A quick count seeks to estimate the voting trends of an election and communicate them to the population on the evening of the same day of the election. In quick counts, the sampling is based on a stratified design of polling stations. Voting information is gathered gradually, often with no guarantee of obtaining the complete sample or even information in all the strata. However, accurate interval estimates with partial information must be obtained. Furthermore, this becomes more challenging if the strata are additionally study domains. To produce partial estimates, two strategies are proposed: 1) A Bayesian model using a dynamic post-stratification strategy and a single imputation process defined after a thorough analysis of historic voting information. Additionally, a credibility level correction is included to solve the underestimation of the variance; 2) a frequentist alternative that combines standard multiple imputation ideas with classic sampling techniques to obtain estimates under a missing information framework. Both solutions are illustrated and compared using information from the 2021 quick count. The aim was to estimate the composition of the Chamber of Deputies in Mexico.
翻译:快速计票的目的是估计选举的投票趋势,并在选举当日同一天晚上将其告知民众; 快速计票,抽样以投票站的分层设计为基础; 逐步收集投票信息,往往不能保证获得完整的抽样,甚至所有阶层的信息; 然而,必须获得准确的间隔估计数,并附上部分信息; 此外,如果阶层是额外的研究领域,则这更具挑战性; 为了提出部分估计,提出了两项战略:(1) 采用动态批准后战略的巴耶西亚模式和经过彻底分析历史选举信息后界定的单一计算过程; 此外,列入可信度等级校正,以解决对差异的低估问题; (2) 将标准多重估计想法与典型抽样技术相结合,以获得缺失的信息框架下的估计数; 说明两种解决办法,并利用2021年快速计数中的信息进行比较; 目的是估计墨西哥众议院的组成。