Publications by Author: Signorino, Curtis

2001
Aggregation Among Binary, Count, and Duration Models: Estimating the Same Quantities from Different Levels of Data
James E Alt, Gary King, and Curtis Signorino. 2001. “Aggregation Among Binary, Count, and Duration Models: Estimating the Same Quantities from Different Levels of Data.” Political Analysis, 9, Pp. 21–44.Abstract
Binary, count and duration data all code discrete events occurring at points in time. Although a single data generation process can produce all of these three data types, the statistical literature is not very helpful in providing methods to estimate parameters of the same process from each. In fact, only single theoretical process exists for which know statistical methods can estimate the same parameters - and it is generally used only for count and duration data. The result is that seemingly trivial decisions abut which level of data to use can have important consequences for substantive interpretations. We describe the theoretical event process for which results exist, based on time independence. We also derive a set of models for a time-dependent process and compare their predictions to those of a commonly used model. Any hope of understanding and avoiding the more serious problems of aggregation bias in events data is contingent on first deriving a much wider arsenal of statistical models and theoretical processes that are not constrained by the particular forms of data that happen to be available. We discuss these issues and suggest an agenda for political methodologists interested in this very large class of aggregation problems.
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1995
A Correction for an Underdispersed Event Count Probability Distribution
Rainer Winkelmann, Curtis Signorino, and Gary King. 1995. “A Correction for an Underdispersed Event Count Probability Distribution.” Political Analysis, Pp. 215–228.Abstract
We demonstrate that the expected value and variance commonly given for a well-known probability distribution are incorrect. We also provide corrected versions and report changes in a computer program to account for the known practical uses of this distribution.
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