College of LAS Events

View Full Calendar

If you will need disability-related accommodations in order to participate, please email the contact person for the event.
Early requests are strongly encouraged to allow sufficient time to meet your access needs.

Statistics Seminar - Runze Li (Penn State)

Event Type
Seminar/Symposium
Sponsor
Department of Statistics
Virtual
wifi event
Date
Feb 18, 2021   3:30 pm  
Views
71
Originating Calendar
Department of Statistics Event Calendar

Abstract: This paper is concerned with test of the conditional independence. We first establish an   equivalence between the conditional independence and the mutual independence. Based on the equivalence, we  propose an index to measure the conditional dependence by quantifying the mutual dependence among the transformed variables. The proposed index has several appealing properties. (a) It is distribution free since the limiting null distribution of the proposed index does not depend on the population distributions of the data. Hence the critical values can be tabulated by simulations. (b) The proposed index ranges from zero to one, and equals zero if and only if the conditional independence holds. Thus, it has nontrivial power under the alternative hypothesis. (c) It is robust to outliers and heavy-tailed data since it is invariant to conditional strictly monotone transformations. (d) It has low computational cost since it  incorporates a simple closed-form expression and can be implemented in quadratic time. (e) It is insensitive to tuning parameters involved in the calculation of the proposed index. (f) The new index is applicable for multivariate random vectors as well as for discrete data. All these properties enable us to use the new index as statistical inference tools for various data. The effectiveness of the method is illustrated through extensive simulations and a real application on causal discovery.


Zoom Meeting:
https://illinois.zoom.us/j/81872836690?pwd=OEVHTmtvdHBObXE1MmtmaUFqNldpUT09

Meeting ID: 818 7283 6690
Password: 089917

link for robots only