Assoc. Prof. Dr. Shengbin Liang | Data Mining | Excellence in Research Award

Assoc. Prof. Dr. Shengbin Liang | Data Mining | Excellence in Research Award 

Assoc. Prof. Dr. Shengbin Liang | Data Mining | Henan University | China

Assoc. Prof. Dr. Shengbin Liang, a distinguished academic from Henan University, China, has emerged as a leading researcher in the fields of Precision Medicine, Artificial Intelligence, Deep Learning, and Swarm Intelligence Algorithms. He earned his Master’s degree in Computer Science from Southwest Jiaotong University, China, and later obtained his Ph.D. in Data Science from the City University of Macau, China, where he developed a strong foundation in computational modeling and data-driven healthcare applications. Currently, Assoc. Prof. Dr. Shengbin Liang serves as an Associate Professor at Henan University, while also holding a Postdoctoral Fellowship at the University of Saint Joseph, funded by the FDCT, Macau. His professional experience spans interdisciplinary research collaborations that bridge computer science, data science, and medical informatics, focusing on intelligent diagnostic systems and clinical decision-making through machine learning and deep learning frameworks. His research interests encompass recommendation systems, swarm intelligence optimization, biomedical data analysis, medical text classification, and AI-based healthcare prediction models. Demonstrating exceptional research capability, he has published over 20 SCI/EI-indexed papers in reputed international journals and conferences such as IEEE Transactions, PLOS One, Applied Sciences, and Knowledge and Information Systems, earning more than 180 citations on Scopus. His research skills include expertise in Python, TensorFlow, PyTorch, deep neural network architectures, sentiment analysis models, and multimodal data fusion for healthcare applications. In recognition of his academic excellence, Assoc. Prof. Dr. Shengbin Liang has been granted three national invention patents and has received institutional honors for his innovation and scientific contributions. He is also an active member of the IEEE community, contributing to collaborative research, peer review, and international AI conferences.

Professional Profiles: Google Scholar

Selected Publications

  1. Liang, S., Jiao, T., Du, W., & Qu, S. (2021). An improved ant colony optimization algorithm based on context for tourism route planning. PLoS One, 16(9), e0257317. (Cited by 66)

  2. Liang, S., Zhu, B., Zhang, Y., Cheng, S., & Jin, J. (2020). A double channel CNN-LSTM model for text classification. IEEE International Conference on High Performance Computing and Communications. (Cited by 32)

  3. Li, X., Zhang, Y., Jin, J., Sun, F., Li, N., & Liang, S. (2023). A model of integrating convolution and BiGRU dual-channel mechanism for Chinese medical text classifications. PLoS One, 18(3), e0282824. (Cited by 19)

  4. Liang, S., Chen, X., Ma, J., Du, W., & Ma, H. (2021). An improved double channel long short‐term memory model for medical text classification. Journal of Healthcare Engineering, 2021(1), 6664893. (Cited by 13)

  5. Liang, S., Jin, J., Ren, J., Du, W., & Qu, S. (2023). An improved dual-channel deep Q-network model for tourism recommendation. Big Data, 11(4), 268–281. (Cited by 9)

  6. Qu, S., Zhou, H., Zhang, B., & Liang, S. (2022). MSPNet: Multi-scale strip pooling network for road extraction from remote sensing images. Applied Sciences, 12(8), 4068. (Cited by 9)

  7. Cui, Y., Liang, S., & Zhang, Y. Y. (2024). Multimodal representation learning for tourism recommendation with two-tower architecture. PLoS One, 19(2), e0299370. (Cited by 7)

Paolo Dini | Data Analysis | Best Researcher Award

Dr. Paolo Dini | Data Analysis | Best Researcher Award

Dr. Paolo Dini | Data Analysis | Leading Researcher at Centre Tecnològic de Telecomunicacions de Catalunya | Spain

Dr. Paolo Dini is a distinguished researcher in the field of information engineering, currently affiliated with the Centre Tecnològic de Telecomunicacions de Catalunya (CTTC), where he leads research at the intersection of sustainable computing, wireless communication, and artificial intelligence. Dr. Paolo Dini holds a Ph.D. in Information and Communication Technologies, and his academic foundation has enabled him to make impactful contributions to the development of energy-efficient and intelligent network infrastructures. Over the years, he has amassed a prolific research portfolio with more than 60 peer-reviewed publications and over 2,300 citations, earning him an h-index of 25 and an i10-index of 54, according to Scopus. Professionally, Dr. Paolo Dini has held research and leadership roles in multiple European and international collaborative projects, contributing both to academia and industrial innovation. He has worked alongside prominent researchers from institutions like Ericsson, Politecnico di Bari, University of Padova, and CTTC, fostering multidisciplinary research in areas such as mobile traffic modeling, green networking, and edge intelligence. His expertise includes machine learning for network optimization, distributed systems, multi-agent systems, 5G and beyond architectures, and sustainable AI. These skills are further demonstrated by his role in developing algorithms and models for energy harvesting in mobile networks and predictive analytics for traffic anomaly detection. Dr. Paolo Dini’s research interests continue to evolve with the current technological landscape, focusing on combining AI with wireless systems to enable smarter, greener, and more adaptive communication environments.

Professional Profile: ORCID | Google Scholar

Selected Publications:

  1. Mobile traffic prediction from raw data using LSTM networks (2018) – 245 Citations

  2. HetNets powered by renewable energy sources: Sustainable next-generation cellular networks (2012) – 201 Citations

  3. SolarStat: Modeling photovoltaic sources through stochastic Markov processes (2014) – 108 Citations

  4. Detecting mobile traffic anomalies through physical control channel fingerprinting: A deep semi-supervised approach (2019) – 81 Citations