A learning-augmented approach to pricing risk in South Africa

被引:0
|
作者
Jacques Peeperkorn
Yudhvir Seetharam
机构
[1] University of the Witwatersrand,School of Economic and Business Sciences
来源
关键词
Kalman filter; Asset pricing; Behavioural finance; Emerging markets; C44; C53; C58; D03; G12; G15;
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摘要
Through application of state-space modelling, the asset pricing model is re-explored. The result is an asset pricing model which tracks the evolution of investor probability beliefs and learning through a Kalman filter. This behaviourally inspired model shows marked improvement over a traditional asset pricing model, with pricing errors being reduced by as much as 41 % over a 16 year period using South African equities data. We find that investors tend to price long-run risk whilst being notably influenced by exposure to lagged market performance. Together, these findings lend support to the hypothesis that investors tend to price risk as a dynamic learning process in an emerging market.
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页码:117 / 139
页数:22
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