研究Seminar

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Autumn Semester 2023

Date / Time Speaker Title Location
21 August 2023
16:00-17:00
Cun-Hui Zhang
Rutgers University, USA
Event Details

研究Seminar in Statistics

Title Chi-Squared and Normal Approximations in Large Contingency Tables
Speaker, Affiliation Cun-Hui Zhang,Rutgers University, USA
Date, Time 21 August 2023, 16:00-17:00
Location HG G 26.5
Abstract We provide necessary and sufficient conditions for the chi-squared and normal approximations of Pearson's chi-squared statistics for the test of independence and the goodness-of- t test, as well as necessary and sufficient conditions for the normal approximation of the likelihood ratio and Hellinger statistics, when the cell probabilities of the multinomial data are in general pattern and the dimension diverges with the sample size. A cross-sample chi-squared statistic for testing independence applies to two-way contingency tables with diverging dimensions. A degrees-of-freedom adjusted chi-squared approximation applies continuously throughout the high-dimensional regime and matches Pearson's chi-squared statistic in both the mean and variance. Specific examples are provided to demonstrate the asymptotic normality of the three types of test statistics when the classical regularity conditions for the chi-squared and normal approximations are violated. Simulation results demonstrate that the chi-squared and normal approximations are more robust for the likelihood ratio and Hellinger statistics, compared with Pearson's chi-squared statistics. This talk is based on joint work with Chong Wu and Yisha Yao.
Chi-Squared and Normal Approximations in Large Contingency Tablesread_more
HG G 26.5
22 September 2023
15:15-16:15
Zijian Guo
Rutgers University, USA
Event Details

研究Seminar in Statistics

Title Joint talk: Robust Causal Inference with Possibly Invalid Instruments: Post-selection Problems and A Solution Using Searching and Sampling
Speaker, Affiliation Zijian Guo,Rutgers University, USA
Date, Time 22 September 2023, 15:15-16:15
Location HG G 19.1
Abstract Instrumental variable methods are among the most commonly used causal inference approaches to deal with unmeasured confounders in observational studies. The presence of invalid instruments is the primary concern for practical applications, and a fast-growing area of research is inference for the causal effect with possibly invalid instruments. This paper illustrates that the existing confidence intervals may undercover when the valid and invalid instruments are hard to separate in a data-dependent way. To address this, we construct uniformly valid confidence intervals that are robust to the mistakes in separating valid and invalid instruments. We propose to search for a range of treatment effect values that lead to sufficiently many valid instruments. We further devise a novel sampling method, which, together with searching, leads to a more precise confidence interval. Our proposed searching and sampling confidence intervals are uniformly valid and achieve the parametric length under the finite-sample majority and plurality rules. We apply our proposal to examine the effect of education on earnings. The proposed method is implemented in the R package \texttt{RobustIV} available from CRAN.
Joint talk: Robust Causal Inference with Possibly Invalid Instruments: Post-selection Problems and A Solution Using Searching and Samplingread_more
HG G 19.1
29 September 2023
15:15-16:15
Leonardo Egidi
University of Trieste
Event Details

研究Seminar in Statistics

Title Prediction, skepticism, and the Bayes Factory
Speaker, Affiliation Leonardo Egidi,University of Trieste
Date, Time 29 September 2023, 15:15-16:15
Location HG G 19.1
Abstract Nowadays a Bayesian model needs to be reproducible, generative, predictive, robust, computationally scalable, and able to provide sound inferential conclusions. In this wide framework, Bayes factors still represent one of the most well-known and commonly adopted tools to perform model selection and hypothesis testing; however, they are usually criticized due to their intrinsic lack of calibration, and they are rarely used to measure the predictive accuracy arising from competing models. We propose two distinct approaches relying on BFs from our most recent research. With regard to prediction, we propose a new algorithmic protocol to transform Bayes factors into measures that evaluate the pure and intrinsic predictive capabilities of models in terms of posterior predictive distributions, by assessing some preliminary theoretical properties (joint work with Ioannis Ntzoufras). Then, regarding the analysis of replication studies (Held, 2020), we follow the stream outlined by Pawel and Held (2022) and propose a skeptical mixture prior which represents the prior of an investigator who is unconvinced by the original findings. Its novelty lies in the fact that it incorporates skepticism while controlling for prior-data conflict (Egidi et al., 2021). Consistency properties of the resulting skeptical BF are provided together with a thorough analysis of the main features of our proposal (joint work with Guido Consonni). Short Bibliography: Egidi, L., Pauli, F., & Torelli, N. (2022). Avoiding prior–data conflict in regression models via mixture priors. Canadian Journal of Statistics, 50(2), 491-510. Held, L. (2020). A new standard for the analysis and design of replication studies. Journal of the Royal Statistical Society Series A: Statistics in Society, 183(2), 431-448. Pawel, S., & Held, L. (2022). The sceptical Bayes factor for the assessment of replication success. Journal of the Royal Statistical Society Series B: Statistical Methodology, 84(3), 879-911.
Prediction, skepticism, and the Bayes Factoryread_more
HG G 19.1
14 December 2023
15:15-16:15
Shuheng Zhou
University of California
Event Details

研究Seminar in Statistics

Title Title T.B.A.
Speaker, Affiliation Shuheng Zhou,University of California
Date, Time 14 December 2023, 15:15-16:15
Location HG G 43
Abstract tba
Title T.B.A.read_more
HG G 43

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