Abstract

Get full access to this article
View all access options for this article.
References
1.Ring I, Connolly M, Waldon J, et al. Indigenous health data and international recommendations for national planning and data governance. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261430897 .
2.Willis-Núñez F and Núñez JF. From principles to practice: Embedding human rights in the production of Indigenous data and statistics. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261445836 .
3.Tractenberg RE and Thornton S. No less than fit for purpose: Embedding co-design in ethical statistical practice for indigenous and other communities . Stat J IAOS 2026.
4.Salgado Naime FY. Statistical visibility of Indigenous People in Mexico*. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261416015 .
5.Guillaume R-M. Data ethics: Lessons from situationism for a National Statistical Organization. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261439346 .
6.Ulrich G-S and Schütz S. The evolving role of Official Statistics in the digital era—the case of Switzerland. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261439347 .
7.Di Gennaro Splendore L. From national statistical office to state data agency: The Lithuanian experience as a test case for NSO-led data governance. Stat J IAOS 2026; 42: na–na .
8.Caracciolo C, Matadeen C, Gianfaldoni V, et al. Caliper: Interoperability and management of statistical classifications. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261445388 .
9.Beaurepaire C, Coquet F and Le Saout R. How data science permeates the skills network in French official statistics. Stat J IAOS 2026; 42: na–na .
10.D’Orazio M. Experiments on leveraging mobile network data for official statistics. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261445837 .
11.Tano B and Zhang L-C. Combining travel survey and mobile network operator data to produce disaggregated trip statistics. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261445838 .
12.Watambwa P, Dhliwayo L and Lepkowski J. Automating enterprise industry classifications for official statistics: Leveraging text-based similarity measures. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261433544 .
13.Smeets M, Bakker J and Meertens V. Text analysis of motivations for (not) donating smartphone sensor data. Stat J IAOS 2026;0(0) . doi:https://doi.org/10.1177/18747655261442051.
14.Diego A and Federico S. Uruguay’s 2023 combined census: Integrating administrative registers and traditional enumeration, 2026 . Stat J IAOS 2026.
15.Zebua HI, Santosa SHMB and Sudrajat. Spatio-Temporal small area estimation of subdistrict per capita expenditure: Integrating panel survey and geospatial big data. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261435168 .
16.Liu A-C, Scholtus S, Van Deun K, et al. Domain estimation from weighted nonprobability samples. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261445373
17.Czaplicki N, Xiong Y and Thompson KJ. A data dependent procedure for determining thresholds for minimum inclusion probabilities in an unequal probability sample. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261445374 .
18.Oktora SI, Matualage D, Notodiputro KA, et al. Enhancing health survey data modeling through mixed-effects machine learning: A comparative study. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261418172 .
19.Utami NR, Krismawati D, Muryawan M, et al. An AIS-Based approach for estimating greenhouse gas emissions from shipping activities in Indonesian waters. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261420815 .
20.Albis MLF, Romasoc SO, Cajipe YNI, et al. Indicator of food price anomalies for the Philippines. Stat J IAOS 2026;0(0). doi:https://doi.org/10.1177/18747655261425760 .
