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'''Analysis of data''' is a process of inspecting, cleaning, transforming, and modeling '''[[data]]''' with the goal of discovering useful [[information]], suggesting conclusions, and supporting decision making. Data analysis has multiple facets and approaches, encompassing diverse techniques under a variety of names, in different business, science, and social science domains.
'''Data analysis''' is the act of transforming '''[[data]]''' with the aim of [[Extraction|extracting]] useful [[information]] and facilitating [[conclusions]].
 
   
Depending on the type of data and the question, this might include application of [[Statistics|statistical]] methods, [[curve fitting]], selecting or discarding certain subsets based on specific [[criterion|criteria]], or other techniques.
+
[[Data mining]] is a particular data analysis technique that focuses on modeling and knowledge discovery for predictive rather than purely descriptive purposes. In [[statistics|statistical applications]], some people divide data analysis into [[descriptive statistics]], [[exploratory data analysis]] (EDA), and [[confirmatory data analysis]] (CDA). EDA focuses on discovering new features in the data and CDA on confirming or falsifying existing hypotheses. [[Predictive analytics]] focuses on application of statistical or structural models for predictive forecasting or classification, while [[text analytics]] applies statistical, linguistic, and structural techniques to extract and classify information from textual sources, a species of [[unstructured data]]. All are varieties of data analysis.
   
