There has been no attention to circular (purely cyclical) data in political science research. We show that such data exist and are mishandled by models that do not take into account the inherently recycling nature of some phenomenon. Clock and calendar effects are the obvious cases, but directional data are observed as well. We describe a standard maximum likelihood regression modeling framework based on the von Mises distribution, then develop a general Bayesian regression procedure for the first time, providing an easy-to-use Metropolis-Hastings sampler for this approach. Applications include a chronographic analysis of U.S. domestic terrorism and directional party preferences in a two-dimensional ideological space for German Bundestag el...
Data in the form of time cycle or point position to the angle of possibility is no longer suitable t...
Data in the form of time cycle or point position to the angle of possibility is no longer suitable t...
This paper demonstrates the importance of proper model specification when analyzing time-series coun...
There has been no attention to circular (purely cyclical) data in political science research. We sho...
There has been no attention to circular (purely cyclical) data in political science research. We sho...
There has been no attention to circular (purely cyclical) data in political science research. We sho...
Patterns of psychological variables in time have been of interest to research from the beginning. Th...
Circular data are a large class of directional data, which are of interest to scientists in many fie...
Researchers often analyze data that is either numerical, such as height in centimeters, or is divide...
Researchers often analyze data that is either numerical, such as height in centimeters, or is divide...
Researchers often analyze data that is either numerical, such as height in centimeters, or is divide...
Researchers often analyze data that is either numerical, such as height in centimeters, or is divide...
In the social sciences there are numerous examples of circular data. It occurs in research on the hu...
In the social sciences there are numerous examples of circular data. It occurs in research on the hu...
Circular statistics is a specialized branch of statistics that is focused on the visualization and a...
Data in the form of time cycle or point position to the angle of possibility is no longer suitable t...
Data in the form of time cycle or point position to the angle of possibility is no longer suitable t...
This paper demonstrates the importance of proper model specification when analyzing time-series coun...
There has been no attention to circular (purely cyclical) data in political science research. We sho...
There has been no attention to circular (purely cyclical) data in political science research. We sho...
There has been no attention to circular (purely cyclical) data in political science research. We sho...
Patterns of psychological variables in time have been of interest to research from the beginning. Th...
Circular data are a large class of directional data, which are of interest to scientists in many fie...
Researchers often analyze data that is either numerical, such as height in centimeters, or is divide...
Researchers often analyze data that is either numerical, such as height in centimeters, or is divide...
Researchers often analyze data that is either numerical, such as height in centimeters, or is divide...
Researchers often analyze data that is either numerical, such as height in centimeters, or is divide...
In the social sciences there are numerous examples of circular data. It occurs in research on the hu...
In the social sciences there are numerous examples of circular data. It occurs in research on the hu...
Circular statistics is a specialized branch of statistics that is focused on the visualization and a...
Data in the form of time cycle or point position to the angle of possibility is no longer suitable t...
Data in the form of time cycle or point position to the angle of possibility is no longer suitable t...
This paper demonstrates the importance of proper model specification when analyzing time-series coun...