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Attractiveness in business-to-business markets : conceptual development and empirical investigationToth, Zsofia January 2015 (has links)
Attractiveness matters in business markets, because firms do not dedicate resources equally to all partners. Instead they invest more resources in partners with higher relational attractiveness. Firms need to become attractive in order to gain access to more resources or to be able to work with more skilled or reputable partners. This dissertation studies the construct of relational attractiveness of the customer (RAC), defined as the attractiveness of a business relationship with a particular customer in the eyes of the supplier. The research also investigates corporate online references (COR), because gaining powerful referrals is one of the driving forces behind creating attractiveness in business markets. The study is a three-stage research project drawing on an empirical investigation comprising two focus groups, 79 interviews, a survey of 107 suppliers and online referral data from 1002 companies. These studies investigate the conditions and configurations leading to high or low relational attractiveness, and the motivational conditions and structure of a specific corporate online referral network. Bearing in mind that attractiveness exists in the eyes of the beholder, Study I resolves the previously unclarified problem of how attractiveness can be achieved in different ways. Social Exchange Theory helps to identify conditions of RAC: Trust, Dependency, Financial, Non-Financial Rewards and Costs. In Study II conditions of Trust and Dependency are further developed into Relational Fit and the Comparison Level of Alternatives that address the mutuality and network perspectives of relationship development. The time perspective is introduced to the configurational analysis of RAC through the Maturity condition. As it is revealed in Study I and II, Nonfinancial Rewards are important in creating attractiveness and one of their essential forms is referrals that are addressed in more detail in Study III. This PhD research takes a configurational approach to attractiveness and explores different causal recipes in order to reach the same outcome. In order to investigate the relational complexity of attractiveness, fuzzy set Qualitative Comparative Analysis (fsQCA) is applied throughout the three studies combined with some other methods, such as content analysis and Social Network Analysis (SNA). QCA is a data analytic strategy that combines within-case analysis and formalised cross-case studies in order to identify multiple configurations leading to the same outcome. Hence, QCA deals more efficiently with the equifinality of complex business problems compared with traditional data analysis methods. Equifinality means that there are various ways in the causal system of achieving the desired outcome. QCA is sufficient in handling methodological challenges such as multi-causality (an outcome of interest rarely has a single cause), interrelatedness (causes are usually not independent of one another) and asymmetry (a specific cause may have different effects on the outcome depending on the context). By challenging existing knowledge, the results show that there is no one best way to achieve relational attractiveness. It is achievable even if Trust and Financial Rewards are not present. Very high RAC was typically achieved in less mature relationships. During the initiation of referral relationships in the case of COR, the expected increase in the initiators` attractiveness in the eyes of potential future partners also plays a vital role. The generalizability of the findings has some limitations, especially regarding the qualitative study where the results are appropriate to falsify some theories (for example, the primary importance of Financial Rewards) but their impact is more related to theoretical development than to statistical generalizability.
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一個以聲譽為基礎的協同合作信任夥伴選取模式 / A Reputation-based Model for Selecting Trusted Collaborative Partners陳樂惠, Chen, Le Hui Unknown Date (has links)
協同合作(collaboration)是一個以知識為基礎的互動及建構過程,從1990年中葉起在供應鏈中就被廣泛運用在各項議題中。協同供應鏈成員間的關係主要建立在專案上,彼此間可能沒有合作過的經驗,未來也可能沒有再次合作的機會;事實上,選擇值得信任的合作夥伴是協同供應鏈邁向成功的重要步驟。本研究發展了一個選取信任合作夥伴的模式,在於企業發現新的商業機會時,能選擇一個以往沒有合作經驗但具有高度初始信任(initial trust)的候選人。該模式主要採用聲譽系統(reputation system)和推薦網絡(referral networks)來選取最具有良好聲譽的候選人。我們的模式首先是利用推薦網絡蒐尋到與候選人合作過的第三者來取得候選人的主觀及客觀評選資料,接著利用蒐集到的資料計算出初始信任分數最高的候選人作為協同合作夥伴。在實驗中証實本研究確實可以協助企業選取到具有良好特質的候選人,同時本研究也找出了影響實驗結果的關鍵因素及其值。 / Collaboration is an interactive, constructive and knowledge-based process that has been widely discussed since the mid 1990s. Relationships among participants in the collaborative supply chain are based on projects; with participants have neither histories of interaction, nor any plan for future cooperation. However, selecting a right partner is a critical starting point for successful collaboration in supply chain management. This study develops a Reputation-Based Partner Selection Model (RBPS model) for selecting unknown collaborative partners to explore a new business opportunity, ensure that the partners have high levels of initial trust. The proposed model utilizes the referral networks and reputation system to identify the objective and subjective testimonies of partner candidates from third parties who had previously collaborated with the candidates. These information elements are aggregated into an initial-trust score, and the candidate with the highest score is selected to be a collaborative partner. The experiments were designed to test the model that can help the requestor enterprise to select a partner with the highest initial trust among multiple candidates. The results showed that the candidate, with fine temperament in three trust types (as competence, goodwill and predictability), was selected far more often than other competitors after multiple tests of computer simulations. Additionally, the critical factors and values that most affect the results of RBPS model to select the most reputable candidates were identified.
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