Data [[Visualization (graphic)|visualization]] is sometimes an important part of data analysis, especially in the case of [[explorative data analysis]].
+
[[Data integration]] is a precursor to data analysis, and data analysis is closely linked to [[data visualization]] and data dissemination. The term ''data analysis'' is sometimes used as a synonym for [[data modeling]].
  +
  +
==The process of data analysis==
  +
Data analysis is a [[Process theory|process]], within which several phases can be distinguished:<ref>Adèr, 2008, p. 334-335.</ref>
  +
  +
==Data cleaning==
  +
The need for data cleaning arises from problems in the way that data is entered and stored. Data cleaning is process of preventing and correcting these errors. Common tasks include record matching, deduplication, and column segmentation.<ref>{{cite web|title=Data Cleaning|url=http://research.microsoft.com/en-us/projects/datacleaning/|publisher=Microsoft Research|accessdate=26 October 2013}}</ref> There are several types of data cleaning that depend on the type of data. For Quantitative data methods for outlier detection can be used to get rid of likely incorrectly entered data. For textual data spellcheckers can used to lessen the amount of mistyped words, but it is harder to tell if the word themselves are correct. <ref>{{cite journal|last=Hellerstein|first=Joseph|title=Quantitative Data Cleaning for Large Databases|journal=EECS Computer Science Division|date=27|year=2008|month=February|page=3|url=http://db.cs.berkeley.edu/jmh/papers/cleaning-unece.pdf|accessdate=26 October 2013}}</ref>
  +
  +
==Initial data analysis==
  +
{{Main|Initial data analysis}}
  +
The most important distinction between the initial data analysis phase and the main analysis phase, is that during initial data analysis one refrains from any analysis that are aimed at answering the original research question. The initial data analysis phase is guided by the following four questions:<ref>Adèr, 2008, p. 337.</ref>
  +
  +
===Quality of data===
  +
The quality of the data should be checked as early as possible. Data quality can be assessed in several ways, using different types of analyses: frequency counts, descriptive statistics (mean, standard deviation, median), normality (skewness, kurtosis, frequency histograms, n: variables are compared with coding schemes of variables external to the data set, and possibly corrected if coding schemes are not comparable.
  +
*Test for [[common-method variance]].
  +
The choice of analyses to assess the data quality during the initial data analysis phase depends on the analyses that will be conducted in the main analysis phase.<ref>Adèr, 2008, p. 338-341.</ref>
  +
  +
===Quality of measurements===
  +
The quality of the [[measuring instrument|measurement instruments]] should only be checked during the initial data analysis phase when this is not the focus or research question of the study. One should check whether structure of measurement instruments corresponds to structure reported in the literature.<br />
  +
There are two ways to assess measurement quality:
  +
*Confirmatory factor analysis
  +
*Analysis of homogeneity ([[internal consistency]]), which gives an indication of the [[Reliability (statistics)|reliability]] of a measurement instrument. During this analysis, one inspects the variances of the items and the scales, the [[Cronbach's alpha|Cronbach's &alpha;]] of the scales, and the change in the Cronbach's alpha when an item would be deleted from a scale.<ref>Adèr, 2008, p. 341-3342.</ref>
  +
  +
===Initial transformations===
  +
After assessing the quality of the data and of the measurements, one might decide to impute missing data, or to perform initial transformations of one or more variables, although this can also be done during the main analysis phase.<ref>Adèr, 2008, p. 344.</ref><br />
  +
Possible transformations of variables are:<ref>Tabachnick & Fidell, 2007, p. 87-88.</ref>
  +
*Square root transformation (if the distribution differs moderately from normal)
  +
*Log-transformation (if the distribution differs substantially from normal)
  +
*Inverse transformation (if the distribution differs severely from normal)
  +
*Make categorical (ordinal / dichotomous) (if the distribution differs severely from normal, and no transformations help)
  +
  +
===Did the implementation of the study fulfill the intentions of the research design?===
  +
One should check the success of the [[randomization]] procedure, for instance by checking whether background and substantive variables are equally distributed within and across groups. <br />
  +
If the study did not need and/or use a randomization procedure, one should check the success of the non-random sampling, for instance by checking whether all subgroups of the population of interest are represented in sample.<br />
  +
Other possible data distortions that should be checked are:
  +
*[[Dropout (electronics)|dropout]] (this should be identified during the initial data analysis phase)
  +
*Item [[Response rate|nonresponse]] (whether this is random or not should be assessed during the initial data analysis phase)
  +
*Treatment quality (using [[manipulation check]]s).<ref>Adèr, 2008, p. 344-345.</ref>
  +
  +
===Characteristics of data sample===
  +
In any report or article, the structure of the sample must be accurately described. It is especially important to exactly determine the structure of the sample (and specifically the size of the subgroups) when subgroup analyses will be performed during the main analysis phase.<br />
  +
The characteristics of the data sample can be assessed by looking at:
  +
*Basic statistics of important variables
  +
*Scatter plots
  +
*Correlations and associations
  +
*Cross-tabulations<ref>Adèr, 2008, p. 345.</ref>
  +
  +
===Final stage of the initial data analysis===
  +
During the final stage, the findings of the initial data analysis are documented, and necessary, preferable, and possible corrective actions are taken.<br />
  +
Also, the original plan for the main data analyses can and should be specified in more detail and/or rewritten.<br /> In order to do this, several decisions about the main data analyses can and should be made:
  +
*In the case of non-[[Normal distribution|normal]]s: should one [[Data transformation (statistics)|transform]] variables; make variables categorical (ordinal/dichotomous); adapt the analysis method?
  +
*In the case of [[missing data]]: should one neglect or impute the missing data; which imputation technique should be used?
  +
*In the case of [[outlier]]s: should one use robust analysis techniques?
  +
*In case items do not fit the scale: should one adapt the measurement instrument by omitting items, or rather ensure comparability with other (uses of the) measurement instrument(s)?
  +
*In the case of (too) small subgroups: should one drop the hypothesis about inter-group differences, or use small sample techniques, like exact tests or [[bootstrapping (statistics)|bootstrapping]]?
