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CPS2068 Jan-Philipp Kolb et al.
               training data. In the future, we want to use the complete data as training data
               and  the  next  wave  dataset  as  test  data.  Also,  we  want  to  consider  more
               information  about  the  questionnaire  structure.  For  example,  it  would  be
               possible  to  use  the  information  on  questionnaire  scales  and  their
               characteristics.  How  significant  is  the  number  of  questions  classified  as
               sensitive? How many open questions are in the questionnaire? We further plan
               to analyse nonresponse patterns.

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