Assoc. Prof. Dr Khrystyna Lipianina-Honcharenko | Computer Science | Young Scientist Award |

Assoc. Prof. Dr Khrystyna Lipianina-Honcharenko | Computer Science | Young Scientist Award

Associate professor , at West Ukrainian National University, Ukraine.

Assoc. Prof. Dr. Khrystyna Lipianina-Honcharenko is a dedicated academic and researcher specializing in Information Technology, with a strong foundation in economic cybernetics and artificial intelligence. Based at the West Ukrainian National University in Ternopil, Ukraine, she has steadily progressed through the academic ranks, currently serving as an Associate Professor in the Department of Information Computer Systems and Control. Her work bridges data science, simulation, and socio-economic modeling, with a strong commitment to research excellence and innovation in education and interdisciplinary projects.

Professional Profile

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Education 🎓

Dr. Lipianina-Honcharenko holds a Ph.D. in Technical Sciences (2019), with a specialization in Information Technology, and is currently completing her Doctor of Technical Sciences (2025) at West Ukrainian National University. She began her academic journey with a Bachelor’s degree in Economic Cybernetics (2011), followed by a Master’s degree in Information Technologies in Economics (2012). She also completed postgraduate studies in Economic Cybernetics and Informatics between 2013 and 2017. Her education reflects a deep and consistent engagement with technical and analytical disciplines critical to modern digital research.

Experience đź’Ľ

Dr. Lipianina-Honcharenko has over a decade of academic experience. She began as a Laboratory Assistant in the Department of Economic Cybernetics and Informatics (2012–2014), before becoming a Lecturer in the same department (2013–2020). She then served as a Senior Lecturer in the Department of Information Computer Systems and Control (2020–2021) and was promoted to Associate Professor in 2021, a role she currently holds. Her teaching and mentorship have consistently focused on data science, IT systems, and modeling, contributing to the development of future tech-savvy professionals.

Research Interests 🔬

Her research interests include data analysis, simulation, machine learning, modeling and forecasting socio-economic processes, and the development of artificial intelligence methods. She actively contributes to cutting-edge research in cyber-physical systems, and has led or participated in numerous national and international projects, including Erasmus+ initiatives, disinformation detection tools (TruScanAI), and digital heritage visualization through augmented and virtual reality. Her work is known for its interdisciplinary applications, blending technology, economics, and societal impact.

Awards 🏆

While specific named awards are not listed, Dr. Lipianina-Honcharenko’s selection and participation in prestigious European research initiatives such as Erasmus+ “Work4CE”, My Farm, and AURA projects highlight her recognized competence and contribution on an international scale. Her leadership in these multi-national projects reflects her credibility and collaborative skills in the global academic community.

Top Noted Publications 📚

1. Decision Tree Based Targeting Model of Customer Interaction with Business Page
Authors: H. Lipyanina, A. Sachenko, T. Lendyuk, S. Nadvynychny, S. Grodskyi
Index: CMIS
Citations: 37
Year: 2020
Pages: 1001–1012

2. Economic Crime Detection Using Support Vector Machine Classification
Authors: A. Krysovatyy, H. Lipyanina-Goncharenko, S. Sachenko, O. Desyatnyuk
Index: MoMLeT+ DS 2917
Citations: 25
Year: 2021
Pages: 830–840

3. Assessing the Investment Risk of Virtual IT Company Based on Machine Learning
Authors: H. Lipyanina, V. Maksymovych, A. Sachenko, T. Lendyuk, A. Fomenko, I. Kit
Index: International Conference on Data Stream Mining and Processing
Citations: 24
Year: 2020
Pages: 167–187

4. Targeting Model of HEI Video Marketing Based on Classification Tree
Authors: H. Lipyanina, S. Sachenko, T. Lendyuk, A. Sachenko
Citations: 22
Year: 2020

5. Concept of the Intelligent Guide with AR Support
Authors: K. Lipianina-Honcharenko, R. Savchyshyn, A. Sachenko, A. Chaban, I. Kit, et al.
Index: International Journal of Computing, Vol. 21, No. 2
Citations: 19
Year: 2022
Pages: 271–277

Conclusion

Assoc. Prof. Dr. Khrystyna Lipianina-Honcharenko exemplifies the qualities of a committed young scientist, with a diverse academic background, substantial international research experience, and a clear focus on interdisciplinary innovation. Her growing portfolio of research, especially in AI and cyber-physical systems, makes her a highly suitable candidate for prestigious recognitions such as the Research for Young Scientist Award. With continued development in international communication and publication outreach, she is well-positioned to make an even broader impact in the global scientific arena.

