Behavior analysts commonly use visual inspection to analyze single-case graphs, but studies on its reliability have produced mixed results. To examine this issue, we compared the Type I error rate and power of visual inspection with a novel approach—machine learning. Five expert visual raters analyzed 1,024 simulated AB graphs, which differed on number of points per phase, autocorrelation, trend, variability, and effect size. The ratings were compared to those obtained by the conservative dual-criteria method and two models derived from machine learning. On average, visual raters agreed with each other on only 75% of graphs. In contrast, both models derived from machine learning showed the best balance between Type I error rate and power wh...
Graph structure learning aims to learn connectivity in a graph from data. It is particularly importa...
This study reanalyzed data presented in a previous investigation (Ottenbacher, 1986a) that explored ...
Since the start of the 21st century, few advances have had as far-reaching impact in science as the ...
Visual analysis is the most commonly used method for interpreting data from singlecase designs, but ...
Visual inspection of single-case data is the primary method of interpretation of the effects of an i...
The most common method of single-case data analysis is visual analysis, but interrater reliability a...
Visual inspection remains the most frequently applied method for detecting treatment effects in sing...
In behavior analysis, data are usually analyzed using visual analysis of the graphed data. There are...
Visual analysis is the dominant method of analysis for single?case time series. The literature assum...
Visual analysis is the primary method of analyzing data in single-subject methodology, which is the ...
Visual inspection is the primary method used to analyze graphed behavioral data produced by function...
Graphs are ubiquitous. Many graphs, including histograms, bar charts, and stacked dotplots, have pro...
Although visual inspection remains common in the analysis of single-case designs, the lack of agree...
Objective. There has been an ongoing scientific debate regarding the most reliable and valid method ...
The field of behavior analysis has relied on the visual inspection of data to draw conclusions about...
Graph structure learning aims to learn connectivity in a graph from data. It is particularly importa...
This study reanalyzed data presented in a previous investigation (Ottenbacher, 1986a) that explored ...
Since the start of the 21st century, few advances have had as far-reaching impact in science as the ...
Visual analysis is the most commonly used method for interpreting data from singlecase designs, but ...
Visual inspection of single-case data is the primary method of interpretation of the effects of an i...
The most common method of single-case data analysis is visual analysis, but interrater reliability a...
Visual inspection remains the most frequently applied method for detecting treatment effects in sing...
In behavior analysis, data are usually analyzed using visual analysis of the graphed data. There are...
Visual analysis is the dominant method of analysis for single?case time series. The literature assum...
Visual analysis is the primary method of analyzing data in single-subject methodology, which is the ...
Visual inspection is the primary method used to analyze graphed behavioral data produced by function...
Graphs are ubiquitous. Many graphs, including histograms, bar charts, and stacked dotplots, have pro...
Although visual inspection remains common in the analysis of single-case designs, the lack of agree...
Objective. There has been an ongoing scientific debate regarding the most reliable and valid method ...
The field of behavior analysis has relied on the visual inspection of data to draw conclusions about...
Graph structure learning aims to learn connectivity in a graph from data. It is particularly importa...
This study reanalyzed data presented in a previous investigation (Ottenbacher, 1986a) that explored ...
Since the start of the 21st century, few advances have had as far-reaching impact in science as the ...