| WP1 | Pilot Study Theme | Pilot Study Paper | Presentation |
|---|
| Work Package (WP) 1 - Pilot Studies Executive Summary Report (to be updated) | | Mexico - Occupation and Economic activity coding using natural language processing | Presentation (April 2020) |
Canada - Industry and Occupation Coding | Presentation (April 2020) |
Belgium Flanders - Sentiment Analysis of twitter data | Presentation (April 2020) |
Serbia - Coding textually described data on economic activity collected from Labour Force Survey | Presentation (April 2020) |
USA - Coding Workplace Injury and Illness | Presentation (April 2020) |
Poland - Production description to ECOICOP |
|
IMF - Automated Coding using the IMF’s Catalog of Time Series | Presentation (April 2020) |
Iceland - Automatic coding of occupation and industry in social statistical surveys | Presentation (April 2020) |
Norway - Standard Industrial Code Classification by Using Machine Learning | Presentation (April 2020) |
| Italy - Imputation of the variable “Attained Level of Education” in Base Register of Individuals | Presentation (April 2020) |
Poland - Imputation in the sample survey on participation of Polish residents in trips | Presentation (April 2020) |
Germany - Machine learning for imputation | Presentation (April 2020) |
Belgium VITO - Early estimates of energy balance statistics using machine learning | Presentation (April 2020) |
UK - Editing of Living Cost and Food Survey Income data | Presentation (April 2020) |
Italy - Editing in the Italian Register of the Public Administration | Presentation (April 2020) |
Italy - Machine Learning for Data Editing Cleaning in NSI : Some ideas and hints |
|
| Australia - Address Register Automated Image Recognition (AIR) model |
|
Netherlands - Learning statistical information from images: a proof of concept |
|
Switzerland - Arealstatistik Deep Learning (ADELE) |
|
Mexico - Use of Landsat satellite data for the mapping of urban areas in non-census years |
|
UNECE - Generic Pipeline for Production of Official Statistics Using Satellite Data and Machine Learning |
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