Output and Expected Returns in Central and Eastern European Countries

Jerzy Gajdka, Piotr Pietraszewski

Abstract


Theoretical background: Although some controversy remains, some aspects of the predictability of aggregate stock market returns in the United States and other industrialized countries appear to be relatively well established. Intertemporal asset pricing models based on the paradigm of investor rationality and market efficiency imply that various macro variables describing the state of the economy may forecast future returns on the aggregate stock market.

Purpose of the article: The aim of the article is to present the results of a preliminary study which set out to determine whether the ratio of the stock index to the aggregate output in the economy and future rates of return in the aggregate stock markets in Central and Eastern Europe are significantly related to each other over different time horizons.

Research methods: Heteroskedasticity and autocorrelation-consistent estimators with a small sample degrees of freedom adjustment were used in regressions to track overlapping data problem and small sample bias.

Main findings: The analysis of the key market indices has shown that they explain much of the variation in the long-horizon future cumulative returns, as well as in cumulative excess returns.


Keywords


stock return predictability; GDP; industrial production; CEE countries

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DOI: http://dx.doi.org/10.17951/h.2020.54.4.41-54
Date of publication: 2020-12-29 19:34:56
Date of submission: 2020-06-22 14:39:50


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