A dyadic segmentation approach to business partnerships

J. Aurifeille, C. Medlin
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引用次数: 13

Abstract

In business science, the studied objects are often groups of partners rather than independent firms. Extending classical segmentation to these polyads raises conceptual problems, principally: defining what should be consid- ered as common or specific at the partners' and at the segment levels. The general approaches consist either in merging partners characteristics and performances into a single macro-object, thus loosing their specific contributions to each partner's performance, or in modelling partners' performance as if their models were inde- pendent. As a step to understanding, how partnership influences firms' perform- ance, the dyadic (i.e. two partners') case is studied. First, some theoretical issues concerning the degrees of individual and contributive interest in a dyadic popula- tion are discussed. Next, partnership's conceptualisation is based upon two models for each firm: a "self-model" that reflects how the firm's characteristics explain its own performance, and a "contributive-model" model that reflects how these characteristics influence the partner's performance. This allows definition of three relationship modes: merging, teaming and sharing. Subsequently, dyad segmenta- tion strategies are discussed according to their capacity to reflect the modes of part- nership and a dyadic clusterwise regression method, based on a genetic algorithm, is presented. Finally, the method is illustrated empirically using actual data of busi- ness partners in the software market.
商业伙伴关系的二元分割方法
在商业科学中,研究对象通常是一群合伙人,而不是独立的公司。将经典分割扩展到这些多线体会引起概念性问题,主要是:在伙伴和分段级别上定义什么应该被认为是共同的或特定的。一般的方法包括将合作伙伴的特征和绩效合并到一个单一的宏观对象中,从而失去他们对每个合作伙伴绩效的具体贡献,或者将合作伙伴的绩效建模,就好像他们的模型是独立的一样。作为理解合伙企业如何影响企业绩效的一步,本文研究了二元(即两个合伙人)的案例。首先,讨论了二元种群中个体利益和贡献利益程度的一些理论问题。其次,合伙人的概念化是基于每个公司的两个模型:一个是反映公司特征如何解释其自身绩效的“自我模型”,另一个是反映这些特征如何影响合伙人绩效的“贡献模型”。这允许定义三种关系模式:合并、团队和共享。然后,根据二元分割策略反映部分所有权模式的能力,讨论了二元分割策略,并提出了一种基于遗传算法的二元聚类回归方法。最后,利用软件市场中商业伙伴的实际数据对该方法进行了实证验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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