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Nonparametric long term prediction of stock returns with generated bond yields
Institution:1. Department of Economics, University of Graz, Universitätsstraße 15/F4, 8010 Graz, Austria;2. Geneva School of Economics and Management, Université de Genéve, Bd du Pont d’Arve 40, 1211 Genévre 4, Switzerland;3. Faculty of Actuarial Science and Insurance, Cass Business School, 106 Bunhill Row, London, EC1Y8TZ, UK;1. Alef-servizi s.p.a., Viale Regina Margherita, 169, 00198 Roma, Italy;2. TELECOM Bretagne, LabSTICC/CID/SFIIS, Technopôle Brest Iroise CS 83818, 29238 Brest Cedex 3, France;1. Department of Economics, Eastern Mediterranean University, Famagusta, via Mersin 10, Northern Cyprus, Turkey;2. Department of Economics, University of Pretoria, Pretoria 0002, South Africa;3. Department of Economics, University of Reading, Reading RG6 6AA, United Kingdom;4. College of Business Administration, University of Nebraska at Omaha, 6708 Pine Street, Omaha, NE 68182, USA;5. School of Business and Economics, Loughborough University, Leicestershire LE11 3TU, UK;1. Comisión Nacional del Mercado de Valores (CNMV), c/Edison, 4, 28006 Madrid, Spain;2. Department of Business Administration, University Carlos III, c/Madrid, 126, 28903 Getafe, Madrid, Spain
Abstract:Recent empirical approaches in forecasting equity returns or premiums found that dynamic interactions among the stock and bond are relevant for long term pension products. Automatic procedures to upgrade or downgrade risk exposure could potentially improve long term performance for such products. The risk and return of bonds is more easy to predict than the risk and return of stocks. This and the well known stock-bond correlation motivates the inclusion of the current bond yield in a model for the prediction of excess stock returns. Here, we take the actuarial long term view using yearly data, and focus on nonlinear relationships between a set of covariates. We employ fully nonparametric models and apply for estimation a local-linear kernel smoother. Since the current bond yield is not known, it is predicted in a prior step. The structure imposed this way in the final estimation process helps to circumvent the curse of dimensionality and reduces bias in the estimation of excess stock returns. Our validated stock prediction results show that predicted bond returns improve stock prediction significantly.
Keywords:Prediction  Stock returns  Bond yield  Cross validation  Generated regressors
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