基于竞争排序模型的首席营销官任期研究

Eun Hee Ko, D. Bowman, Sierra Chugg, Dae Wook Kim
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Rationales underlying our arguments rely on a competitive sorting model of the CEO labor market [6, 11]. The essential intuition of the model is that CEOs have discernable characteristics that are indicative of their expected productive skills and are matched to firms competitively [4]. We used the sales data for the firms from 2000 to 2014, which were retrieved from Fundamentals Annuals section of COMPUSTAT database [9] and tested the effects of the interaction between the firm (i.e., Long-term business strategy and Data-driven approach) and the CMO variables (i.e., Analytical Ability Index (AAI) and General Ability Index (GAI)) on CMO tenure and the performance implications of the interaction, focusing on the emergence of business culture which transforms diverse aspects of business foundations, data-driven culture. In specific, we suggest a positive relationship between the CMO's characteristics which match to the firm's strategic shifts and CMO tenure and firm performance, because CMOs' distinguished characteristics which are effectively matched to firms are the indicative of their competitive performance consequences [4], which, in turn, are associated with longer tenure. We adopted five proxies of General Ability Index: number of firms, number of industries, CMO experience, number of executive positions, and executive tenure. Following Custodio et al. [2], we reduced the five proxies into one-dimensional index using principal component analysis [14] which extracts common component. We used one component instead of five by employing the method of dimensionality reduction to avoid multicollinearity [5] and minimize measurement error. Because all the proxies for the GAI Index are static variables over time, the General Ability Index is calculated for each CMO, but the index is not varying over time for a CMO. The index is standardized and thus has zero mean and a standard deviation of 1. AAI is computed with the same method using three proxies: number of degrees, degree kind, and functional career experience. To extract the proxies from firm side (firm's valuation on the change in long-term business strategy and in data-driven approach), we use text analytics with `Business Section (i.e., Item 1)' in Form 10-K, which is the most comprehensive compilation of information on a firm's business that is in the public domain. We applied lexicon-based sentiment approach which involves calculating orientation for a document from the semantic orientation of words or phrases in the document [13] and automatically extracting the semantic values in a numeric format to our analysis. Lexicon-based approach can be created manually [12], or automatically, using seed words to expand the list of words [8, 12], and we adopted the first approach. We construct a proportional hazards model to estimate the effect of predictors on CMO tenure. The dependent variable in Equation (1) is the hazard rate, which is right censored for some individuals. That is, there are the individuals whose tenure end points are unobservable, because they still serve as a chief marketing officer at the end of the study period. Thus, traditional regression estimates will be biased. In addition, time-varying covariates (i.e., the firm's valuation for long-term business strategy, the firm's valuation for data-driven approach) are included in the estimate. Consequently, we formulate the model with proportional hazards model [1]. The tenure for an individual CMO is considered to be a random variable with p.d.f. f(t) and c.d.f. F(t), and hazard rate is h(t) = f(t) / (1-F(t)). Let h(t|x) denote the hazard rate for a CMO i with certain conditions captured by the vector x. The hazard rate takes the following form: [math here] where h0(t) is baseline hazard rate which does not depend on x but only captures time effects and β' captures the effect of predictors (xit) on the hazard rate. Figure 1 (a) and (b) illustrate a survival curve and a cumulative hazard curve which are estimated with the hazard model when no predictors are involved. In Figure 1, the relatively gentle decline in the early months indicate that there are only a few CMOs who leave from the position in the first few months. This is also indicated by changes in the cumulative number of events and number at risk. In specific, about a third CMOs left the position within 54 months, and about 50% of the total events occurred within 80 months. We make the following new contributions. 