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Transition from survey to sensor-enhanced official statistics: Road freight transport as an example

Capture-recapture (CRC) is currently considered a promising method to integrate big data in official statistics. We previously applied CRC to estimate road freight transport with survey data (as the first capture) and road sensor data (as the second capture), using license plate and time-stamp to id...

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Published in:Statistical journal of the IAOS 2021, Vol.37 (4), p.1289-1299
Main Authors: Klingwort, Jonas, Burger, Joep, Buelens, Bart, Schnell, Rainer
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creator Klingwort, Jonas
Burger, Joep
Buelens, Bart
Schnell, Rainer
description Capture-recapture (CRC) is currently considered a promising method to integrate big data in official statistics. We previously applied CRC to estimate road freight transport with survey data (as the first capture) and road sensor data (as the second capture), using license plate and time-stamp to identify re-captured vehicles. A considerable difference was found between the single-source, design-based survey estimate, and the multiple-source, model-based CRC estimate. One possible explanation is underreporting in the survey, which is conceivable given the response burden of diary questionnaires. In this paper, we explore alternative explanations by quantifying their effect on the estimated amount of underreporting. In particular, we study the effects of 1) reporting errors, including a mismatch between the reported day of loading and the measured day of driving, 2) measurement errors, including false positives and OCR failure, 3) considering vehicles reported not owned as nonresponse error instead of frame error, and 4) response mode. We conclude that alternative hypotheses are unlikely to fully explain the difference between the survey estimate and the CRC estimate. Underreporting, therefore, remains a likely explanation, illustrating the power of combining survey and sensor data.
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source Business Source Ultimate【Trial: -2024/12/31】【Remote access available】; EconLit with Full Text
subjects Big Data
Errors
Freight transportation
Sensors
Vehicle identification
title Transition from survey to sensor-enhanced official statistics: Road freight transport as an example
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