  +
*In case the [[randomization]] procedure seems to be defective: can and should one calculate [[Propensity score matching|propensity scores]] and include them as covariates in the main analyses?<ref>Adèr, 2008, p. 345-346.</ref>
  +
  +
===Analyses===
  +
Several analyses can be used during the initial data analysis phase:<ref>Adèr, 2008, p. 346-347.</ref>
  +
*Univariate statistics (single variable)
  +
*Bivariate associations (correlations)
  +
*Graphical techniques (scatter plots)
  +
  +
It is important to take the measurement levels of the variables into account for the analyses, as special statistical techniques are available for each level:<ref>Adèr, 2008, p. 349-353.</ref>
  +
  +
*Nominal and ordinal variables
  +
**Frequency counts (numbers and percentages)
  +
**Associations
  +
***circumambulations (crosstabulations)
  +
***hierarchical loglinear analysis (restricted to a maximum of 8 variables)
  +
***loglinear analysis (to identify relevant/important variables and possible confounders)
  +
**Exact tests or bootstrapping (in case subgroups are small)
  +
**Computation of new variables
  +
  +
*Continuous variables
  +
**Distribution
  +
***Statistics (M, SD, variance, skewness, kurtosis)
  +
***Stem-and-leaf displays
  +
***Box plots
  +
  +
===Nonlinear analysis===
  +
Nonlinear analysis will be necessary when the data is recorded from a [[nonlinear system]]. Nonlinear systems can exhibit complex dynamic effects including [[bifurcation theory|bifurcations]], [[chaos theory|chaos]], [[harmonics]] and [[subharmonics]] that cannot be analyzed using simple linear methods. Nonlinear data analysis is closely related to [[nonlinear system identification]].<ref name="SAB1">Billings S.A. "Nonlinear System Identification: NARMAX Methods in the Time, Frequency, and Spatio-Temporal Domains". Wiley, 2013</ref>
  +
  +
==Main data analysis==
  +
In the main analysis phase analyses aimed at answering the research question are performed as well as any other relevant analysis needed to write the first draft of the research report.<ref>Adèr, 2008, p. 363.</ref>
  +
  +
===Exploratory and confirmatory approaches===
  +
In the main analysis phase either an exploratory or confirmatory approach can be adopted. Usually the approach is decided before data is collected. In an exploratory analysis no clear hypothesis is stated before analysing the data, and the data is searched for models that describe the data well. In a confirmatory analysis clear hypotheses about the data are tested.
  +
  +
[[Exploratory data analysis]] should be interpreted carefully. When testing multiple models at once there is a high chance on finding at least one of them to be significant, but this can be due to a [[type 1 error]]. It is important to always adjust the significance level when testing multiple models with, for example, a [[bonferroni correction]]. Also, one should not follow up an exploratory analysis with a confirmatory analysis in the same dataset. An exploratory analysis is used to find ideas for a theory, but not to test that theory as well. When a model is found exploratory in a dataset, then following up that analysis with a comfirmatory analysis in the same dataset could simply mean that the results of the comfirmatory analysis are due to the same [[type 1 error]] that resulted in the exploratory model in the first place. The comfirmatory analysis therefore will not be more informative than the original exploratory analysis.<ref>Adèr, 2008, p. 361-362.</ref>
  +
  +
===Stability of results===
  +
It is important to obtain some indication about how generalizable the results are.<ref>Adèr, 2008, p. 368-371.</ref> While this is hard to check, one can look at the stability of the results. Are the results reliable and reproducible? There are two main ways of doing this:
  +
* [[Cross-validation (statistics)|Cross-validation]]: By splitting the data in multiple parts we can check if analyzes (like a fitted model) based on one part of the data generalize to another part of the data as well.
  +
* [[Sensitivity analysis]]: A procedure to study the behavior of a system or model when global parameters are (systematically) varied. One way to do this is with bootstrapping.
  +
  +
===Statistical methods===
  +
Many statistical methods have been used for statistical analyses. A very brief list of four of the more popular methods is:
  +
* [[General linear model]]: A widely used model on which various methods are based (e.g. [[t test]], [[ANOVA]], [[ANCOVA]], [[MANOVA]]). Usable for assessing the effect of several predictors on one or more continuous dependent variables.
  +
* [[Generalized linear model]]: An extension of the general linear model for discrete dependent variables.
  +
* [[Structural equation modelling]]: Usable for assessing latent structures from measured manifest variables.
  +
* [[Item response theory]]: Models for (mostly) assessing one latent variable from several binary measured variables (e.g. an exam).
  +
  +
==Free software for data analysis==
  +
* [[Data Applied]] - an online data mining and data visualization solution.
  +
* [[DevInfo]] - a database system endorsed by the [[United Nations Development Group]] for monitoring and analyzing human development.
  +
* [[ELKI]] - data mining framework in Java with data mining oriented visualization functions.
  +
* [[KNIME]] - the Konstanz Information Miner, a user friendly and comprehensive data analytics framework.
  +
* [[R (programming language)|R]] - a programming language and software environment for statistical computing and graphics.
  +
  +
  +
==Commercial software for data analysis==
  +
{{advert|section|date=August 2013}}
  +
* [Infobright] offers a high performance analytic database is designed for analyzing large volumes of machine-generated data
  +
* [http://www.auditware.co.uk IT Audit/Data analysis software]
  +
  +
==Education==
  +
  +
In [[education]], most educators have access to a [[data system]] for the purpose of analyzing student data.<ref>Aarons, D. (2009). [http://search.proquest.com/docview/202710770?accountid=28180 Report finds states on course to build pupil-data systems.] ''Education Week, 29''(13), 6.</ref> These data systems present data to educators in an [[over-the-counter data]] format (embedding labels, supplemental documentation, and a help system and making key package/display and content decisions) to improve the accuracy of educators’ data analyses.<ref>Rankin, J. (2013, March 28). [https://sas.elluminate.com/site/external/recording/playback/link/table/dropin?sid=2008350&suid=D.4DF60C7117D5A77FE3AED546909ED2 How data Systems & reports can either fight or propagate the data analysis error epidemic, and how educator leaders can help.] ''Presentation conducted from Technology Information Center for Administrative Leadership (TICAL) School Leadership Summit.''</ref>
   
