Arbeitspapier

Big Data Analytics: A New Perspective

Model specification and selection are recurring themes in econometric analysis. Both topics become considerably more complicated in the case of large-dimensional data sets where the set of specification possibilities can become quite large. In the context of linear regression models, penalised regression has become the de facto benchmark technique used to trade off parsimony and fit when the number of possible covariates is large, often much larger than the number of available observations. However, issues such as the choice of a penalty function and tuning parameters associated with the use of penalized regressions remain contentious. In this paper, we provide an alternative approach that considers the statistical significance of the individual covariates one at a time, whilst taking full account of the multiple testing nature of the inferential problem involved. We refer to the proposed method as One Covariate at a Time Multiple Testing (OCMT) procedure The OCMT has a number of advantages over the penalised regression methods: It is based on statistical inference and is therefore easier to interpret and relate to the classical statistical analysis, it allows working under more general assumptions, it is computationally simple and considerably faster, and it performs better in small samples for almost all of the five different sets of experiments considered in this paper. Despite its simplicity, the theory behind the proposed approach is quite complicated. We provide extensive theoretical and Monte Carlo results in support of adding the proposed OCMT model selection procedure to the toolbox of applied researchers.

Language
Englisch

Bibliographic citation
Series: CESifo Working Paper ; No. 5824

Classification
Wirtschaft
Model Evaluation, Validation, and Selection
Large Data Sets: Modeling and Analysis
Subject
one covariate at a time
multiple testing
model selection
high dimensionality
penalized regressions
boosting
Monte Carlo experiments

Event
Geistige Schöpfung
(who)
Chudik, Alexander
Kapetanios, George
Pesaran, M. Hashem
Event
Veröffentlichung
(who)
Center for Economic Studies and ifo Institute (CESifo)
(where)
Munich
(when)
2016

Handle
Last update
10.03.2025, 11:43 AM CET

Data provider

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Object type

  • Arbeitspapier

Associated

  • Chudik, Alexander
  • Kapetanios, George
  • Pesaran, M. Hashem
  • Center for Economic Studies and ifo Institute (CESifo)

Time of origin

  • 2016

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