Prof. Xiaojing Zhou | Big Data Analytics | Innovative Research Award

Prof. Xiaojing Zhou | Big Data Analytics | Innovative Research Award

Heilongjiang Bayi Agricultural University | China

Prof. Xiaojing Zhou is a distinguished researcher in genomics and animal genetics, with a focus on theoretical and applied aspects of animal breeding and molecular biology. Their work spans high-impact studies on genomics applications in livestock, contributing to advancements in sustainable animal production and genetic improvement. Zhou has authored 19 Scopus-indexed documents, accumulating 136 citations and an h-index of 5, reflecting a growing academic influence in the field. With successful project funding from national and provincial foundations, their research demonstrates significant scientific impact and relevance. Zhou’s contributions position them as a notable candidate for recognition in genomics and animal science award categories.

Citation Metrics (Scopus)

150

120

90

60

30

0

Citations
141

Documents
19

h-index
5

         🟦 Citations   🟥 Documents   🟩 h-index


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Featured Publications

Prof. Dr. Abdel-Aziz Sharabati | Business Intelligence | Best Researcher Award

Prof. Dr. Abdel-Aziz Sharabati | Business Intelligence | Best Researcher Award

Middle East University | Jordan

Prof. Dr. Abdel-Aziz Ahmad Sharabati is a distinguished scholar in Business Administration, specializing in intellectual capital, total quality management, corporate social responsibility, supply chain management, and digital business strategies. His research bridges management theory and practical applications, focusing on how digital transformation, innovation, and sustainability drive organizational performance across industries. He has made extensive academic contributions with over 80 publications in reputed international journals and more than 30 conference presentations globally. His work often integrates qualitative and quantitative methodologies to explore emerging trends such as artificial intelligence, digital marketing, and blockchain in business ecosystems. Prof. Sharabati’s research impact is reflected in his strong citation metrics, including 1,179 Scopus citations across 56 documents with an h-index of 18, and 6,243 Google Scholar citations with an h-index of 28 and an i10-index of 50, highlighting his sustained scholarly influence and interdisciplinary reach.

Research Profile

Scopus | ORCID | Google Scholar

Featured Publications

Aristovnik, A., Keržič, D., Ravšelj, D., Tomaževič, N., & Umek, L. (2020). Impacts of the COVID-19 pandemic on life of higher education students: A global perspective. Sustainability, 12(20), 8438.

Sharabati, A. A. A., Jawad, S. N., & Bontis, N. (2010). Intellectual capital and business performance in the pharmaceutical sector of Jordan. Management Decision, 48(1), 105–131.

Sharabati, A. A. A., Ali, A. A. A., Allahham, M. I., Hussein, A. A., & Alheet, A. F. (2024). The impact of digital marketing on the performance of SMEs: An analytical study in light of modern digital transformations. Sustainability, 16(19), 8667.

Al-Haddad, S., Sharabati, A. A. A., Al-Khasawneh, M., Maraqa, R., & Hashem, R. (2022). The influence of corporate social responsibility on consumer purchase intention: The mediating role of consumer engagement via social media. Sustainability, 14(11), 6771.

Atieh Ali, A. A., Sharabati, A. A. A., Allahham, M., & Nasereddin, A. Y. (2024). The relationship between supply chain resilience and digital supply chain and the impact on sustainability: Supply chain dynamism as a moderator. Sustainability, 16(7), 3082.

Zari Farhadi | Analytics | Best Researcher Award

Dr. Zari Farhadi | Analytics | Best Researcher Award

Lecturer, University of Tabriz, Iran

Dr. Zari Farhadi is a dedicated lecturer and researcher at the University of Tabriz, Iran, with expertise in Data Science, Machine Learning, and Predictive Modeling. Her passion for academic excellence is evident in her work, particularly in the development of hybrid models to enhance data analysis accuracy. With a Ph.D. in Data Science, she has contributed extensively to advancing predictive models through innovative techniques like ensemble learning and deep regression. 🌟📚

Publication Profile

Google Scholar

Education

Zari Farhadi holds a Ph.D. in Data Science, specializing in machine learning, deep learning, and statistical techniques, from the University of Tabriz. Her academic foundation supports her pioneering work in hybrid machine learning models. 🎓

Experience

As a lecturer and researcher, Dr. Farhadi has contributed to various research papers, focusing on machine learning and deep learning. She teaches at both the Computerized Intelligence Systems Laboratory and the Department of Statistics at the University of Tabriz. Her research experience spans across several high-impact areas of data science, including predictive modeling and statistical learning. 🧑‍🏫

Awards and Honors

Though not currently affiliated with professional organizations, Dr. Farhadi’s work has been recognized in academic circles through the citation of her research in top journals, underlining her growing impact in the field of data science. 🏅

Research Focus

Dr. Farhadi’s research centers on Machine Learning, Predictive Modeling, Ensemble Learning Methods, Statistical Learning, and Hybrid Models like ADeFS, which integrate deep learning with statistical shrinkage methods. She strives to improve model performance in real-world applications, including gold price prediction and real estate valuation. 🤖📊

Conclusion

Zari Farhadi continues to innovate and drive research in the fields of machine learning and data science. Through her groundbreaking work in hybrid models, she is shaping the future of predictive analytics and advancing the boundaries of artificial intelligence in academic and industrial applications. 🌍

Publications

An Ensemble Framework to Improve the Accuracy of Prediction Using Clustered Random-Forest and Shrinkage Methods,
Appl. Sci., vol. 12, no. 20, 2022, doi: 10.3390/app122010608
Cited by: 15 articles.

Improving random forest algorithm by selecting appropriate penalized method
Commun. Stat. Simul. Comput., vol. 0, no. 0, pp. 1–16, 2022, doi: 10.1080/03610918.2022.2150779
Cited by: 10 articles.

ERDeR: The combination of statistical shrinkage methods and ensemble approaches to improve the performance of deep regression,
IEEE Access, DOI: 10.1109/ACCESS.2024.3368067
Cited by: 3 articles.

ADeFS: A deep forest regression-based model to enhance the performance based on LASSO and Elastic Net,
Mathematics and Computer Science, MDPI, 13 (1), 118, 2024.
Cited by: Pending.

Combining Regularization and Dropout Techniques for Deep Convolutional Neural Network,
IEEE Glob. Energy Conf. GEC 2022, pp. 335–339, 2022, doi: 10.1109/GEC55014.2022.9986657
Cited by: 5 articles.

Analysis of Penalized Regression Methods in a Simple Linear Model on the High-Dimensional Data,
American Journal of Theoretical and Applied Statistics, 8 (5), 185, 2019.
Cited by: 2 articles.

An Ensemble-Based Model for Sentiment Analysis of Persian Comments on Instagram Using Deep Learning Algorithms,
IEEE Access, DOI: 10.1109/ACCESS.2024.3473617
Cited by: Pending.

Hybrid Model for Visual Sentiment Classification Using Content-Based Image Retrieval and Multi-Input Convolutional Neural Network,
International Journal of Intelligent Systems (Under review).