   
   
 
==See also==
 
==See also==
*[[Scientific computing]]
+
{{wikiversity}}
  +
<div style="-moz-column-count:2; column-count:2;">
  +
*[[Analytics]]
  +
*[[Censoring (statistics)]]
  +
*[[Computational physics]]
 
*[[Data acquisition]]
 
*[[Data acquisition]]
  +
*[[Data governance]]
  +
*[[Data mining]]
  +
*[[Data Presentation Architecture]]
  +
*[[Digital signal processing]]
  +
*[[Dimension reduction]]
  +
*[[Early case assessment]]
  +
*[[Exploratory data analysis]]
  +
*[[Fourier analysis]]
  +
*[[Machine learning]]
  +
*[[Multilinear principal component analysis|Multilinear PCA]]
  +
*[[Multilinear subspace learning]]
  +
*[[Nearest neighbor search]]
  +
*[[Nonlinear system identification]]
  +
*[[Predictive analytics]]
  +
*[[Principal component analysis]]
  +
*[[Qualitative research]]
  +
*[[Scientific computing]]
  +
*[[Structured data analysis (statistics)]]
  +
*[[system identification]]
  +
*[[Test method]]
  +
*[[Text analytics]]
  +
*[[Unstructured data]]
  +
*[[Wavelet]]
  +
</div>
   
  +
==References==
  +
{{reflist}}
  +
* [[Adèr, H.J.]] (2008). Chapter 14: Phases and initial steps in data analysis. In H.J. Adèr & G.J. Mellenbergh (Eds.) (with contributions by D.J. Hand), Advising on Research Methods: A consultant's companion (pp.&nbsp;333–356). Huizen, the Netherlands: Johannes van Kessel Publishing.
  +
* [[Adèr, H.J.]] (2008). Chapter 15: The main analysis phase. In H.J. Adèr & G.J. Mellenbergh (Eds.) (with contributions by D.J. Hand), Advising on Research Methods: A consultant's companion (pp.&nbsp;333–356). Huizen, the Netherlands: Johannes van Kessel Publishing.
  +
* Tabachnick, B.G. & Fidell, L.S. (2007). Chapter 4: Cleaning up your act. Screening data prior to analysis. In B.G. Tabachnick & L.S. Fidell (Eds.), Using Multivariate Statistics, Fifth Edition (pp.&nbsp;60–116). Boston: Pearson Education, Inc. / Allyn and Bacon.
   