Assoc. Prof. Dr Linchang Zhao | Computer Science | Best Researcher Award |

Assoc. Prof. Dr Linchang Zhao | Computer Science | Best Researcher Award

Guiyang University, at School of Computer Science, China.

Assoc. Prof. Dr. Linchang Zhao is an accomplished academic and researcher at Guiyang University in China, specializing in machine learning, deep learning, few-shot learning, and optimization algorithms. He holds a Ph.D. in Computer Science from Chongqing University, with additional degrees in Mathematics and Statistics, and Computer Science. Dr. Zhao’s research focuses on data mining, imbalanced learning, and software defect prediction, where he has made significant contributions through innovative techniques like cost-sensitive meta-learning classifiers and deep neural networks. His work has been widely published in prominent journals such as IEEE Access and Neurocomputing, and he holds patents related to small sample data learning and imbalanced data prediction. With experience as a graduate tutor and mentor, Dr. Zhao continues to shape the next generation of researchers while actively contributing to high-impact projects funded by the National Natural Science Foundation of China.

Professional Profile

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Education 🎓

Dr. Linchang Zhao completed his Ph.D. in Computer Science from Chongqing University (2017–2021), where he focused on advancements in deep learning and machine learning. He also holds a Master of Engineering in Mathematics and Statistics from Qiannan Normal College for Nationalities (2015–2017) and a Bachelor of Science in Computer Science from Northeast Petroleum University (2009–2013).

Experience đź’Ľ

Dr. Zhao currently serves as an Associate Professor and graduate tutor at Guiyang University, where he mentors students and leads research initiatives. His academic career is highlighted by his active participation in several high-impact projects, including those funded by the National Natural Science Foundation of China. His work on machine learning, especially in software defect prediction and optimization, has garnered attention in both academic and industrial circles.

Research Interest 🔬

Dr. Zhao’s research primarily revolves around machine learning, few-shot learning, deep learning, optimization algorithms, and meta-learning. He is particularly interested in data mining, imbalanced learning, and software defect prediction, using cutting-edge techniques such as cost-sensitive meta-learning classifiers and deep neural networks. His work aims to address challenges in real-world applications, particularly in small datasets and imbalanced data contexts.

Award 🏅

Throughout his career, Dr. Zhao has made substantial contributions to his field, earning recognition for his innovative research. He has been awarded various honors for his work on software defect prediction and cost-sensitive machine learning methods. His contributions to machine learning in the context of small sample data and imbalanced datasets have been highly praised.

Top Noted Publication đź“‘

Design and Implementation of GPU Pass-Through System Based on OpenStack Computation

Authors: Linchang Zhao, Yu Jin, Guoqing Hu, Wenxi Zhou, Hao Wei, Ruiping Li, Xu Zhu, Yongchi Xu, Jiulin Jin, Qianbo Li

Journal: Computation

DOI: 10.3390/computation13020038

Year of Publication: 2025

 

RFAConv-CBM-ViT: Enhanced Vision Transformer for Metal Surface Defect Detection

Authors: Hao Wei, Linchang Zhao, Ruiping Li, Mu Zhang

Journal: The Journal of Supercomputing

DOI: 10.1007/s11227-024-06662-0

Year of Publication: 2025

 

Siamese Dense Neural Network for Software Defect Prediction With Small Data

Authors: Linchang Zhao, Zhaowei Shang, Ling Zhao, Anyong Qin, Yuan Yan Tang

Journal: IEEE Access

DOI: 10.1109/ACCESS.2018.2889061

Year of Publication: 2019

 

A Cost-Sensitive Meta-Learning Classifier: SPFCNN-Miner

Authors: Linchang Zhao

Journal: Future Generation Computer Systems

DOI: 10.1016/j.future.2019.05.080

Year of Publication: 2019

 

Software Defect Prediction via Cost-Sensitive Siamese Parallel Fully-Connected Neural Networks

Authors: Linchang Zhao, Zhaowei Shang, Ling Zhao, Taiping Zhang, Yuan Yan Tang

Journal: Neurocomputing

DOI: 10.1016/j.neucom.2019.03.076

Year of Publication: 2019

Conclusion

Linchang Zhao’s combination of advanced research, practical innovations, and contributions to education makes him a strong candidate for the Best Researcher Award. His ability to address real-world problems through machine learning and his efforts to foster academic growth through mentorship positions him as a leader in his field. To further solidify his position as a top researcher, increased interdisciplinary collaborations and global visibility would be beneficial.