首页> 外文期刊>Journal of modelling in management >Properties of instrumental variables estimation in logit-based demand models: Finite sample results
【24h】

Properties of instrumental variables estimation in logit-based demand models: Finite sample results

机译:基于logit的需求模型中工具变量估计的属性:有限样本结果

获取原文
获取原文并翻译 | 示例
       

摘要

Purpose - This paper aims to investigate the effects of using poor-quality instruments to remedy endogeneity in logit-based demand models. Endogeneity problems in demand models occur when certain factors, unobserved by the researcher, affect both demand and the values of a marketing mix variable set by managers. For example, unobserved factors such as style, prestige or reputation might result in higher prices for a product and higher demand for that product. If not addressed properly, endogeneity can bias the elasticities of the endogenous variable and subsequent optimization of the marketing mix. In practice, instrumental variables (IV) estimation techniques are often used to remedy an endogeneity problem. It is well-known that, for linear regression models, the use of IV techniques with poor-quality instruments can produce very poor parameter estimates, in some circumstances even worse than those that result from ignoring the endogeneity problem altogether. The literature has not addressed the consequences of using poor-quality instruments to remedy endogeneity problems in non-linear models, such as logit-based demand models. Design/methodology/approach - Using simulation methods, the authors investigate the effects of using poor-quality instruments to remedy endogeneity in logit-based demand models applied to finite-sample data sets. The results show that, even when the conditions for lack of parameter identification due to poor-quality instruments do not hold exactly, estimates of price elasticities can still be quite poor. That being the case, the authors investigate the relative performance of several non-linear IV estimation procedures utilizing readily available instruments in finite samples. Findings - The study highlights the attractiveness of the control function approach (Petrin and Train, 2010) and readily available instruments, which together reduce the mean squared elasticity errors substantially for experimental conditions in which the theory-backed instruments are poor in quality. The authors find important effects for sample size, in particular for the number of brands, for which it is shown that endogeneity problems are exacerbated with increases in the number of brands, especially when poor-quality instruments are used. In addition, the number of stores is found to be important for likelihood ratio testing. The results of the simulation are shown to generalize to situations under Nash pricing in oligopolistic markets, to conditions in which cross-sectional preference heterogeneity exists and to nested logit and probit-based demand specifications as well. Based on the results of the simulation, the authors suggest a procedure for managing a potential endogeneity problem in logit-based demand models. Originality/value - The literature on demand modeling has focused on deriving analytical results on the consequences of using poor-quality instruments to remedy endogeneity problems in linear models. Despite the widespread use of non-linear demand models such as logit, this study is the first to address the consequences of using poor-quality instruments in these models and to make practical recommendations on how to avoid poor outcomes.
机译:目的-本文旨在研究在基于logit的需求模型中使用劣质工具补救内生性的影响。当研究人员未发现的某些因素同时影响需求和经理设定的营销组合变量的值时,就会发生需求模型中的内生性问题。例如,诸如样式,声望或声誉之类的未被观察到的因素可能导致产品的更高价格和对该产品的更高需求。如果处理不当,内生性可能会偏向内生变量的弹性,进而影响营销组合的优化。在实践中,工具变量(IV)估计技术通常用于补救内生性问题。众所周知,对于线性回归模型,将IV技术与质量较差的仪器配合使用会产生非常差的参数估计值,在某些情况下甚至比完全忽略内生性问题而导致的结果更糟。文献尚未解决使用劣质工具纠正非线性模型(例如基于logit的需求模型)中的内生性问题的后果。设计/方法/方法-作者使用模拟方法研究了使用劣质工具纠正基于有限样本数据集的基于logit的需求模型中的内生性的影响。结果表明,即使由于劣质工具而导致缺乏参数识别的条件不能完全成立,对价格弹性的估计仍然可能很差。在这种情况下,作者利用有限样本中易于获得的仪器研究了几种非线性IV估计程序的相对性能。研究结果-该研究突出了控制功能方法(Petrin和Train,2010年)和现成的仪器的吸引力,这些仪器共同降低了实验条件下的均方根弹性误差,在这种情况下,理论支持的仪器质量较差。作者发现对样本量,特别是对品牌数量具有重要影响,这表明,随着品牌数量的增加,内生性问题会加剧,尤其是在使用劣质仪器时。另外,发现商店的数量对于似然比测试很重要。模拟结果显示出可以推广到寡头市场纳什定价下的情况,存在横截面偏好异质性的条件,以及嵌套的logit和基于probit的需求规格。基于仿真结果,作者提出了一种在基于logit的需求模型中管理潜在内生性问题的程序。原创性/价值-按需建模的文献集中在得出分析结果,这些分析结果涉及使用劣质工具纠正线性模型中的内生性问题。尽管广泛使用了logit等非线性需求模型,但本研究还是第一个研究在这些模型中使用劣质工具的后果,并就如何避免不良后果提出了实用建议。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号