%Aigaion2 BibTeX export from Knowledge Engineering Publications
%Tuesday 19 January 2021 01:15:29 AM

        author = {Kulessa, Moritz and Molina, Alejandro and Binnig, Carsten and Hilprecht, Benjamin and Kersting, Kristian},
      keywords = {Approximate Query Processing, Databases, Deep Learning, SQL Queries, Sum-Product Networks},
         month = nov,
         title = {Model-based Approximate Query Processing},
          year = {2018},
  howpublished = {arXiv preprint arXiv:1811.06224},
           url = {https://arxiv.org/pdf/1811.06224.pdf},
      abstract = {Interactive visualizations are arguably the most important tool to explore, understand and convey facts about data. In the past years, the database community has been working on different techniques for Approximate Query Processing (AQP) that aim to deliver an approximate query result given a fixed time bound to support interactive visualizations better. However, classical AQP approaches suffer from various problems that limit the applicability to support the ad-hoc exploration of a new data set: (1) Classical AQP approaches that perform online sampling can support ad-hoc exploration queries but yield low quality if executed over rare subpopulations. (2) Classical AQP approaches that rely on offline sampling can use some form of biased sampling to mitigate these problems but require a priori knowledge of the workload, which is often not realistic if users want to explore a new database. In this paper, we present a new approach to AQP called Model-based AQP that leverages generative models learned over the complete database to answer SQL queries at interactive speeds. Different from classical AQP approaches, generative models allow us to compute responses to ad-hoc queries and deliver high-quality estimates also over rare subpopulations at the same time. In our experiments with real and synthetic data sets, we show that Model-based AQP can in many scenarios return more accurate results in a shorter runtime. Furthermore, we think that our techniques of using generative models presented in this paper can not only be used for AQP in databases but also has applications for other database problems including Query Optimization as well as Data Cleaning.}