A Graphical Lasso Approach to Estimating Network Connections: The Case of U.S. Lawmakers

51 Pages Posted: 24 Jul 2020 Last revised: 19 Apr 2023

See all articles by Marco Battaglini

Marco Battaglini

Cornell University

Forrest Crawford

Yale University

Eleonora Patacchini

Cornell University

Sida Peng

Cornell University

Multiple version iconThere are 2 versions of this paper

Date Written: July 2020

Abstract

In this paper, we propose a new approach to the estimation of social networks and we apply it to the estimation of productivity spillovers in the U.S. Congress. Social networks such as the social connections among lawmakers are not generally directly observed, they can be recovered only using the observable outcomes that they contribute to determine (such as, for example, the legislators’ effectiveness). Moreover, they are typically stable for relatively short periods of time, thus generating only short panels of observations. Our estimator has three appealing properties that allows it to work in these environments. First, it is constructed for “small” asymptotic, thus requiring only short panels of observations. Second, it requires relatively nonrestrictive sparsity assumptions for identification, thus being applicable to dense networks with (potentially) star shaped connections. Third, it allows for heterogeneous common shocks across subnetworks. The application to the U.S. Congress gives us new insights about the nature of social interactions among lawmakers. We estimate a significant decrease over time in the importance of productivity spillovers among individual lawmakers, compensated by an increase in the party level common shock over time. This suggests that the rise of partisanship is not affecting only the ideological position of legislators when they vote, but more generally how lawmakers collaborate in the U.S. Congress.

Suggested Citation

Battaglini, Marco and Crawford, Forrest and Patacchini, Eleonora and Peng, Sida, A Graphical Lasso Approach to Estimating Network Connections: The Case of U.S. Lawmakers (July 2020). NBER Working Paper No. w27557, Available at SSRN: https://ssrn.com/abstract=3658853

Marco Battaglini (Contact Author)

Cornell University ( email )

Ithaca, NY 14853
United States

Forrest Crawford

Yale University

Eleonora Patacchini

Cornell University ( email )

Ithaca, NY 14853
United States

Sida Peng

Cornell University ( email )

Ithaca, NY 14853
United States

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