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    Statistical Considerations for Climate Experiments. Part I: Scalar Tests

    Source: Journal of Climate and Applied Meteorology:;1987:;Volume( 026 ):;Issue: 004::page 464
    Author:
    Zwiers, F. W.
    ,
    Thiébaux, H. J.
    DOI: 10.1175/1520-0450(1987)026<0464:SCFCEP>2.0.CO;2
    Publisher: American Meteorological Society
    Abstract: Statistical tests used in model intercomparisons or model/climate comparisons may be either ?scalar? or ?multivariate? tests. The former are employed when testing a hypothesis about a single variable observed at a single location, or through a single derived coefficient. The latter are employed when testing a hypothesis about an entire field, or a set of derived coefficients. In this paper we examine several scalar tests for differences of mean and variance. The tests can be broadly classed as ?standard? tests which operate on samples of time averages, and ?time-series?-based tests which operate on samples of time series. The latter have the potential to be more powerful than standard tests because they use more of the information available in the sample, but they have the disadvantage that they are ?asymptotic? tests, meaning that the properties of these tests are only well known in the case of very large samples. The properties of these tests in the case of relatively small samples are examined by means of a series of Monte Carlo experiments which are meant to mimic a broad range of stochastic behavior. It is shown that the actual significance level of time-series-based tests, especially those comparing means, ran be considerably different from the nominal significance level. Models are developed which relate the true significance level of these tests to sample size and the stochastic properties of the data, and them models are used to make recommendations for the design of experiments using time-series-based tests.
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    • Statistics

      Statistical Considerations for Climate Experiments. Part I: Scalar Tests

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    contributor authorZwiers, F. W.
    contributor authorThiébaux, H. J.
    date accessioned2017-06-09T14:01:43Z
    date available2017-06-09T14:01:43Z
    date copyright1987/04/01
    date issued1987
    identifier issn0733-3021
    identifier otherams-11157.pdf
    identifier urihttp://onlinelibrary.yabesh.ir/handle/yetl/4146354
    description abstractStatistical tests used in model intercomparisons or model/climate comparisons may be either ?scalar? or ?multivariate? tests. The former are employed when testing a hypothesis about a single variable observed at a single location, or through a single derived coefficient. The latter are employed when testing a hypothesis about an entire field, or a set of derived coefficients. In this paper we examine several scalar tests for differences of mean and variance. The tests can be broadly classed as ?standard? tests which operate on samples of time averages, and ?time-series?-based tests which operate on samples of time series. The latter have the potential to be more powerful than standard tests because they use more of the information available in the sample, but they have the disadvantage that they are ?asymptotic? tests, meaning that the properties of these tests are only well known in the case of very large samples. The properties of these tests in the case of relatively small samples are examined by means of a series of Monte Carlo experiments which are meant to mimic a broad range of stochastic behavior. It is shown that the actual significance level of time-series-based tests, especially those comparing means, ran be considerably different from the nominal significance level. Models are developed which relate the true significance level of these tests to sample size and the stochastic properties of the data, and them models are used to make recommendations for the design of experiments using time-series-based tests.
    publisherAmerican Meteorological Society
    titleStatistical Considerations for Climate Experiments. Part I: Scalar Tests
    typeJournal Paper
    journal volume26
    journal issue4
    journal titleJournal of Climate and Applied Meteorology
    identifier doi10.1175/1520-0450(1987)026<0464:SCFCEP>2.0.CO;2
    journal fristpage464
    journal lastpage476
    treeJournal of Climate and Applied Meteorology:;1987:;Volume( 026 ):;Issue: 004
    contenttypeFulltext
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