World's Best Scientists 2026 revealed!

Overview

Liang Liu is affiliated with Hong Kong Polytechnic University in China. Their research spans various aspects of biochemistry, genetics, and molecular biology, with a particular focus on agricultural and biological sciences. The scientist has concentrated work in subfields such as molecular biology, paleontology, genetics, plant science, and statistics and probability.

The primary topics of Liang Liu's research include genomics and phylogenetic studies, genetic diversity and population structure, evolution and paleontology studies, plant diversity and evolution, paleontology and evolutionary biology, statistical methods and Bayesian inference, and chromosomal and genetic variations.

Their recent publications cover a range of studies in evolutionary biology and molecular genetics. Notable works include:

  • The Perfect Storm: Gene Tree Estimation Error, Incomplete Lineage Sorting, and Ancient Gene Flow Explain the Most Recalcitrant Ancient Angiosperm Clade, Malpighiales (2020, Systematic Biology)
  • The Multispecies Coalescent Model Outperforms Concatenation Across Diverse Phylogenomic Data Sets (2020, Systematic Biology)
  • An evolutionary epigenetic clock in plants (2023, Science)
  • Genomes, fossils, and the concurrent rise of modern birds and flowering plants in the Late Cretaceous (2024, Proceedings of the National Academy of Sciences)
  • Regression multiple imputation for missing data analysis (2020, Statistical Methods in Medical Research)

Liang Liu frequently collaborates with other researchers including Charles C. Davis, Scott V. Edwards, Shaoyuan Wu, Zhenxiang Xi, and Frank E. Rheindt.

The scientist has published regularly in prominent venues, often contributing to:

  • Systematic Biology
  • Proceedings of the National Academy of Sciences
  • bioRxiv (Cold Spring Harbor Laboratory)
  • Zenodo (CERN European Organization for Nuclear Research)
  • Science

Best Publications

  • MrBayes 3.2: Efficient Bayesian Phylogenetic Inference and Model Choice across a Large Model Space

    Fredrik Ronquist;Maxim Teslenko;Paul van der Mark;Daniel L. Ayres

  • Channel Estimation for Intelligent Reflecting Surface Assisted Multiuser Communications: Framework, Algorithms, and Analysis

    Zhaorui Wang;Liang Liu;Shuguang Cui

  • Secrecy Wireless Information and Power Transfer With MISO Beamforming

    Liang Liu;Rui Zhang;Kee-Chaing Chua

  • Wireless Information Transfer with Opportunistic Energy Harvesting

    Liang Liu;Rui Zhang;Kee-Chaing Chua

  • Massive Connectivity With Massive MIMO—Part I: Device Activity Detection and Channel Estimation

    Liang Liu;Wei Yu

  • Wireless Information and Power Transfer: A Dynamic Power Splitting Approach

    Liang Liu;Rui Zhang;Kee-Chaing Chua

  • Multiuser MISO Beamforming for Simultaneous Wireless Information and Power Transfer

    Jie Xu;Liang Liu;Rui Zhang

  • Joint Transmit Beamforming and Receive Power Splitting for MISO SWIPT Systems

    Qingjiang Shi;Liang Liu;Weiqiang Xu;Rui Zhang

  • Estimating species phylogenies using coalescence times among sequences

    Liang Liu;Lili Yu;Dennis K. Pearl;Scott V. Edwards

  • Multi-Antenna Wireless Powered Communication With Energy Beamforming

    Liang Liu;Rui Zhang;Kee Chaing Chua

  • Sparse Signal Processing for Grant-Free Massive Connectivity: A Future Paradigm for Random Access Protocols in the Internet of Things

    Liang Liu;Erik G. Larsson;Wei Yu;Petar Popovski

  • BEST: Bayesian estimation of species trees under the coalescent model

    Liang Liu

  • Implementing and testing the multispecies coalescent model: A valuable paradigm for phylogenomics

    Scott V. Edwards;Zhenxiang Xi;Axel Janke;Brant C. Faircloth

  • Estimating species trees from unrooted gene trees.

    Liang Liu;Lili Yu

  • Estimating Species Trees Using Multiple-Allele DNA Sequence Data

    Liang Liu;Dennis K. Pearl;Robb T. Brumfield;Scott V. Edwards

  • Fundamental Trade-offs in Communication and Trajectory Design for UAV-Enabled Wireless Network

    Qingqing Wu;Liang Liu;Rui Zhang

  • CoMP in the Sky: UAV Placement and Movement Optimization for Multi-User Communications

    Liang Liu;Shuowen Zhang;Rui Zhang

  • Secrecy Wireless Information and Power Transfer in Fading Wiretap Channel

    Hong Xing;Liang Liu;Rui Zhang

  • Estimating phylogenetic trees from genome-scale data.

    Liang Liu;Zhenxiang Xi;Shaoyuan Wu;Charles Cavender Davis

  • Joint Task Assignment and Resource Allocation for D2D-Enabled Mobile-Edge Computing

    Hong Xing;Liang Liu;Jie Xu;Arumugam Nallanathan

Frequent Co-Authors

Rui Zhang
Rui Zhang National University of Singapore
Wei Yu
Wei Yu University of Toronto
Kee Chaing Chua
Kee Chaing Chua National University of Singapore
Jie Xu
Jie Xu Chinese University of Hong Kong, Shenzhen
Shuguang Cui
Shuguang Cui Chinese University of Hong Kong, Shenzhen
Travis C. Glenn
Travis C. Glenn University of Georgia
Chao-Qiang Lai
Chao-Qiang Lai US Department of Agriculture
Arumugam Nallanathan
Arumugam Nallanathan Queen Mary University of London
Erik G. Larsson
Erik G. Larsson Linköping University
Guojie Zhang
Guojie Zhang Zhejiang University

If you think any of the details on this page are incorrect, let us know.

Report an issue

We appreciate your kind effort to assist us to improve this page, it would be helpful providing us with as much detail as possible in the text box below:

Related Online Degrees & Career Pathways

Exploring an online degree can be a flexible and efficient route for those considering a future in computer science. Many students opt for associate degrees to build foundational knowledge. If you’re looking to start your academic journey, consider reviewing available associates degrees online that offer practical skills and transfer options.

For those aiming to quickly advance their credentials, completing a master’s program through the quickest online masters degree paths can open doors to specialized tech roles faster than traditional on-campus courses.

Choosing a degree that leads to strong job prospects is important. Reviewing the most in demand masters degrees can help you target fields like artificial intelligence, cybersecurity, and data science, which are driving today’s industry growth.

Finally, affordability plays a key role in your decision. Comparing the most affordable online colleges ensures you can pursue your dream career in computer science without excessive student debt. Explore your options to find the best fit for your goals and budget.

Best Scientists Citing Liang Liu

Trending Scientists