JP

Events

Category
Date
Title
Presenter/Location
Details
2023/03/23 Thu
17:00〜18:30
Takashi Kunimoto (Singapore Management University)
本館1階会議室またはオンライン開催
2023/03/16 Thu
17:00〜18:30
Kohei Kawamura (Waseda University)
本館1階会議室/オンライン開催
2023/03/15 Wed
14:00〜17:20
Workshop on Recent Developments in Econometric Theory and Its Applications 2022
第一共同研究室(4F北側)
2023/03/02 Thu
17:00〜18:30
John Wooders (NYU Abu Dhabi)
本館1階会議室/オンライン開催
2023/03/01 Wed
16:45〜18:15
Dan Ben-Moshe (Ben Gurion University of the Negev)
第一共同研究室(4F北側)

(登録者のみ参加可能)

2023/02/24 Fri
16:30〜18:00
Urban growth and its aggregate implications
Diego Puga (CEMFI)
京都大学経済研究所本館1階 第二共同研究室/オンライン開催

《Paper》

Abstract: We develop an urban growth model where human capital spillovers foster entrepreneurship and learning in heterogeneous cities. Incumbent residents limit city expansion through planning regulations so that commuting and housing costs do not outweigh productivity gains from agglomeration. The model builds on strong microfoundations, matches key regularities at the city and economy-wide levels, and generates novel predictions for which we provide evidence. It can be quantified relying on few parameters, provides a basis to estimate the main ones, and remains transparent regarding its mechanisms. We examine various counterfactuals to assess the effect of cities on economic growth and aggregate output quantitatively.

2023/02/22 Wed
16:45〜18:15
Tying Maximum Likelihood Estimation for Dependent Data
劉 慶豊(法政大学)
第一共同研究室(4F北側)

Abstract: This study proposes a tying maximum likelihood estimation (TMLE) method to improve the performance of estimation of statistical and econometric models in which most time series have long sample periods, whereas the other time series are very short. The main idea of the TMLE is to tie the parameters of the long time series with those of the short time series together so that some useful information in the long time series which is related to the short time series can be transferred to the short time series. The information transferred from the long series can help improve the estimation accuracy of the parameters related to the short series. We first provide asymptotic properties of the TMLE and show its finite-sample risk bound with a fixed tuning parameter which determines the strength of tying. Further, we provide a method for selecting the tuning parameter based on a bootstrap procedure. A finite sample theory about this method is derived, which tells us how to conduct the bootstrap procedure effectively. Extensive artificial simulations and empirical applications show that the TMLE has an outstanding performance in point estimate and forecast.

(登録者のみ参加可能)

2023/02/16 Thu
17:00〜18:30
Naoki Funai (Shiga University)
本館1階会議室/オンライン開催
2023/02/02 Thu
14:30〜15:30
[博士論文公開審査会/dissertation defenses]
Three Essays on Conglomerate Mergers
Jose de Jesus Herrera-Velasquez (Kyoto University)
本館1階会議室
2023/02/02 Thu
13:30〜14:30
[博士論文公開審査会/dissertation defenses]
Essays on Robust Social Preferences under Uncertainty
Chen Li (Kyoto University)
本館1階会議室
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