Estimation of Large Dimensional Conditional Factor Models in Finance

P. Gagliardini, P. Gagliardini, Elisa Ossola, O. Scaillet, O. Scaillet
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引用次数: 19

Abstract

This chapter provides an econometric methodology for inference in large-dimensional conditional factor models in finance. Changes in the business cycle and asset characteristics induce time variation in factor loadings and risk premia to be accounted for. The growing trend in the use of disaggregated data for individual securities motivates our focus on methodologies for a large number of assets. The beginning of the chapter outlines the concept of approximate factor structure in the presence of conditional information, and develops an arbitrage pricing theory for large-dimensional factor models in this framework. Then we distinguish between two different cases for inference depending on whether factors are observable or not. We focus on diagnosing model specification, estimating conditional risk premia, and testing asset pricing restrictions under increasing cross-sectional and time series dimensions. At the end of the chapter, we review some of the empirical findings and contrast analysis based on individual stocks and standard sets of portfolios. We also discuss the impact on computing time-varying cost of equity for a firm, and summarize differences between results for developed and emerging markets in an international setting.
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金融中大维度条件因子模型的估计
本章提供了一种计量经济学方法来推断金融中的大维度条件因子模型。商业周期和资产特征的变化会导致因子负荷和风险溢价的时间变化。对单个证券使用分类数据的趋势日益增长,促使我们关注大量资产的方法。本章的开头概述了条件信息存在下的近似要素结构的概念,并在此框架下发展了大维度要素模型的套利定价理论。然后,我们根据因素是否可观察来区分两种不同的推断情况。我们专注于诊断模型规范,估计条件风险溢价,并在增加横断面和时间序列维度下测试资产定价限制。在本章的最后,我们回顾了一些基于个股和标准组合的实证研究结果和对比分析。我们还讨论了对计算公司时变股权成本的影响,并总结了在国际环境下发达市场和新兴市场结果之间的差异。
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