最小绝对偏差
计量经济学
统计
数学
乘法函数
绝对收益
近似误差
线性回归
统计推断
加权
渐近分布
回归
估计员
经济
生产(经济)
投资回报率
宏观经济学
数学分析
放射科
医学
投资业绩
作者
Kani Chen,Shaojun Guo,Yuanyuan Lin,Zhiliang Ying
标识
DOI:10.1198/jasa.2010.tm09307
摘要
Multiplicative regression model or accelerated failure time model, which becomes linear regression model after logarithmic transformation, is useful in analyzing data with positive responses, such as stock prices or life times, that are particularly common in economic/financial or biomedical studies. Least squares or least absolute deviation are among the most widely used criterions in statistical estimation for linear regression model. However, in many practical applications, especially in treating, for example, stock price data, the size of relative error, rather than that of error itself, is the central concern of the practitioners. This paper offers an alternative to the traditional estimation methods by considering minimizing the least absolute relative errors for multiplicative regression models. We prove consistency and asymptotic normality and provide an inference approach via random weighting. We also specify the error distribution, with which the proposed least absolute relative errors estimation is efficient. Supportive evidence is shown in simulation studies. Application is illustrated in an analysis of stock returns in Hong Kong Stock Exchange.
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