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Paul E. Green, Frank J. CarmoneJr., and Scott M. Smith. Multidimensional Scaling. Concepts and Applications. Boston: Allyn and Bacon, I989. Pp. viii + 407, $60.
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Paul E. Green, Frank J. CarmoneJr., and Scott M. Smith. Multidimensional Scaling. Concepts and Applications. Boston: Allyn and Bacon, I989. Pp. viii + 407, $60.
Published online by Cambridge University Press:
01 January 2025
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