Exploratory Data Analysis (EDA): Difference between revisions

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{{Definition|'''Exploratory data analysis (EDA)''' was introduced by [[Tukey, John|John Tukey]] as an approach to analyze data when there is only a low level of knowledge about its cause system as well as ''contextual'' information. EDA aims at letting the data itself influence the process of suggesting hypotheses instead of only using it to evaluate given ''(a priori)'' hypotheses.}}
{{Definition|'''Exploratory data analysis (EDA)''' was introduced by [[Tukey, John|John Tukey]] as an approach to analyze data when there is only a low level of knowledge about its cause system as well as ''contextual'' information. EDA aims at letting the data itself influence the process of suggesting hypotheses instead of only using it to evaluate given ''(a priori)'' hypotheses.}}


{{Quotation|EDA is an approach to data analysis that postpones the usual assumptions about what kind of model the data follow with the more direct approach of allowing the data itself to reveal its underlying structure and model.| [Filliben, 2005]}}
{{Quotation|Exploratory Data Analysis (EDA) is an approach/philosophy for data analysis that employs a variety of techniques (mostly graphical) to maximize<br>1. insight into a data set;<br>2. uncover underlying structure;<br>3. extract important variables;<br>4. detect outliers and anomalies;<br>5. test underlying assumptions;<br>6. develop parsimonious models; and<br>7. determine optimal factor settings.<br><br>The EDA approach is precisely that--an approach--not a set of techniques, but an attitude/philosophy about how a data analysis should be carried out.| [Filliben, 2004]}}


{{Quotation|[...] is concerned primarily with explorations and description of data, not with inference. The techniques are designed to identify fundamental, conceptually meaningful patterns and relationships in data and to call attention to observations that deviate greatly from those fundamental patterns| [Smith and Prentice, 1993]}}
{{Quotation|[...] is concerned primarily with explorations and description of data, not with inference. The techniques are designed to identify fundamental, conceptually meaningful patterns and relationships in data and to call attention to observations that deviate greatly from those fundamental patterns| [Smith and Prentice, 1993]}}
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== References ==
== References ==


*[Filliben, 2005]: James J. Filliben, NIST/SEMATECH [http://www.itl.nist.gov/div898/handbook/|''e-Handbook of Statistical Methods''], 2005.
*[Filliben, 2004]: James J. Filliben, [http://www.itl.nist.gov/div898/handbook/eda/section1/eda11.htm NIST/SEMATECH e-Handbook of Statistical Methods], Retrieved at: November 15, 2004. http://www.itl.nist.gov/div898/handbook/eda/section1/eda11.htm
*[Smith and Prentice, 1993]: A.F.Smith and D.A. Prentice, ''Exploratory data analysis'', A handbook for data analysis in the behavioral sciences: Statistical issues, pages 349-390, 1993.
*[Smith and Prentice, 1993]: A.F.Smith and D.A. Prentice, ''Exploratory data analysis'', A handbook for data analysis in the behavioral sciences: Statistical issues, pages 349-390, 1993.


[[Category: Glossary]]
[[Category: Glossary]]

Revision as of 11:06, 12 September 2005

Exploratory data analysis (EDA) was introduced by John Tukey as an approach to analyze data when there is only a low level of knowledge about its cause system as well as contextual information. EDA aims at letting the data itself influence the process of suggesting hypotheses instead of only using it to evaluate given (a priori) hypotheses.
Exploratory Data Analysis (EDA) is an approach/philosophy for data analysis that employs a variety of techniques (mostly graphical) to maximize
1. insight into a data set;
2. uncover underlying structure;
3. extract important variables;
4. detect outliers and anomalies;
5. test underlying assumptions;
6. develop parsimonious models; and
7. determine optimal factor settings.

The EDA approach is precisely that--an approach--not a set of techniques, but an attitude/philosophy about how a data analysis should be carried out.
[Filliben, 2004]


[...] is concerned primarily with explorations and description of data, not with inference. The techniques are designed to identify fundamental, conceptually meaningful patterns and relationships in data and to call attention to observations that deviate greatly from those fundamental patterns
[Smith and Prentice, 1993]


Furthermore, EDA can be used to support the selection of appropriate statistical tools as well as to provide a basis for statistical inference and further data collection.

Essential to EDA are graphical tools like box plots, stem–and–leaf plots, scatter plots, or timelines.

References