Beyond Random Sampling: Instance Quality-Based Data Partitioning via Item Response Theory
- URL: http://arxiv.org/abs/2508.10628v1
- Date: Thu, 14 Aug 2025 13:29:40 GMT
- Title: Beyond Random Sampling: Instance Quality-Based Data Partitioning via Item Response Theory
- Authors: Lucas Cardoso, Vitor Santos, JosĂ© Ribeiro Filho, Ricardo PrudĂȘncio, Regiane Kawasaki, Ronnie Alves,
- Abstract summary: This study proposes the use of Item Response Theory (IRT) parameters to characterize and guide the partitioning of datasets in the model validation stage.<n>The impact of IRT-informed partitioning strategies on the performance of several Machine Learning models was evaluated.
- Score: 0.4749981032986242
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Robust validation of Machine Learning (ML) models is essential, but traditional data partitioning approaches often ignore the intrinsic quality of each instance. This study proposes the use of Item Response Theory (IRT) parameters to characterize and guide the partitioning of datasets in the model validation stage. The impact of IRT-informed partitioning strategies on the performance of several ML models in four tabular datasets was evaluated. The results obtained demonstrate that IRT reveals an inherent heterogeneity of the instances and highlights the existence of informative subgroups of instances within the same dataset. Based on IRT, balanced partitions were created that consistently help to better understand the tradeoff between bias and variance of the models. In addition, the guessing parameter proved to be a determining factor: training with high-guessing instances can significantly impair model performance and resulted in cases with accuracy below 50%, while other partitions reached more than 70% in the same dataset.
Related papers
- Nonparametric Data Attribution for Diffusion Models [57.820618036556084]
Data attribution for generative models seeks to quantify the influence of individual training examples on model outputs.<n>We propose a nonparametric attribution method that operates entirely on data, measuring influence via patch-level similarity between generated and training images.
arXiv Detail & Related papers (2025-10-16T03:37:16Z) - Model Correlation Detection via Random Selection Probing [62.093777777813756]
Existing similarity-based methods require access to model parameters or produce scores without thresholds.<n>We introduce Random Selection Probing (RSP), a hypothesis-testing framework that formulates model correlation detection as a statistical test.<n>RSP produces rigorous p-values that quantify evidence of correlation.
arXiv Detail & Related papers (2025-09-29T01:40:26Z) - Prismatic Synthesis: Gradient-based Data Diversification Boosts Generalization in LLM Reasoning [77.120955854093]
We show that data diversity can be a strong predictor of generalization in language models.<n>We introduce G-Vendi, a metric that quantifies diversity via the entropy of model-induced gradients.<n>We present Prismatic Synthesis, a framework for generating diverse synthetic data.
arXiv Detail & Related papers (2025-05-26T16:05:10Z) - Relation Extraction or Pattern Matching? Unravelling the Generalisation Limits of Language Models for Biographical RE [18.616344314400244]
We show that relation extraction models struggle with unseen data, even within similar domains.<n>Our results also show that data quality, rather than lexical similarity, is key to robust transfer.
arXiv Detail & Related papers (2025-05-18T20:22:14Z) - Counterfactual Fairness through Transforming Data Orthogonal to Bias [7.109458605736819]
We propose a novel data pre-processing algorithm, Orthogonal to Bias (OB)<n>OB is designed to eliminate the influence of a group of continuous sensitive variables, thus promoting counterfactual fairness in machine learning applications.<n>OB is model-agnostic, making it applicable to a wide range of machine learning models and tasks.
arXiv Detail & Related papers (2024-03-26T16:40:08Z) - Boosting Differentiable Causal Discovery via Adaptive Sample Reweighting [62.23057729112182]
Differentiable score-based causal discovery methods learn a directed acyclic graph from observational data.
We propose a model-agnostic framework to boost causal discovery performance by dynamically learning the adaptive weights for the Reweighted Score function, ReScore.
arXiv Detail & Related papers (2023-03-06T14:49:59Z) - Discover, Explanation, Improvement: An Automatic Slice Detection
Framework for Natural Language Processing [72.14557106085284]
slice detection models (SDM) automatically identify underperforming groups of datapoints.
This paper proposes a benchmark named "Discover, Explain, improve (DEIM)" for classification NLP tasks.
Our evaluation shows that Edisa can accurately select error-prone datapoints with informative semantic features.
arXiv Detail & Related papers (2022-11-08T19:00:00Z) - A Bayesian Framework on Asymmetric Mixture of Factor Analyser [0.0]
This paper introduces an MFA model with a rich and flexible class of skew normal (unrestricted) generalized hyperbolic (called SUNGH) distributions.
The SUNGH family provides considerable flexibility to model skewness in different directions as well as allowing for heavy tailed data.
Considering factor analysis models, the SUNGH family also allows for skewness and heavy tails for both the error component and factor scores.
arXiv Detail & Related papers (2022-11-01T20:19:52Z) - Studying Generalization Through Data Averaging [0.0]
We study train and test performance, as well as the generalization gap given by the mean of their difference over different data set samples.
We predict some aspects about how the generalization gap and model train and test performance vary as a function of SGD noise.
arXiv Detail & Related papers (2022-06-28T00:03:40Z) - Equivariance Allows Handling Multiple Nuisance Variables When Analyzing
Pooled Neuroimaging Datasets [53.34152466646884]
In this paper, we show how bringing recent results on equivariant representation learning instantiated on structured spaces together with simple use of classical results on causal inference provides an effective practical solution.
We demonstrate how our model allows dealing with more than one nuisance variable under some assumptions and can enable analysis of pooled scientific datasets in scenarios that would otherwise entail removing a large portion of the samples.
arXiv Detail & Related papers (2022-03-29T04:54:06Z) - Robust Finite Mixture Regression for Heterogeneous Targets [70.19798470463378]
We propose an FMR model that finds sample clusters and jointly models multiple incomplete mixed-type targets simultaneously.
We provide non-asymptotic oracle performance bounds for our model under a high-dimensional learning framework.
The results show that our model can achieve state-of-the-art performance.
arXiv Detail & Related papers (2020-10-12T03:27:07Z) - An Investigation of Why Overparameterization Exacerbates Spurious
Correlations [98.3066727301239]
We identify two key properties of the training data that drive this behavior.
We show how the inductive bias of models towards "memorizing" fewer examples can cause over parameterization to hurt.
arXiv Detail & Related papers (2020-05-09T01:59:13Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.