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Oliver Linton

Researcher at University of Cambridge

Publications -  447
Citations -  13008

Oliver Linton is an academic researcher from University of Cambridge. The author has contributed to research in topics: Estimator & Nonparametric statistics. The author has an hindex of 55, co-authored 425 publications receiving 12055 citations. Previous affiliations of Oliver Linton include University of Illinois at Urbana–Champaign & Yale University.

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Estimation of a semiparametric transformation model

TL;DR: In this paper, consistent estimators for transformation parameters in semiparametric models are proposed, where the objective is to find the optimal transformation into the space of models with a predetermined regression structure like additive or multiplicative separability.
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Testing the Martingale Hypothesis for Gross Returns

TL;DR: In this paper, an alternative ratio statistic for measuring predictability of stock prices is proposed, which is based on actual returns rather than logarithmic returns and is therefore better suited to capturing price predictability.
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Nonparametric inference for unbalanced time series data

TL;DR: In this paper, the authors consider the problem of conducting inference in a vector time series setting when the data is unbalanced or incomplete, and show how the sampling theory changes and how to modify the resampling algorithms to accommodate the missing data.
Posted Content

Are Eurozone Household Income Distributions Converging? Introducing MGT and DisGini, New Tools for Multilateral Distributional Comparisons

TL;DR: In this paper, a sigma convergence study of 21st century Eurozone household income distributions was conducted and it was shown that when the Eurozone is considered as an entity with no nation boundaries, both weighted and unweighted versions of the statistics record convergence as the theory predicts for such a confederation.
ReportDOI

Estimation with Mixed Data Frequencies: A Bias-Correction Approach

TL;DR: In this paper, a bias-correction to the standard GMM estimator derived under a double asymptotic framework was proposed, where the number of intra-period returns and low frequency time periods simultaneously go to infinity.