sicheng tian | Natural Language Processing Award | Best Researcher Award

Dr. sicheng tian | Natural Language Processing Award | Best Researcher Award

Student, Harbin engineering university, China

👨‍💻 Dr. Sicheng Tian is a fourth-year Ph.D. candidate at the College of Computer Science and Technology, Harbin Engineering University, China. His academic journey has been marked by excellence, progressing seamlessly from bachelor’s to master’s to doctoral studies at the same institution. Specializing in natural language processing (NLP), Dr. Tian has made notable contributions to reverse dictionary tasks, publishing two JCR Q1 papers and actively driving advancements in this niche area. He is a member of the prestigious China Computer Federation (CCF), reflecting his commitment to the computer science community.

Publication Profile

Scopus

Education

🎓 Dr. Sicheng Tian has pursued his entire academic career at Harbin Engineering University, excelling through bachelor’s, master’s, and Ph.D. programs. He is currently in his fourth year as a doctoral candidate, focusing on innovative approaches to reverse dictionary tasks in NLP.

Experience

💼 Dr. Tian has a strong background in research, contributing to multiple national-level projects, including those funded by the National Natural Science Foundation of China. His expertise extends to the development of cutting-edge models and datasets, driving advancements in natural language processing.

Research Interests

🔍 Dr. Tian’s primary research interests lie in reverse dictionary tasks within the field of natural language processing. He is particularly focused on developing models using methods such as multitask learning and multimodal information fusion, aiming to enhance computational understanding and performance.

Awards

🏆 Dr. Tian has achieved recognition for his research, including the successful publication of two high-impact JCR Q1 papers. His contributions to NLP and participation in national projects highlight his significant achievements in the field.

Publications

A prompt construction method for the reverse dictionary task of large-scale language models.” Engineering Applications of Artificial Intelligence 133 (2024): 108596. Cited by articles.

RDMTL: Reverse dictionary model based on multitask learning.” Knowledge-Based Systems 296 (2024): 111869. Cited by articles.

RDMIF: Reverse Dictionary Model Based on Multi-modal Information Fusion.” Neurocomputing (2024, In Press).

 

Ronny Mabokela | Natural Language Processing | Best Researcher Award

Mr. Ronny Mabokela | Natural Language Processing | Best Researcher Award

Lecturer, University of Johannesburg, South Africa

KR Mabokela is a South African PhD candidate in Computer Science at the University of the Witwatersrand (2020–2024). With a background in Speech Technology, he holds a Master of Science in Computer Science (2012–2014) and a Bachelor of Science in Computer Science and Mathematics (2008–2010), both from the University of Limpopo. Currently, he serves as Acting Deputy Head of Department for Continuing Education Programs (CEPs) and Online Learning at the University of Johannesburg, where he contributes to academic leadership and strategic planning. His research interests focus on multilingual sentiment analysis, language identification for under-resourced languages, and speech technology. 🧑‍💻📚

Publication Profile

Google scholar

Education

KR Mabokela’s academic journey began at the University of Limpopo, where he earned his Bachelor of Science (Computer Science and Mathematics, 2008–2010), followed by a Bachelor of Science Honours in Computer Science (2011). He continued his studies with a Master of Science in Computer Science, specializing in Speech Technology (2012–2014). He is now pursuing a Doctor of Philosophy (PhD) in Computer Science at the University of the Witwatersrand (2020–2024), focusing on advancing research in speech technology and multilingual systems. 🎓🔬

Experience

Mabokela has built a strong academic career, currently serving as the Acting Deputy Head of the Department of Applied Information Systems at the University of Johannesburg, where he leads the Continuing Education Programs (CEPs) and Online initiatives. His responsibilities include academic leadership, strategic direction, coordinating training for staff and students, and ensuring the quality of postgraduate teaching in online settings. He has also played a pivotal role in the development of online education and the integration of emerging technologies into curriculum delivery. 💼👨‍🏫

Research Interests

KR Mabokela’s research revolves around multilingual sentiment analysis, language identification, and speech technology, with a specific focus on under-resourced languages. He investigates how to build efficient systems for multilingual sentiment analysis and address challenges posed by code-switching in speech. His goal is to create tools that improve the processing and understanding of languages that lack sufficient resources and support technological growth in African languages. 🌍💡

Awards

Mabokela’s work has been recognized for its innovation and contribution to speech technology, especially in the context of under-resourced languages. His research has been cited in numerous papers and has received acknowledgment in the academic community for its practical applications in multilingual sentiment analysis and language identification. 🏅🔍

Publications

Multilingual Sentiment Analysis for Under-Resourced Languages: A Systematic Review of the Landscape
Published in IEEE Access (2023)
Cited by: 34
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Modeling code-Switching speech on under-resourced languages for language identification
Published in SLTU (2014)
Cited by: 30
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An integrated language identification for code-switched speech using decoded-phonemes and support vector machine
Published in Speech Technology and Human-Computer Dialogue (SpeD), 7th Conference (2013)
Cited by: 13
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A sentiment corpus for South African under-resourced languages in a multilingual context
Published in TBD Journal
Cited by: TBD
Read here