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 <datafield tag="088" ind1="" ind2="">
  <subfield code="a">Kukic_STRC2023</subfield> 
  </datafield>
<datafield tag="909" ind1="C" ind2="0">
<subfield code="p">TRANSP-OR</subfield>
</datafield>
<datafield tag="980" ind1="" ind2="">
<subfield code="a">TALK</subfield>
</datafield>
 <datafield tag="700" ind1="" ind2="">
  <subfield code="a">Kukic, Marija</subfield> 
  </datafield>
 <datafield tag="700" ind1="" ind2="">
  <subfield code="a">Bierlaire, Michel</subfield> 
  </datafield>
<datafield tag="245" ind1="" ind2="">
<subfield code="a">
Hybrid Simulator for Capturing Dynamics of Synthetic Population</subfield>
</datafield>
<datafield tag="260" ind1="" ind2="">
<subfield code="c">2023</subfield>
</datafield>
<datafield tag="711" ind1="2" ind2="">
<subfield code="a">
STRC 2023</subfield>
<subfield code="c">
Monte Veritá, Ascona, Switzerland</subfield>
<subfield code="d">May 10, 2023</subfield>
</datafield>
<datafield tag="520" ind1="" ind2="">
<subfield code="a">
This paper presents a novel hybrid framework that combines model-based and data-driven
approaches for generating and maintaining synthetic population. The existing generators
produce a snapshot of synthetic data that becomes outdated over time, requiring a
complete regeneration using the newest datasets for updates. However, periodic census
data can be leveraged to simplify the generation process and provide up-to-date synthetic
populations at any moment in time. We propose a method that generates a baseline
dataset of synthetic individuals using the Markov Chain Monte Carlo simulation and
projects it over time by simulating events that impact generated attributes of synthetic
individuals. The projected sample should replicate the distribution of the newest version
of the dataset, but may not provide a perfect fit due to data collection biases. To account
for these differences, we use information from the newest data to re-sample and correct
the projected synthetic sample. To validate our approach, we use Swiss census data from
2010, 2015, and 2021. We generate the baseline sample using 2010 Swiss census data and
project it to 2021. We compare existing state-of-the-art techniques for dynamic projection
with our hybrid approach against Swiss census data from 2021. The results show that the
synthetic sample generated in the past can be improved by integrating information from
the newest data without using complete regeneration.</subfield>
</datafield>
  </record>



  </collection>
