Beyond Random Split for Assessing Statistical Model Performance

09/04/2022
by   Carlos Catania, et al.
5

Even though a train/test split of the dataset randomly performed is a common practice, could not always be the best approach for estimating performance generalization under some scenarios. The fact is that the usual machine learning methodology can sometimes overestimate the generalization error when a dataset is not representative or when rare and elusive examples are a fundamental aspect of the detection problem. In the present work, we analyze strategies based on the predictors' variability to split in training and testing sets. Such strategies aim at guaranteeing the inclusion of rare or unusual examples with a minimal loss of the population's representativeness and provide a more accurate estimation about the generalization error when the dataset is not representative. Two baseline classifiers based on decision trees were used for testing the four splitting strategies considered. Both classifiers were applied on CTU19 a low-representative dataset for a network security detection problem. Preliminary results showed the importance of applying the three alternative strategies to the Monte Carlo splitting strategy in order to get a more accurate error estimation on different but feasible scenarios.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/20/2020

SPlit: An Optimal Method for Data Splitting

In this article we propose an optimal method referred to as SPlit for sp...
research
02/07/2022

Optimal Ratio for Data Splitting

It is common to split a dataset into training and testing sets before fi...
research
06/23/2022

A Diagnostic Approach to Assess the Quality of Data Splitting in Machine Learning

In machine learning, a routine practice is to split the data into a trai...
research
04/28/2022

Learning to Split for Automatic Bias Detection

Classifiers are biased when trained on biased datasets. As a remedy, we ...
research
10/06/2021

Data Twinning

In this work, we develop a method named Twinning, for partitioning a dat...
research
02/21/2022

Inflation of test accuracy due to data leakage in deep learning-based classification of OCT images

In the application of deep learning on optical coherence tomography (OCT...
research
10/26/2022

Characterizing Datapoints via Second-Split Forgetting

Researchers investigating example hardness have increasingly focused on ...

Please sign up or login with your details

Forgot password? Click here to reset