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We used the sales data for the firms from 2000 to 2014, which were retrieved from Fundamentals Annuals section of COMPUSTAT database [9] and tested the effects of the interaction between the firm (i.e., Long-term business strategy and Data-driven approach) and the CMO variables (i.e., Analytical Ability Index (AAI) and General Ability Index (GAI)) on CMO tenure and the performance implications of the interaction, focusing on the emergence of business culture which transforms diverse aspects of business foundations, data-driven culture. In specific, we suggest a positive relationship between the CMO's characteristics which match to the firm's strategic shifts and CMO tenure and firm performance, because CMOs' distinguished characteristics which are effectively matched to firms are the indicative of their competitive performance consequences [4], which, in turn, are associated with longer tenure. We adopted five proxies of General Ability Index: number of firms, number of industries, CMO experience, number of executive positions, and executive tenure. Following Custodio et al. [2], we reduced the five proxies into one-dimensional index using principal component analysis [14] which extracts common component. We used one component instead of five by employing the method of dimensionality reduction to avoid multicollinearity [5] and minimize measurement error. Because all the proxies for the GAI Index are static variables over time, the General Ability Index is calculated for each CMO, but the index is not varying over time for a CMO. The index is standardized and thus has zero mean and a standard deviation of 1. AAI is computed with the same method using three proxies: number of degrees, degree kind, and functional career experience. To extract the proxies from firm side (firm's valuation on the change in long-term business strategy and in data-driven approach), we use text analytics with `Business Section (i.e., Item 1)' in Form 10-K, which is the most comprehensive compilation of information on a firm's business that is in the public domain. We applied lexicon-based sentiment approach which involves calculating orientation for a document from the semantic orientation of words or phrases in the document [13] and automatically extracting the semantic values in a numeric format to our analysis. Lexicon-based approach can be created manually [12], or automatically, using seed words to expand the list of words [8, 12], and we adopted the first approach. We construct a proportional hazards model to estimate the effect of predictors on CMO tenure. The dependent variable in Equation (1) is the hazard rate, which is right censored for some individuals. That is, there are the individuals whose tenure end points are unobservable, because they still serve as a chief marketing officer at the end of the study period. Thus, traditional regression estimates will be biased. In addition, time-varying covariates (i.e., the firm's valuation for long-term business strategy, the firm's valuation for data-driven approach) are included in the estimate. Consequently, we formulate the model with proportional hazards model [1]. The tenure for an individual CMO is considered to be a random variable with p.d.f. f(t) and c.d.f. F(t), and hazard rate is h(t) = f(t) / (1-F(t)). Let h(t|x) denote the hazard rate for a CMO i with certain conditions captured by the vector x. The hazard rate takes the following form: [math here] where h0(t) is baseline hazard rate which does not depend on x but only captures time effects and β' captures the effect of predictors (xit) on the hazard rate. 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引用次数: 0

