Fundamental to the effective use of visualization as an analytic and descriptive tool is the assurance that presenting data visually provides the capability of making inferences from what we see. This paper explores two related approaches to quantifying the confidence we may have in making visual inferences from mapped geospatial data. We adapt Wickham et al.'s `Visual Line-up' method as a direct analogy with Null Hypothesis Significance Testing (NHST) and propose a new approach for generating more credible spatial null hypotheses. Rather than using as a spatial null hypothesis the unrealistic assumption of complete spatial randomness, we propose spatially autocorrelated simulations as alternative nulls. We conduct a set of crowdsourced exp...
Ambient user-generated geo-information like that from geosocial media is collected using liberal, un...
Distinguishing the analysis of spatial data from classical analysis is only meaningful if the spati...
The characterization, identification, and understanding of spatial patterns are central concerns of ...
Fundamental to the effective use of visualization as an analytic and descriptive tool is the assuran...
Fundamental to the effective use of visualization as an analytic and descriptive tool is the assuran...
The line-up task hides a plot of real data amongst a line-up of decoys built around some plausible n...
The line-up task hides a plot of real data amongst a line-up of decoys built around some plausible n...
We propose a comprehensive research framework to empirically investigate complex visual inference ta...
We consider testing the null hypothesis of no spatial autocorrelation against the alternative of fir...
The authors explore the effects of spatial and locational cueing upon the aggregated results of cogn...
The most common means of visualizing data sets with geospatial data is by employing map-based visual...
Functions to calculate measures of spatial association, especially measures of spatial autocorrelati...
Most data mining projects in spatial economics start with an evaluation of a set of attribute variab...
Statistical graphics play an important role in exploratory data analysis, model checking and diagnos...
Background: Kulldorff?s spatial scan statistic for aggregated area map s searches for cluster s of c...
Ambient user-generated geo-information like that from geosocial media is collected using liberal, un...
Distinguishing the analysis of spatial data from classical analysis is only meaningful if the spati...
The characterization, identification, and understanding of spatial patterns are central concerns of ...
Fundamental to the effective use of visualization as an analytic and descriptive tool is the assuran...
Fundamental to the effective use of visualization as an analytic and descriptive tool is the assuran...
The line-up task hides a plot of real data amongst a line-up of decoys built around some plausible n...
The line-up task hides a plot of real data amongst a line-up of decoys built around some plausible n...
We propose a comprehensive research framework to empirically investigate complex visual inference ta...
We consider testing the null hypothesis of no spatial autocorrelation against the alternative of fir...
The authors explore the effects of spatial and locational cueing upon the aggregated results of cogn...
The most common means of visualizing data sets with geospatial data is by employing map-based visual...
Functions to calculate measures of spatial association, especially measures of spatial autocorrelati...
Most data mining projects in spatial economics start with an evaluation of a set of attribute variab...
Statistical graphics play an important role in exploratory data analysis, model checking and diagnos...
Background: Kulldorff?s spatial scan statistic for aggregated area map s searches for cluster s of c...
Ambient user-generated geo-information like that from geosocial media is collected using liberal, un...
Distinguishing the analysis of spatial data from classical analysis is only meaningful if the spati...
The characterization, identification, and understanding of spatial patterns are central concerns of ...