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首页> 外文期刊>International Journal of Theoretical and Applied Finance >ESTIMATING UNIVARIATE DISTRIBUTIONS VIA RELATIVE ENTROPY MINIMIZATION: CASE STUDIES ON FINANCIAL AND ECONOMIC DATA
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ESTIMATING UNIVARIATE DISTRIBUTIONS VIA RELATIVE ENTROPY MINIMIZATION: CASE STUDIES ON FINANCIAL AND ECONOMIC DATA

机译:通过相对熵最小化估计均匀分布:以财务和经济数据为例

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摘要

We use minimum relative entropy (MRE) methods to estimate univariate probability density functions for a varied set of financial and economic variables, including S&P500 index returns, individual stock returns, power price returns and a number of housing-related economic variables. Some variables have fat tail distributions, others have finite support. Some variables have point masses in their distributions and others have multimodal distributions. We indicate specifically how the MRE approach can be tailored to the stylized facts of the variables that we consider and benchmark the MRE approach against alternative approaches. We find, for a number of variables, that the MRE approach outperforms the benchmark
机译:我们使用最小相对熵(MRE)方法来估计各种金融和经济变量的单变量概率密度函数,包括S&P500指数收益,个人股票收益,电价收益以及许多与住房相关的经济变量。一些变量具有胖尾分布,而其他变量则具有有限的支持。一些变量在其分布中具有点质量,而其他变量则具有多峰分布。我们具体说明了MRE方法如何适应我们考虑的变量的风格化事实,并针对MRE方法与其他方法进行比较。我们发现,对于许多变量,MRE方法的性能优于基准

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