[[Category:Statistics]]
+
==Further reading==
  +
* [[Adèr, H.J.]] & [[Gideon J. Mellenbergh|Mellenbergh, G.J.]] (with contributions by D.J. Hand) (2008). Advising on Research Methods: A consultant's companion. Huizen, the Netherlands: Johannes van Kessel Publishing.
  +
* [[ASTM International]] (2002). ''Manual on Presentation of Data and Control Chart Analysis'', MNL 7A, ISBN 0-8031-2093-1
  +
* Juran, Joseph M.; Godfrey, A. Blanton (1999). ''Juran's Quality Handbook''. 5th ed. New York: McGraw Hill. ISBN 0-07-034003-X
  +
* Lewis-Beck, Michael S. (1995). ''Data Analysis: an Introduction'', Sage Publications Inc, ISBN 0-8039-5772-6
  +
* NIST/SEMATEK (2008) [http://www.itl.nist.gov/div898/handbook/ ''Handbook of Statistical Methods''],
  +
* [[Richard Veryard]] (1984). ''Pragmatic data analysis''. Oxford : Blackwell Scientific Publications. ISBN 0-632-01311-7
  +
* Tabachnick, B.G. & Fidell, L.S. (2007). Using Multivariate Statistics, Fifth Edition. Boston: Pearson Education, Inc. / Allyn and Bacon, ISBN 978-0-205-45938-4
  +
* {{cite news|url=http://www.businessweek.com/magazine/data-analytics-crunching-the-future-09082011.html|title=Data Analytics: Crunching the Future|last=Vance|date=September 08, 2011,|publisher=Bloomberg Businessweek|accessdate=26 September 2011}}
  +
*Hair, Joseph (2008). Marketing Research 4th ed. McGraw Hill. [http://answers.mheducation.com/marketing/marketing-research/data-analysis-testing-association ''Data Analysis: Testing for Association''] ISBN 0-07-340470-5
  +
  +
[[Category:Data analysis| ]]
 
[[Category:Scientific method]]
 
[[Category:Scientific method]]
  +
  +
  +
{{enWP|Data analysis}}

Latest revision as of 09:49, November 12, 2013

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This article is in need of attention from a psychologist/academic expert on the subject.
Please help recruit one, or improve this page yourself if you are qualified.
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.

Analysis of data is a process of inspecting, cleaning, transforming, and modeling data with the goal of discovering useful information, suggesting conclusions, and supporting decision making. Data analysis has multiple facets and approaches, encompassing diverse techniques under a variety of names, in different business, science, and social science domains.

Data mining is a particular data analysis technique that focuses on modeling and knowledge discovery for predictive rather than purely descriptive purposes. In statistical applications, some people divide data analysis into descriptive statistics, exploratory data analysis (EDA), and confirmatory data analysis (CDA). EDA focuses on discovering new features in the data and CDA on confirming or falsifying existing hypotheses. Predictive analytics focuses on application of statistical or structural models for predictive forecasting or classification, while text analytics applies statistical, linguistic, and structural techniques to extract and classify information from textual sources, a species of unstructured data. All are varieties of data analysis.

Data integration is a precursor to data analysis, and data analysis is closely linked to data visualization and data dissemination. The term data analysis is sometimes used as a synonym for data modeling.

The process of data analysisEdit

Data analysis is a process, within which several phases can be distinguished:[1]

Data cleaningEdit

The need for data cleaning arises from problems in the way that data is entered and stored. Data cleaning is process of preventing and correcting these errors. Common tasks include record matching, deduplication, and column segmentation.[2] There are several types of data cleaning that depend on the type of data. For Quantitative data methods for outlier detection can be used to get rid of likely incorrectly entered data. For textual data spellcheckers can used to lessen the amount of mistyped words, but it is harder to tell if the word themselves are correct. [3]

Initial data analysisEdit

Main article: Initial data analysis

The most important distinction between the initial data analysis phase and the main analysis phase, is that during initial data analysis one refrains from any analysis that are aimed at answering the original research question. The initial data analysis phase is guided by the following four questions:[4]

Quality of dataEdit

The quality of the data should be checked as early as possible. Data quality can be assessed in several ways, using different types of analyses: frequency counts, descriptive statistics (mean, standard deviation, median), normality (skewness, kurtosis, frequency histograms, n: variables are compared with coding schemes of variables external to the data set, and possibly corrected if coding schemes are not comparable.

