Detecting Influential Observations and Outliers
Summary
This chapter includes the following topics:
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Theoretical Foundations
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Application: An Intercountry Lifecycle Savings Function
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Appendix 2A: Additional Theoretical Background
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Appendix 2B: Computational Elements
Citing Literature
Number of times cited according to CrossRef: 5
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