摘要

随着CMO的平均任期在过去十年中显著增加,商业媒体对这种攀升的原因进行了推测,而学术文献则相对沉默,对于CMO对公司绩效的贡献仍然犹豫不决[3,7,10]。这些喜忧参半的结果导致人们呼吁对CMO的绩效后果进行更系统的调查。本提案调查了与CMO任期相关的因素。在竞争排序模型的基础上发展理论,该模型的基本直觉是,当个人才能的竞争力与企业的战略方向一致时,工作任期会增加。我们认为,当首席营销官的技能与公司的战略转变相匹配时,公司的战略变革对公司绩效有积极的影响。我们的论点基于CEO劳动力市场的竞争性分类模型[6,11]。该模型的基本直觉是,首席执行官具有可识别的特征,这些特征表明他们的预期生产技能,并与公司竞争相匹配[4]。我们使用了2000年至2014年公司的销售数据,这些数据是从COMPUSTAT数据库的基本面年鉴部分中检索出来的[9],并测试了公司(即长期业务战略和数据驱动方法)与CMO变量(即分析能力指数(AAI)和一般能力指数(GAI))之间的相互作用对CMO任期的影响以及相互作用对绩效的影响。关注商业文化的出现,它改变了商业基础的各个方面,数据驱动的文化。具体而言,我们认为与公司战略转变相匹配的首席营销官特征与首席营销官任期和公司绩效之间存在正相关关系,因为首席营销官与公司有效匹配的杰出特征表明了他们的竞争绩效结果[4],而竞争绩效结果又与更长的任期相关。我们采用五种代理指标来衡量一般能力指数:公司数量、行业数量、CMO经验、高管职位数量和高管任期。继Custodio等人[2]之后,我们使用主成分分析[14]将五个代理简化为一维指标,提取共同成分。为了避免多重共线性[5],减小测量误差,我们采用降维方法,将五个分量改为一个分量。由于GAI指数的所有代理都是随时间变化的静态变量,因此一般能力指数是为每个CMO计算的,但对于CMO,该指数不会随时间变化。该指数是标准化的,因此平均值为零,标准差为1。AAI用同样的方法计算,使用三个代理:学位数量、学位种类和职能职业经验。为了从公司方面提取代理(公司对长期业务战略变化和数据驱动方法的估值),我们使用10-K表格中“业务部分(即项目1)”的文本分析,这是公司在公共领域的业务信息的最全面汇编。我们采用了基于词典的情感方法,该方法包括从文档中单词或短语的语义方向计算文档的方向[13],并自动以数字格式提取语义值以用于我们的分析。基于词典的方法可以手动创建[12],也可以自动创建,使用种子词来扩展单词列表[8,12],我们采用了第一种方法。我们构建了一个比例风险模型来估计预测因子对CMO保留期的影响。方程(1)中的因变量是风险率,它对某些个体是正确的。也就是说,有些人的任期结束点是不可观察的,因为他们在研究结束时仍然担任首席营销官。因此,传统的回归估计是有偏差的。此外,时变协变量(即,公司对长期业务战略的估值,公司对数据驱动方法的估值)也包括在估计中。因此,我们用比例风险模型来制定模型[1]。单个CMO的任期被认为是一个随机变量,具有p.d.f. f(t)和c.d.f. f(t),风险率为h(t) = f(t) / (1-F(t))。设h(t|x)表示具有向量x捕获的特定条件的CMO i的风险率。风险率采用以下形式:[这里的数学]其中h0(t)是基线风险率,它不依赖于x,但只捕获时间效应,β'捕获预测因子(xit)对风险率的影响。图1 (a)和(b)显示了在不涉及预测因子时使用风险模型估计的生存曲线和累积风险曲线。 在图1中,前几个月相对平缓的下降表明,只有少数cmo在前几个月离开该职位。这也可以从事件累积次数和处于危险中的次数的变化中看出。具体来说,大约三分之一的cmo在54个月内离职,大约50%的事件发生在80个月内。我们做出了以下新的贡献。首先,据我们所知,这是第一个试图确定与CMO任期增加有关的因素的研究。其次,我们使用现有的基于词典的情感分析方法来获取企业战略转型的价值观,但创建了新的词典,包括指标列表和相应的情感取向价值观,并使用新的算法来捕获我们想要检查的准确价值观。最后,本研究通过展示与公司战略方向一致的某些CMO技能的有效性,提供了管理意义。在未来的工作中,竞争风险模型可以解释退出CMO职位的不同路径。在离开首席营销官职位的首席营销官中,我们观察到77%的首席营销官跳槽或退休,23%的首席营销官留在同一家公司。我们计划用竞争风险模型对数据进行进一步调查,以观察CMO离职后或离职的原因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A study of chief marketing officer (CMO) tenure with competitive sorting model
With the average CMO tenure increasing significantly over the past decade, the business press has speculated about reasons for this climb while the academic literature has been relatively silent, remaining indecisive about the contributions of the CMO to firm performance [3, 7, 10]. These mixed results have resulted in calls for more systematic inquiry into the performance consequences of the CMO. This proposal investigates factors associated with CMO tenure. It develops theory based on competitive sorting model whose the underlying intuition is that when the competitiveness of an individual's talents aligns with a firm's strategic directions job tenure increases. We argue that the firm's strategic change has a positive impact on firm performance when the CMO has aligning skills with the firm's strategic shift. Rationales underlying our arguments rely on a competitive sorting model of the CEO labor market [6, 11]. The essential intuition of the model is that CEOs have discernable characteristics that are indicative of their expected productive skills and are matched to firms competitively [4]. We used the sales data for the firms from 2000 to 2014, which were retrieved from Fundamentals Annuals section of COMPUSTAT database [9] and tested the effects of the interaction between the firm (i.e., Long-term business strategy and Data-driven approach) and the CMO variables (i.e., Analytical Ability Index (AAI) and General Ability Index (GAI)) on CMO tenure and the performance implications of the interaction, focusing on the emergence of business culture which transforms diverse aspects of business foundations, data-driven culture. In specific, we suggest a positive relationship between the CMO's characteristics which match to the firm's strategic shifts and CMO tenure and firm performance, because CMOs' distinguished characteristics which are effectively matched to firms are the indicative of their competitive performance consequences [4], which, in turn, are associated with longer tenure. We adopted five proxies of General Ability Index: number of firms, number of industries, CMO experience, number of executive positions, and