The 2022 ITP Postdoctoral Symposium
He Wang (王赫)
co-advisor: Zong-Kuan Guo (郭宗宽)
hewang@mail.bnu.edu.cn / hewang@itp.ac.cn
hewang@itp.ac.cn / hewang@mail.bnu.edu.cn
FYI: I will speak in Chinese for the sake of clarity.
Gravitation wave data analysis with machine learning
From: LIGO-G2102497
Binary detection rates
Simulated Event Stream for a one year duration O4 run
Ref: He Wang, Shichao Wu, Zhoujian Cao, Xiaolin Liu, and Jian-Yang Zhu. Physical Review D 101, no. 10 (May 2020): 104003.
GW170817
GW190412
GW190814
Ref: Wen-Hong Ruan, He Wang, Chang Liu, and Zong-Kuan Guo. ArXiv Preprint ArXiv:2111.14546, November 2021.
Ref: CunLiang Ma, Wei Wang, He Wang, and Zhoujian Cao. Physical Review D 105, no. 8 (April 25, 2022): 083013.
Traditional statistical methods scale poorly in time/accuracy for
datasets described by many parameters.
Machine learning algorithms perform very well in exploiting
correlations across a large number of dimensions
We tackle this issue by thinking out of the box and directly using the information from the "future", as opposed to the others' work by exploring network structure.
“Prior Sampling”
Therefore the key question is how to effectively sample the feature space.
This is essentially equivalent to incorporating the physical domain knowledge into the high-dimensional training data.
In our case, we use the interim distribution (alpha=1) that is derived from the Monte Carlo method as a representation of the prior physical knowledge.
A diagram of prior sampling between feature space and physical parameter space
Ref: He Wang, Zhoujian Cao, Yue Zhou, Zong-Kuan Guo, and Zhixiang Ren. Big Data Mining and Analytics 5, no. 1 (2022): 53–63.
Ref: He Wang, Zhoujian Cao, Yue Zhou, Zong-Kuan Guo, and Zhixiang Ren. Big Data Mining and Analytics 5, no. 1 (2022): 53–63.
During the ideation phase, expect to discuss the project in depth to clearly understand the goals and requirements.
Our team makes each part of the build phase seamless with regular check-ins and deliverables.
It's time to take the product live - the end if the build phase but the beginning of being in market.