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Statistical analysis of “structural change”: An annotated bibliography

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Abbreviations

AmerStat:

American Statistician

AnlsStat:

Annals of Statistics

AnnEcSoMt:

Annals of Economic and Social Measurement

AnnMathStat:

The Annals of Mathematical Statistics

ApplStat:

Applied Statistics

ASAProBuEc:

ASA Proceedings of Business and Economic Statistics Section

AstrlJSt:

Australian Journal of Statistics

BiomtrcJ:

Biometrical Journal

Biomtrcs:

Biometrics

Biomtrka:

Biometrika

CommStA:

Communications in Statistics, Part A — Theory and Methods

DecisnSc:

Decision Siences

Econmtca:

Econometrica

IEEEAuCn:

IEEE Transactions on Automatic Control

IEEEInfo:

IEEE Transactions on Information Theory

IntEconR:

International Economic Review

IntStRvw:

International Statistical Review

JAppProb:

Journal of Applied Probability

JASA:

Journal of the American Statistical Association

JBES:

Journal of Business and Economic Statistics

JEconmtcs:

Journal of Econometrics

JIMaAppl:

Journal of the Institute of Mathematics and its Applications

JMultiAn:

Journal of Multivariate Analysis

JRRS-B:

Journal of the Royal Statistical Society, Series B

JStCmpSm:

Journal of Statistical Computation and Simulation

JStPlInf:

Journal of Statistical Planning and Inference

JTimSrAn:

Journal of Time Series Analysis

MaOpfStS:

Mathematische Operationsforschung und Statistik, Series Statistics

REcon&St:

Review of Economics and Statistics

ScandJSt:

Scandinavian Journal of Statistics

SqtlAnly:

Sequential Analysis

Technmcs:

Technometrics

ThProbAp:

Theory of Probability and its Applications

Zeit Wahr:

Zeitschrift für Wahrscheinlichkeitstheorie und Verwandte Gebiete

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Hackl, P., Westlund, A.H. Statistical analysis of “structural change”: An annotated bibliography. Empirical Economics 14, 167–192 (1989). https://doi.org/10.1007/BF01980595

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