异质性和时变面板数据模型的非参数估计

Fei Liu, Jiti Gao, Yanrong Yang
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引用次数: 3

摘要

在横断面和时间序列方向上具有异质性的面板数据在社会和科学领域中经常遇到。为了解决这个问题,我们提出了一类具有个体特定回归系数和交互公共因素的时变面板数据模型。这导致了一个模型能够描述异构面板数据在时间序列方向的时变和截面之间的个体特定系数。这个提出的模型的另一个惊人的普遍性依赖于它在相互作用的共同因素的意义上与内生性的兼容性。模型估计是通过一种新的双最小二乘迭代算法来实现的,该算法递归地实现两个最小二乘估计。通过对具有外生或内生公因子的各种情况的灵活应用,很好地说明了它的统一估计能力。建立的DLS估计的渐近理论通过展示迭代在随着迭代步骤逐渐消除估计偏差方面的有效性,使从业者受益。我们进一步表明,我们的模型和估计在各种场景的模拟数据以及经合组织医疗保健支出数据集上表现良好。我们的分析证实了截面间的时变和异质性。
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Nonparametric Estimation in Panel Data Models with Heterogeneity and Time-Varyingness
Panel data subject to heterogeneity in both cross-sectional and time-serial directions are commonly encountered across social and scientific fields. To address this problem, we propose a class of time-varying panel data models with individual-specific regression coefficients and interactive common factors. This results in a model capable of describing heterogeneous panel data in terms of time-varyingness in the time-serial direction and individual-specific coefficients among crosssections. Another striking generality of this proposed model relies on its compatibility with endogeneity in the sense of interactive common factors. Model estimation is achieved through a novel duple least-squares (DLS) iteration algorithm, which implements two least-squares estimation recursively. Its unified ability in estimation is nicely illustrated according to flexible applications on various cases with exogenous or endogenous common factors. Established asymptotic theory for DLS estimators benefits practitioners by demonstrating effectiveness of iteration in eliminating estimation bias gradually along with iterative steps. We further show that our model and estimation perform well on simulated data in various scenarios as well as an OECD healthcare expenditure dataset. The time-variation and heterogeneity among cross-sections are confirmed by our analysis.
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