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Main Authors: Bachmann, Fynn, van der Weijden, Daan, Heitz, Lucien, Sarasua, Cristina, Bernstein, Abraham
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.09311
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author Bachmann, Fynn
van der Weijden, Daan
Heitz, Lucien
Sarasua, Cristina
Bernstein, Abraham
author_facet Bachmann, Fynn
van der Weijden, Daan
Heitz, Lucien
Sarasua, Cristina
Bernstein, Abraham
contents Adaptive questionnaires dynamically select the next question for a survey participant based on their previous answers. Due to digitalisation, they have become a viable alternative to traditional surveys in application areas such as political science. One limitation, however, is their dependency on data to train the model for question selection. Often, such training data (i.e., user interactions) are unavailable a priori. To address this problem, we (i) test whether Large Language Models (LLM) can accurately generate such interaction data and (ii) explore if these synthetic data can be used to pre-train the statistical model of an adaptive political survey. To evaluate this approach, we utilise existing data from the Swiss Voting Advice Application (VAA) Smartvote in two ways: First, we compare the distribution of LLM-generated synthetic data to the real distribution to assess its similarity. Second, we compare the performance of an adaptive questionnaire that is randomly initialised with one pre-trained on synthetic data to assess their suitability for training. We benchmark these results against an "oracle" questionnaire with perfect prior knowledge. We find that an off-the-shelf LLM (GPT-4) accurately generates answers to the Smartvote questionnaire from the perspective of different Swiss parties. Furthermore, we demonstrate that initialising the statistical model with synthetic data can (i) significantly reduce the error in predicting user responses and (ii) increase the candidate recommendation accuracy of the VAA. Our work emphasises the considerable potential of LLMs to create training data to improve the data collection process in adaptive questionnaires in LLM-affine areas such as political surveys.
format Preprint
id arxiv_https___arxiv_org_abs_2503_09311
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Adaptive political surveys and GPT-4: Tackling the cold start problem with simulated user interactions
Bachmann, Fynn
van der Weijden, Daan
Heitz, Lucien
Sarasua, Cristina
Bernstein, Abraham
Machine Learning
Artificial Intelligence
Adaptive questionnaires dynamically select the next question for a survey participant based on their previous answers. Due to digitalisation, they have become a viable alternative to traditional surveys in application areas such as political science. One limitation, however, is their dependency on data to train the model for question selection. Often, such training data (i.e., user interactions) are unavailable a priori. To address this problem, we (i) test whether Large Language Models (LLM) can accurately generate such interaction data and (ii) explore if these synthetic data can be used to pre-train the statistical model of an adaptive political survey. To evaluate this approach, we utilise existing data from the Swiss Voting Advice Application (VAA) Smartvote in two ways: First, we compare the distribution of LLM-generated synthetic data to the real distribution to assess its similarity. Second, we compare the performance of an adaptive questionnaire that is randomly initialised with one pre-trained on synthetic data to assess their suitability for training. We benchmark these results against an "oracle" questionnaire with perfect prior knowledge. We find that an off-the-shelf LLM (GPT-4) accurately generates answers to the Smartvote questionnaire from the perspective of different Swiss parties. Furthermore, we demonstrate that initialising the statistical model with synthetic data can (i) significantly reduce the error in predicting user responses and (ii) increase the candidate recommendation accuracy of the VAA. Our work emphasises the considerable potential of LLMs to create training data to improve the data collection process in adaptive questionnaires in LLM-affine areas such as political surveys.
title Adaptive political surveys and GPT-4: Tackling the cold start problem with simulated user interactions
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2503.09311