The choice of analyses to assess the data quality during the initial data analysis phase depends on the analyses that will be conducted in the main analysis phase.[5]

Quality of measurementsEdit

The quality of the measurement instruments should only be checked during the initial data analysis phase when this is not the focus or research question of the study. One should check whether structure of measurement instruments corresponds to structure reported in the literature.
There are two ways to assess measurement quality:

  • Confirmatory factor analysis
  • Analysis of homogeneity (internal consistency), which gives an indication of the reliability of a measurement instrument. During this analysis, one inspects the variances of the items and the scales, the Cronbach's α of the scales, and the change in the Cronbach's alpha when an item would be deleted from a scale.[6]

Initial transformationsEdit

After assessing the quality of the data and of the measurements, one might decide to impute missing data, or to perform initial transformations of one or more variables, although this can also be done during the main analysis phase.[7]
Possible transformations of variables are:[8]

  • Square root transformation (if the distribution differs moderately from normal)
  • Log-transformation (if the distribution differs substantially from normal)
  • Inverse transformation (if the distribution differs severely from normal)
  • Make categorical (ordinal / dichotomous) (if the distribution differs severely from normal, and no transformations help)

Did the implementation of the study fulfill the intentions of the research design?Edit

One should check the success of the randomization procedure, for instance by checking whether background and substantive variables are equally distributed within and across groups.
If the study did not need and/or use a randomization procedure, one should check the success of the non-random sampling, for instance by checking whether all subgroups of the population of interest are represented in sample.
Other possible data distortions that should be checked are:

  • dropout (this should be identified during the initial data analysis phase)
  • Item nonresponse (whether this is random or not should be assessed during the initial data analysis phase)
  • Treatment quality (using manipulation checks).[9]

Characteristics of data sampleEdit

In any report or article, the structure of the sample must be accurately described. It is especially important to exactly determine the structure of the sample (and specifically the size of the subgroups) when subgroup analyses will be performed during the main analysis phase.
The characteristics of the data sample can be assessed by looking at:

  • Basic statistics of important variables
  • Scatter plots
  • Correlations and associations
  • Cross-tabulations[10]

Final stage of the initial data analysisEdit

During the final stage, the findings of the initial data analysis are documented, and necessary, preferable, and possible corrective actions are taken.
Also, the original plan for the main data analyses can and should be specified in more detail and/or rewritten.
In order to do this, several decisions about the main data analyses can and should be made:

  • In the case of non-normals: should one transform variables; make variables categorical (ordinal/dichotomous); adapt the analysis method?
  • In the case of missing data: should one neglect or impute the missing data; which imputation technique should be used?
  • In the case of outliers: should one use robust analysis techniques?
  • In case items do not fit the scale: should one adapt the measurement instrument by omitting items, or rather ensure comparability with other (uses of the) measurement instrument(s)?
  • In the case of (too) small subgroups: should one drop the hypothesis about inter-group differences, or use small sample techniques, like exact tests or bootstrapping?
  • In case the randomization procedure seems to be defective: can and should one calculate propensity scores and include them as covariates in the main analyses?[11]

AnalysesEdit

Several analyses can be used during the initial data analysis phase:[12]

  • Univariate statistics (single variable)
  • Bivariate associations (correlations)
  • Graphical techniques (scatter plots)

It is important to take the measurement levels of the variables into account for the analyses, as special statistical techniques are available for each level:[13]

  • Nominal and ordinal variables
    • Frequency counts (numbers and percentages)
    • Associations
      • circumambulations (crosstabulations)
      • hierarchical loglinear analysis (restricted to a maximum of 8 variables)
      • loglinear analysis (to identify relevant/important variables and possible confounders)
    • Exact tests or bootstrapping (in case subgroups are small)
    • Computation of new variables
  • Continuous variables
    • Distribution
      • Statistics (M, SD, variance, skewness, kurtosis)
      • Stem-and-leaf displays
      • Box plots

Nonlinear analysisEdit

Nonlinear analysis will be necessary when the data is recorded from a nonlinear system. Nonlinear systems can exhibit complex dynamic effects including bifurcations, chaos, harmonics and subharmonics that cannot be analyzed using simple linear methods. Nonlinear data analysis is closely related to nonlinear system identification.[14]

Main data analysisEdit

In the main analysis phase analyses aimed at answering the research question are performed as well as any other relevant analysis needed to write the first draft of the research report.[15]

Exploratory and confirmatory approachesEdit

In the main analysis phase either an exploratory or confirmatory approach can be adopted. Usually the approach is decided before data is collected. In an exploratory analysis no clear hypothesis is stated before analysing the data, and the data is searched for models that describe the data well. In a confirmatory analysis clear hypotheses about the data are tested.

