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Showing papers by "Vijay Gurbaxani published in 2015"


Journal ArticleDOI
TL;DR: It is found that contract duration is indeed associated with structural and positional embeddedness of participant firms, with the relational embeddeds of the buyer-seller dyad, and with the duration of other contracts to which it is connected through common firms.
Abstract: This paper presents new evidence on the role of embeddedness in predicting contract duration in the context of Information Technology (IT) Outsourcing. Contract duration is a strategic decision that aligns interests of clients and vendors, providing the benefits of business continuity to clients and incentives to undertake relationship specific investments for vendors. Considering the salience of this phenomenon, there has been limited empirical scrutiny into how contract duration is awarded. We posit that clients and vendors obtain two benefits from being embedded in an inter-organizational network. First, the learning and experience accumulated from being embedded in client-vendor network could mitigate the challenges in managing longer-term contracts. Second, the network serves as a reputation system that can stratify vendors according to their trustworthiness and reliability, which is important in longer term arrangements. We analyze a dataset of 22039 outsourcing contracts implemented between 1989 and 2008. We find that contract duration is indeed associated with structural and positional embeddedness of participant firms, with the relational embeddedness of the buyer-seller dyad and with the duration of other contracts to which it is connected through common firms. Given the nature of our data, identification using traditional OLS based approaches is difficult given the unobserved errors being clustered along two non-nested dimensions and the autocorrelation in a firm’s decision (here the contract) with those of contracts in its reference group. We employ a multi-way cluster robust estimation and a network auto-regressive estimation to address these issues. Implications for literature and practice are discussed.

54 citations


Journal ArticleDOI
TL;DR: In this paper, the role of embeddedness in predicting contract duration in the context of information technology outsourcing is examined, and it is shown that contract duration is associated with structural and positional embeddedness of participant firms, with the relational embeddedness, and with the duration of other contracts to which it is connected through common firms.
Abstract: This paper presents new evidence on the role of embeddedness in predicting contract duration in the context of information technology outsourcing. Contract duration is a strategic decision that aligns interests of clients and vendors, providing the benefits of business continuity to clients and incentives to undertake relationship specific investments for vendors. Considering the salience of this phenomenon, there has been limited empirical scrutiny of how contract duration is awarded. We posit that clients and vendors obtain two benefits from being embedded in an interorganizational network. First, the learning and experience accumulated from being embedded in a client-vendor network could mitigate the challenges in managing longer term contracts. Second, the network serves as a reputation system that can stratify vendors according to their trustworthiness and reliability, which is important in longer term arrangements. In particular, we attempt to make a substantive contribution to the literature by theorizing about embeddedness at four distinct levels: structural embeddedness at the node level, relational embeddedness at the dyad level, contractual embeddedness at the level of a neighborhood of contracts, and finally, positional embeddedness at the level of the entire network. We analyze a data set of 22,039 outsourcing contracts implemented between 1989 and 2008. We find that contract duration is indeed associated with structural and positional embeddedness of participant firms, with the relational embeddedness of the buyer-seller dyad, and with the duration of other contracts to which it is connected through common firms. Given the nature of our data, identification using traditional ordinary least squares based approaches is difficult given the unobserved errors clustered along two nonnested dimensions and the autocorrelation in a firm's decision here the contract with those of contracts in its reference group. We use a multiway cluster robust estimation and a network auto-regressive estimation to address these issues. Implications for literature and practice are discussed.

44 citations