A nonparametric regression setting is considered with a real-valued covariate and responses from a metric space. One may approach this setting via Fr\échet regression, where the value of the regression function at each point is estimated via a Fr\échet mean calculated from an estimated objective function. A second approach is geodesic regression, which builds upon fitting geodesics to observations by a least squares method. These approaches are applied to transform two of the most important nonparametric regression estimators in statistics to the metric setting -- the local linear regression estimator and the orthogonal series projection estimator. The resulting procedures consist of known estimators as well as new methods. We investigate their rates of convergence in a general setting and compare their performance in a simulation study on the sphere.
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