High-dimensional mixed-frequency IV regression
This paper introduces a high-dimensional linear IV regression for the data sampled at mixed frequencies. We show that the high-dimensional slope parameter of a high-frequency covariate can be identified and accurately estimated leveraging on a low-frequency instrumental variable. The distinguishing...
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Zusammenfassung: | This paper introduces a high-dimensional linear IV regression for the data
sampled at mixed frequencies. We show that the high-dimensional slope parameter
of a high-frequency covariate can be identified and accurately estimated
leveraging on a low-frequency instrumental variable. The distinguishing feature
of the model is that it allows handing high-dimensional datasets without
imposing the approximate sparsity restrictions. We propose a
Tikhonov-regularized estimator and derive the convergence rate of its
mean-integrated squared error for time series data. The estimator has a
closed-form expression that is easy to compute and demonstrates excellent
performance in our Monte Carlo experiments. We estimate the real-time price
elasticity of supply on the Australian electricity spot market. Our estimates
suggest that the supply is relatively inelastic and that its elasticity is
heterogeneous throughout the day. |
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DOI: | 10.48550/arxiv.2003.13478 |