A discrete choice model of dividend reinvestment plans: classification and prediction
Thomas P. Boehm and
Ramon Degennaro
No 2007-22, FRB Atlanta Working Paper from Federal Reserve Bank of Atlanta
Abstract:
We study 852 companies with dividend reinvestment plans in 1999 matched by total assets to 852 companies without such plans. We use discrete choice methods to predict the classification of these companies. We interpret the misclassified companies as being likely to switch their plan status. That is, if a firm's financial data suggest that a company should have had a dividend reinvestment plan in 1999 but did not, then we expect that it would be more likely to institute a plan than the other companies in the sample. Conversely, if it did have a plan but the financial data suggest that it should not, then we expect that the company would be more likely to drop the plan. We use data from 2004 to explore this conjecture and find evidence supporting it. Our model is an economically and statistically reliable predictor of changes in plan status. We also identify which variables have the most influence on a company's decision whether or not to offer a plan.
Date: 2007
New Economics Papers: this item is included in nep-dcm
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Journal Article: A discrete choice model of dividend reinvestment plans: classification and prediction (2011) 
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