Estimating a time series of temporary employment using a combination of survey and register data

Q3 Decision Sciences Statistical Journal of the IAOS Pub Date : 2023-01-05 DOI:10.3233/sji-210886
N. Mushkudiani, J. Pannekoek
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Abstract

In this paper we investigate the application of macro-integration methods to combine two sources of labor force statistics: a survey and an administrative source. In particular, we aim to arrive at a single estimate of the time series of temporary employment that efficiently combines the information from both sources. By varying the specifications of the objective function and constraints, four different macro-integration models were defined. The most plausible results were of a model that treats neither of the sources as fixed and uses multiplicative adjustments. The results were compared with the previous research where a latent Markov model was used to estimate the same time series. This Markov model approach does not lead to very different estimates of the time-series of temporary (or permanent) employment contracts but results in smaller estimates of the proportion of “movers”, persons that change contract status from temporary to permanent or the other way around. The model-based approach also provides estimates of the measurement errors in each of the sources. On the other hand, the macro-integration approach is less restrictive in the sense that it does not impose a Markov property of the integrated times series of proportions and it is more easy to implement.
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结合调查和登记数据估算临时就业的时间序列
本文探讨了运用宏观整合方法将调查和行政两种劳动力统计来源结合起来的问题。特别是,我们的目标是有效地结合两个来源的信息,得出临时就业时间序列的单一估计。通过改变目标函数和约束的规格,定义了四种不同的宏观集成模型。最可信的结果是一个模型,它不把这两个来源视为固定的,而是使用乘法调整。结果与先前使用隐马尔可夫模型估计相同时间序列的研究进行了比较。这种马尔可夫模型方法不会导致对临时(或永久)雇佣合同的时间序列的非常不同的估计,但会导致对“搬运工”比例的较小估计,即将合同状态从临时变为永久或反之亦然的人。基于模型的方法还提供了对每个源的测量误差的估计。另一方面,宏观积分方法在某种意义上限制较少,因为它没有强加积分比例时间序列的马尔可夫性质,并且更容易实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Statistical Journal of the IAOS
Statistical Journal of the IAOS Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
1.30
自引率
0.00%
发文量
116
期刊介绍: This is the flagship journal of the International Association for Official Statistics and is expected to be widely circulated and subscribed to by individuals and institutions in all parts of the world. The main aim of the Journal is to support the IAOS mission by publishing articles to promote the understanding and advancement of official statistics and to foster the development of effective and efficient official statistical services on a global basis. Papers are expected to be of wide interest to readers. Such papers may or may not contain strictly original material. All papers are refereed.
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