executive tenure. Following Custodio et al. [2], we reduced the five proxies into one-dimensional index using principal component analysis [14] which extracts common component. We used one component instead of five by employing the method of dimensionality reduction to avoid multicollinearity [5] and minimize measurement error. Because all the proxies for the GAI Index are static variables over time, the General Ability Index is calculated for each CMO, but the index is not varying over time for a CMO. The index is standardized and thus has zero mean and a standard deviation of 1. AAI is computed with the same method using three proxies: number of degrees, degree kind, and functional career experience. To extract the proxies from firm side (firm's valuation on the change in long-term business strategy and in data-driven approach), we use text analytics with `Business Section (i.e., Item 1)' in Form 10-K, which is the most comprehensive compilation of information on a firm's business that is in the public domain. We applied lexicon-based sentiment approach which involves calculating orientation for a document from the semantic orientation of words or phrases in the document [13] and automatically extracting the semantic values in a numeric format to our analysis. Lexicon-based approach can be created manually [12], or automatically, using seed words to expand the list of words [8, 12], and we adopted the first approach. We construct a proportional hazards model to estimate the effect of predictors on CMO tenure. The dependent variable in Equation (1) is the hazard rate, which is right censored for some individuals. That is, there are the individuals whose tenure end points are unobservable, because they still serve as a chief marketing officer at the end of the study period. Thus, traditional regression estimates will be biased. In addition, time-varying covariates (i.e., the firm's valuation for long-term business strategy, the firm's valuation for data-driven approach) are included in the estimate. Consequently, we formulate the model with proportional hazards model [1]. The tenure for an individual CMO is considered to be a random variable with p.d.f. f(t) and c.d.f. F(t), and hazard rate is h(t) = f(t) / (1-F(t)). Let h(t|x) denote the hazard rate for a CMO i with certain conditions captured by the vector x. The hazard rate takes the following form: [math here] where h0(t) is baseline hazard rate which does not depend on x but only captures time effects and β' captures the effect of predictors (xit) on the hazard rate. Figure 1 (a) and (b) illustrate a survival curve and a cumulative hazard curve which are estimated with the hazard model when no predictors are involved. In Figure 1, the relatively gentle decline in the early months indicate that there are only a few CMOs who leave from the position in the first few months. This is also indicated by changes in the cumulative number of events and number at risk. In specific, about a third CMOs left the position within 54 months, and about 50% of the total events occurred within 80 months. We make the following new contributions. First, to the best of our knowledge, this is the first study which attempts to identify the factors related to the increasing CMO tenure. Second, we employ existing lexicon-based sentiment analysis method to take the values of firms' strategic transformations but create new lexicons including the list of indicators and corresponding sentimentic orientation values and new algorithm to capture the accurate values that we would like to examine. Finally, this study offers a managerial implication by showing the effectiveness of certain CMO skills which align with firm's strategy direction. In the future work, a competing risk model can account for different paths to exiting the CMO position. Among the CMOs who leave the CMO position, we observe 77% leave for a different firm or retire and 23% stay with the same firm. We plan to further investigate the data with the competing risk model to observe the CMO's post-career or the reasons of departure from the position.
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