Statistical Treatment Of Data For Experimental Research Papers

Adriennef
2 min readJan 5, 2021

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Statistical treatment of data is essential in order to make use of the data in the right form. Raw data collection is only one aspect of any experiment; the organization of data is equally important so that appropriate conclusions can be drawn. This is what statistical treatment of data is all about.

PDF | On Nov 1. 1979. James W. Dally published Statistical Treatment of Experimental Data | Find. read and cite all the research you need on ResearchGate

Statistics and the Treatment of Experimental Data 2. 3 The Gaussian or Normal Distribution The Gaussian or normal distribution plays a central role in all of statistics and is the most ubiquitous distribution in all the sciences. Measurement errors. and in particular. instrumental errors are generally described by this probability distribution.

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