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Sets of Half-Average Nulls Generate Risk-Limiting Audits: SHANGRLA

机译:SHANGRI LA:半平均空值集生成风险限制审核

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Risk-limiting audits (RLAs) for many social choice functions can be reduced to testing sets of null hypotheses of the form "the average of this list is not greater than 1/2" for a collection of finite lists of nonnegative numbers. Such social choice functions include majority, super-majority, plurality, multi-winner plurality, Instant Runoff Voting (IRV), Borda count, approval voting, STAR-Voting, among others. The audit stops without a full hand count iff all the null hypotheses are rejected. The nulls can be tested in many ways. Ballot polling is particularly simple; two new ballot-polling risk-measuring functions for sampling without replacement are given. Ballot-level comparison audits transform each null into an equivalent assertion that the mean of re-scaled tabulation errors is not greater than 1/2. In turn, that null can then be tested using the same statistical methods used for ballot polling-applied to different finite lists of nonnegative numbers. The SHANGRLA approach thus reduces auditing different social choice functions and different audit methods to the same simple statistical problem. Moreover, SHANGRLA comparison audits are more efficient than previous comparison audits for two reasons: (i) for most social choice functions, the conditions tested are both necessary and sufficient for the reported outcome to be correct, while previous methods tested conditions that were sufficient but not necessary, (ⅱ) the tests avoid a conservative approximation. The SHANGRLA abstraction simplifies stratified audits, including audits that combine ballot polling with ballot-level comparisons, producing sharper audits than the "SUITE" approach. SHANGRLA works with the "phantoms to evil zombies" strategy to treat missing ballot cards and missing or redacted cast vote records. That also facilitates sampling from "ballot-style manifests," which can dramatically improve efficiency when the audited contests do not appear on every ballot card. Open-source software implementing SHANGRLA ballot-level comparison audits is available. SHANGRLA was tested in a process pilot audit of an instant-runoff contest in San Francisco, CA, in November, 2019.
机译:对于许多社交选择功能的风险限制审计(RLA)可以减少到表单的NULL假假设的测试集“此列表的平均值不大于1/2”,用于非负编号的有限列表集合。这种社交选择功能包括多数,超级大多数,多元,多重胜利,即时径流投票(IRV),BORDA计数,批准投票,明星投票等。审计停止无完整的手机计数IFF拒绝所有NULL假设。可以在多种方式测试空。投票轮询尤为简单;给出了用于在不替换的情况下进行抽样的两个新的投票风险测量功能。投票级比较审核将每个NULL转换为等效的断言,即重新缩放的列表错误的平均值不大于1/2。反过来,然后可以使用用于选票投票的相同统计方法进行测试 - 应用于不同的非负数列表的相同统计方法。因此,香格拉尔方法减少了审计不同的社交选择功能和不同的审计方法到同样的简单统计问题。此外,Shangrla比较审计的效率比以前的比较审计更有效:(i)对于大多数社交选择功能,所测试的条件都是必要的,并且对于报告的结果是正确的,而先前的方法测试了足够的条件不需要,(Ⅱ)测试避免了保守逼近。香格拉抽象简化了分层审计,包括将投票轮询与投票级别比较相结合的审核,这些审计比“套件”方法产生更清晰的审核。香格拉与“幽灵到邪恶的僵尸”战略合作,以治疗缺失的投票卡和缺失或减少投票记录。这也有助于从“投票式表现”中取样,这在审计的竞赛不会出现在每个投票卡上时,这可以大大提高效率。实现Shangra Ballot-Level比较审核的开源软件可用。 2019年11月,在旧金山,加利福尼亚州旧金山的即时径流竞赛中进行了测试的Shangrla。

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