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2023/11/30 (木)
17:00〜18:30
Good biases in misspecified learning
Jonathan Newton (Kyoto University)
本館1階会議室またはオンライン開催
2023/11/29 (水)
16:45〜18:15
Self-normalization for time series with complex structures
Stanislav Volgushev (University of Toronto)
第一共同研究室(4F北側)

Abstract:
Self-normalization if a tuning free inference method for time series that avoids long-run variance estimation. This talk will introduce the basic idea behind self-normalization and give intuition on when this method is applicable. We will also discuss the usage of self-normalization in two specific settings: change-point detection in the mean of high-dimensional time series and testing relevant hypotheses in functional time series.

2023/11/22 (水)
16:30〜18:00
FINITE SAMPLE INFERENCE IN INCOMPLETE MODELS
Marc Henry (The Pennsylvania State University)
第一共同研究室(4F北側)

Abstract. We propose confidence regions for the parameters of incomplete models
with exact coverage of the true parameter in finite samples. Our confidence region
inverts a test, which generalizes Monte Carlo tests to incomplete models. The test
statistic is a discrete analogue of a new optimal transport characterization of the
sharp identified region. Both test statistic and critical values rely on simulation
drawn from the distribution of latent variables and are computed using solutions
to discrete optimal transport, hence linear programming problems. We also pro-
pose a fast preliminary search in the parameter space with an alternative, more
conservative yet consistent test, based on a parameter free critical value.

2023/11/17 (金)
16:30〜18:00
Climate change and labor market dropouts
吉田雅裕(早稲田大学)
京都大学経済研究所本館1階 106 会議室

【論文】 【スライド】

要旨:Labor force participation of prime-aged males in the U.S. has secularly declined for a half century since 1970s, threatening the formation of partnership and fertility. I test a hypothesis that long-run climate change nudged their labor market exits, a significant fraction of whom are working outdoors under heightened exposure to hot days. Combining granular daily temperature data and labor force participation across U.S. Commuting Zones during 1970-2019, I find that accumulated exposure to hot day with mean temperature 80F accounts for 20-30% of increased non-participation of prime-aged males. Climate change significantly accounts for market exits of black males, historically agglomerated in the Southeast, where warming was severest.

2023/11/17 (金)
15:00〜16:30
Oscar Pavlov(University of Tasmania)
京都大学 法経済学部東館 8階リフレッシュルーム
2023/11/16 (木)
17:00〜18:30
Robert Böhm (University of Vienna & University of Copenhagen)
本館1階会議室
2023/11/15 (水)
16:45〜18:15
Jiaying Gu (University of Toronto)
第一共同研究室(4F北側)

Abstract:
We show that the identification problem for a class of dynamic panel logit models with fixed effects has a connection to the truncated moment problem in mathematics. We use this connection to show that the sharp identified set of the structural parameters is characterized by a set of moment equality and inequality conditions. This result provides sharp bounds in models where moment equality conditions do not exist or do not point identify the parameters. We also show that the sharp identified set of the non-parametric latent distribution of the fixed effects is characterized by a vector of its generalized moments, and that the number of moments grows linearly in T. This final result lets us point identify, or sharply bound specific classes of functionals, without solving an optimization problem with respect to the latent distribution. We illustrate our identification result with several examples, and an empirical application on modeling children’s respiratory conditions.

2023/11/10 (金)
13:15〜14:45
柴山克行(University of Kent)
京都大学法経済学部東館 8階リフレッシュルーム
2023/11/09 (木)
17:00〜18:30
Martin Peitz (University of Mannheim)
本館1階会議室
2023/11/08 (水)
16:45〜18:15
Panel data quantile regression and group structures
Stanislav Volgushev (University of Toronto)
第一共同研究室(4F北側)

Abstract:
Quantile regression is a method that allows to access the effect of predictors on the conditional quantile of the response in a regression framework. In this talk, we will present some recent theoretical and methodology developments for quantile regression in a panel data setting where repeated observations on individuals are available. On the theory side, we will discuss conditions that guarantee unbiased asymptotic normality of quantile regression with individual-specific intercepts and common slopes. From a methodological standpoint, we will discuss approaches to relax the common slope assumption and allow for groups of individuals that share the same slopes while leaving the intercepts unrestricted.

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