In Pursuit of Enhanced Customer Retention Management: Review, Key Issues, and Future Directions
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Bruce G. S. Hardie | Foster Provost | Oded Netzer | Scott A. Neslin | Eva Ascarza | David Neal | Aurélie Lemmens | Barak Libai | Zachery Anderson | Peter S. Fader | Sunil Gupta | Rom Schrift
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