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            Hyperparameter Optimization of Topological Features for Machine Learning Applications
              (2019)
          
          
            Francis  Motta, Christopher  Tralie, Rossella  Bedini, Fabiano  Bini, Gilberto  Bini, Hamed  Eramian, Marcio  Gameiro, Steve  Haase, Hugh  Haddox, John  Harer, Nick  Leiby, Franco  Marinozzi, Scott  Novotney, Gabe  Rocklin, Jed  Singer, Devin  Strickland, Matt  Vaughn
          
          
            Abstract
            This paper describes a general pipeline for generating optimal vector representations of topological features of data for use with machine learning algorithms. This pipeline can be viewed as a costly black-box function defined over a complex configuration space, each point of which specifies both how features are generated and how predictive models are trained on those features. We propose using state-of-the-art Bayesian optimization algorithms to inform the choice of topological vectorization hyperparameters while simultaneously choosing learning model parameters. We demonstrate the need for and effectiveness of this pipeline using two difficult biological learning problems, and illustrate the nontrivial interactions between topological feature generation and learning model hyperparameters.