Stabilizing black-box model selection with the inflated argmax
  
  
              
            
      
  
  
   
   
   
   Monday, Aug 4: 11:05 AM - 11:35 AM
   
              
               Invited Paper Session 
               
   
   
   
   
      
      Music City Center 
  
      
    Model selection is the process of choosing from a class of candidate models given data. For instance, methods such as the LASSO and sparse identification of nonlinear dynamics (SINDy) formulate model selection as finding a sparse solution to a linear system of equations determined by training data. However, absent strong assumptions, such methods are highly unstable: if a single data point is removed from the training set, a different model may be selected. This paper presents a new approach to stabilizing model selection that leverages a combination of bagging and an "inflated" argmax operation. Our method selects a small collection of models that all fit the data, and it is stable in that, with high probability, the removal of any training point will result in a collection of selected models that overlaps with the original collection. In addition to developing theoretical guarantees, we illustrate this method in (a) a simulation in which strongly correlated covariates make standard LASSO model selection highly unstable and (b) a Lotka–Volterra model selection problem focused on identifying how competition in an ecosystem influences species' abundances. In both settings, the proposed method yields stable and compact collections of selected models, outperforming a variety of benchmarks.
This is joint work with Jake Soloff and Rina Barber.
   
         
         Stability
Model selection
Bagging 
      
    
   
   
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