between two quantum states using adaptive and non-adaptive strategies. In this setting, samples of an unknown state are requested sequentially and a decision to either continue or to accept one of the two hypotheses is made after each test. Under the constraint that the number of samples is bounded, either in expectation or with high probability, we exhibit adaptive strategies that minimize both types of misidentification errors. Namely, we show that these errors decrease exponentially (in the stopping time) with decay rates given by the measured relative entropies between the two states. Moreover, if we allow joint measurements on multiple samples, the rates are increased to the respective quantum relative entropies. We also fully characterize the achievable error exponents for non-adaptive strategies and provide numerical evidence showing that adaptive measurements are necessary to achieve our bounds under some additional assumptions.
翻译:我们考虑使用适应性和非适应性战略对两个量子国家进行顺序假设测试。 在这一背景下,对未知状态的样本按顺序要求,并在每次测试后决定继续或接受两种假设中的一种。由于样本数量受约束的限制,不管是预期的还是概率很高的,我们展示了适应性战略,最大限度地减少两种类型的错误识别错误。也就是说,我们显示这些错误(在停顿时间)随着两个州之间测量的相对活性衰减率而指数性地下降。此外,如果我们允许对多个样本进行联合测量,这些率将提高到各自的量子相对活性。我们还充分描述非适应性战略中可实现的误差指数,并提供数字证据表明,根据一些额外的假设,适应性测量对于达到我们的界限是必要的。