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Overview of Microsoft Excel as a Data Analysis Tool01:13

Overview of Microsoft Excel as a Data Analysis Tool

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Time-Series Graph00:54

Time-Series Graph

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Facilitating the Analysis of Immunological Data with Visual Analytic Techniques
10:58

Facilitating the Analysis of Immunological Data with Visual Analytic Techniques

Published on: January 2, 2011

Online interactive tutorials for creating graphs with excel 2007 or 2010.

Nicholas R Vanselow1, Jason C Bourret

  • 1New England Center for Children, Northeastern University.

Behavior Analysis in Practice
|January 18, 2013
PubMed
Summary
This summary is machine-generated.

Behavior analysts can now easily create clinical and research graphs using an online tutorial. This resource simplifies data visualization in applied behavior analysis, improving data interpretation and reporting.

Keywords:
Excelchartcomputer-based instructionfeedbackgraph

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Area of Science:

  • Behavior analysis
  • Data visualization
  • Clinical psychology

Background:

  • Graphic display of clinical data is essential for behavior-analytic clinicians.
  • Creating these graphs can be challenging for practitioners.
  • Standardized methods for graph creation are needed.

Purpose of the Study:

  • To introduce an online interactive tutorial for creating behavior analytic graphs.
  • To provide accessible training on data visualization techniques.
  • To enhance the efficiency of graph creation for clinical and research purposes.

Main Methods:

  • Accessing and utilizing an online interactive tutorial.
  • Tutorial covers Microsoft Excel basics (2007/2010).
  • Specific modules for clinical and research graph creation.

Main Results:

  • Users can learn to create various graphs commonly used by behavior analysts.
  • The tutorial simplifies the process of data visualization.
  • Provides practical skills for immediate application.

Conclusions:

  • The online tutorial is a valuable resource for behavior-analytic clinicians and researchers.
  • Interactive tools can effectively teach complex data visualization skills.
  • Facilitates better data representation in behavior analysis.