2/16 Speaker:Prof. Shaw-Hwa Lo (Department of Statistics, Columbia University)

  • Event Date: 2023-02-16
  • Speaker:  /  Host:

Topic:Framework for making better predictions by directly estimating variables’ predictivity I, II

Speaker:Prof. Shaw-Hwa Lo (Department of Statistics, Columbia University)

Date Time:Thu. Feb 16, 2023, 2:30 PM - 4:30 PM 

Place: 4F-427, Assembly Building I
 

Online Seminars- Google Meet
https://meet.google.com/sqy-fzus-oog
 
Abstract

 
Good prediction, especially in the context of big data, is important.  Common approaches to prediction include using a significance-based criterion for evaluating variables to use in models and evaluating variables and models simultaneously for prediction using cross-validation or independent test data.  The first approach can lead to choosing less-predictive variables,  because significance does not imply predictivity. The second approach can be improved through considering a variable’s predictivity as a parameter to be estimated. The literature currently lacks measures that do this. We suggest a measure that evaluates variables’ abilities to predict, the I-score.  The I-score is effective in differentiating between noisy and predictive variables in big data and can be related to a lower bound for the correct prediction rate. 
We propose approaching prediction from a framework grounded in the theoretical correct prediction rate of a variable set as a parameter of interest. This framework allows us to define a measure of predictivity that enables assessing variable sets for, preferably high, predictivity. We first define the prediction rate for a variable set and consider, and ultimately reject, the naive estimator, a statistic based on the observed sample data, due to its inflated bias for moderate sample size and its sensitivity to noisy useless variables. We demonstrate that the I-score of the PR method of VS yields a relatively unbiased estimate of a parameter that is not sensitive to noisy variables and is a lower bound to the parameter of interest. Thus, the PR method using the I-score provides an effective approach to selecting highly predictive variables.  We offer simulations and an application of the I-score on real data to demonstrate the statistic’s predictive performance on sample data. We conjecture that using the partition retention and I-score can aid in finding variable sets with promising prediction rates; however, further research in the avenue of sample-based measures of predictivity is much desired.