Exploratory data analysis should be interpreted carefully. When testing multiple models at once there is a high chance on finding at least one of them to be significant, but this can be due to a type 1 error. It is important to always adjust the significance level when testing multiple models with, for example, a bonferroni correction. Also, one should not follow up an exploratory analysis with a confirmatory analysis in the same dataset. An exploratory analysis is used to find ideas for a theory, but not to test that theory as well. When a model is found exploratory in a dataset, then following up that analysis with a comfirmatory analysis in the same dataset could simply mean that the results of the comfirmatory analysis are due to the same type 1 error that resulted in the exploratory model in the first place. The comfirmatory analysis therefore will not be more informative than the original exploratory analysis.[16]

Stability of resultsEdit

It is important to obtain some indication about how generalizable the results are.[17] While this is hard to check, one can look at the stability of the results. Are the results reliable and reproducible? There are two main ways of doing this:

  • Cross-validation: By splitting the data in multiple parts we can check if analyzes (like a fitted model) based on one part of the data generalize to another part of the data as well.
  • Sensitivity analysis: A procedure to study the behavior of a system or model when global parameters are (systematically) varied. One way to do this is with bootstrapping.

Statistical methodsEdit

Many statistical methods have been used for statistical analyses. A very brief list of four of the more popular methods is:

Free software for data analysisEdit

  • Data Applied - an online data mining and data visualization solution.
  • DevInfo - a database system endorsed by the United Nations Development Group for monitoring and analyzing human development.
  • ELKI - data mining framework in Java with data mining oriented visualization functions.
  • KNIME - the Konstanz Information Miner, a user friendly and comprehensive data analytics framework.
  • R - a programming language and software environment for statistical computing and graphics.


Commercial software for data analysisEdit

Template:Advert

  • [Infobright] offers a high performance analytic database is designed for analyzing large volumes of machine-generated data
  • IT Audit/Data analysis software

EducationEdit

In education, most educators have access to a data system for the purpose of analyzing student data.[18] These data systems present data to educators in an over-the-counter data format (embedding labels, supplemental documentation, and a help system and making key package/display and content decisions) to improve the accuracy of educators’ data analyses.[19]


See alsoEdit

Smallwikipedialogo.png This page uses content from the English-language version of Wikiversity. The original article was at {{{1}}}. The list of authors can be seen in the page history. As with Psychology Wiki, the text of Wikiversity is available under the GNU Free Documentation License.

ReferencesEdit

  1. Adèr, 2008, p. 334-335.
  2. Data Cleaning. Microsoft Research. URL accessed on 26 October 2013.
  3. Hellerstein, Joseph (27). Quantitative Data Cleaning for Large Databases. EECS Computer Science Division.
  4. Adèr, 2008, p. 337.
  5. Adèr, 2008, p. 338-341.
  6. Adèr, 2008, p. 341-3342.
  7. Adèr, 2008, p. 344.
  8. Tabachnick & Fidell, 2007, p. 87-88.
  9. Adèr, 2008, p. 344-345.
  10. Adèr, 2008, p. 345.
  11. Adèr, 2008, p. 345-346.
  12. Adèr, 2008, p. 346-347.
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  14. Billings S.A. "Nonlinear System Identification: NARMAX Methods in the Time, Frequency, and Spatio-Temporal Domains". Wiley, 2013
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  19. Rankin, J. (2013, March 28). How data Systems & reports can either fight or propagate the data analysis error epidemic, and how educator leaders can help. Presentation conducted from Technology Information Center for Administrative Leadership (TICAL) School Leadership Summit.
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  • Adèr, H.J. (2008). Chapter 15: The main analysis phase. In H.J. Adèr & G.J. Mellenbergh (Eds.) (with contributions by D.J. Hand), Advising on Research Methods: A consultant's companion (pp. 333–356). Huizen, the Netherlands: Johannes van Kessel Publishing.
  • Tabachnick, B.G. & Fidell, L.S. (2007). Chapter 4: Cleaning up your act. Screening data prior to analysis. In B.G. Tabachnick & L.S. Fidell (Eds.), Using Multivariate Statistics, Fifth Edition (pp. 60–116). Boston: Pearson Education, Inc. / Allyn and Bacon.

Further readingEdit


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