PhD Candidate in Web Intelligence and Social Computing, BITS Pilani, Pilani, India, Feb 2022 – Present.
BTech-MTech Dual Degree, Centre for Converging Technologies, University of Rajasthan, Aug 2015 – Jul 2020. Cumulative GPA: 3.8/4.00.
Research Focus š¬
Arti Jha’s research focuses on several key areas in the realm of artificial intelligence and data science. She specializes in machine learning š¤, natural language processing š, statistics š, game theory š², and deep learning š§ . Her work spans from optimizing e-commerce advertising campaigns using advanced machine learning techniques to developing reinforcement learning strategies for real-time bidding in digital marketing. With a strong foundation in both theoretical research and practical applications, Arti contributes actively to the fields of AI-enabled advertisement strategies, predictive modeling, and algorithmic optimizations aimed at enhancing business intelligence and decision-making processes in digital platforms.
Professional Experience š¼
Senior Research Fellow, BITS-CommerceIQ Collaboration Project, BITS Pilani, Pilani, India, Feb 2022 – Present.
Designing optimal and targeted ad campaign strategies on e-commerce platforms.
Developing prediction models for optimizing ad campaigns on Amazon.
Working on interpretable and explainable AI models.
Industry Experience at CommerceIQ, Bangalore, India.
Research Experience š
Research Scholar, BITS Pilani, Pilani, India, Feb 2022 – Present.
Building algorithmic campaign optimizers.
Implementing multi-stage campaign classification and clustering models.
Designing explainable models for risk-averse modeling.
Project Trainee, Indian Space Research Organisation (ISRO), RRSC Jodhpur, India, Aug 2019 – Apr 2020.
Thesis on Object Detection using Satellite Images.
Data Analysis Intern, Robotics And Machine Analytics Lab (RAMAN), MNIT Jaipur, India, Mar 2019 – May 2019.
Pritom Jyoti Goutom is affiliated with the Centre for Computer Science and Applications at Dibrugarh University in Assam, India š®š³. His research focuses on natural language processing (NLP), particularly related to the Assamese language š£ļø.
Some of his notable contributions include:
Text Summarization š: He has co-authored papers on text summarization techniques using deep learning, such as “An Abstractive Text Summarization Using Deep Learning in Assamese” and “Text Summarization in Assamese Language Using Sequence to Sequence RNNs”ć5ā (ORCID)āā (Dibrugarh University)ā2. Collaboration with Dr. Nomi Baruah š¤: He often works with Dr. Baruah and others on projects aimed at improving NLP for low-resource languages.
For more details about his educational background and academic contributions, you can check his profile on academic platforms like ORCIDć5ā (ORCID)
Professional Experience:
š Research Scholar at Dibrugarh University
Specializing in Natural Language Processing (NLP) and AI-generated text in Assamese.
š Research Focus: Text summarization, part-of-speech tagging, and fake news detection.
šØāš» Project Associate I, Dept. of Computer Science and Engineering
Contributing to cutting-edge projects and innovations in AI and NLP.
Research Ā FocusĀ Ā :
Text Summarization: Developing algorithms for concise representation of Assamese text.
Machine Translation: Enhancing language conversion models for Assamese.
Sentiment Analysis: Analyzing opinions and emotions expressed in Assamese text.
Named Entity Recognition (NER): Identifying and categorizing entities in Assamese text.
Fake News Detection: Implementing models to identify misinformation in Assamese news sources.
Language Modeling: Building computational models to understand and generate Assamese text.
Contributions :
Co-authored research on abstractive text summarization using deep learning approaches, focusing on the nuances of the Assamese language.
Investigated LSTM and BiLSTM algorithms for fake news detection, enhancing accuracy and reliability in Assamese news sources.
Developed attention-based transformer models for text summarization in Assamese, improving content extraction and generation.
Worked on automatic spelling error identification using deep learning algorithms tailored for Assamese language nuances.
Citations:
Total Citations: š 13
Total Documents:Ā š3
h-index: š 1
Publication Top Notes:
Goutom, P. J., Baruah, N., & Sonowal, P. (2023). An abstractive text summarization using deep learning in Assamese. International Journal of Information Technology, 15(5), 2365-2372. (6 citations)
Phukan, R., Goutom, P. J., & Baruah, N. (2024). Assamese Fake News Detection: A Comprehensive Exploration of LSTM and Bi-LSTM Techniques. Procedia Computer Science, 235, 2167-2177.
Goutom, P. J., Baruah, N., & Sonowal, P. (2024). Attention-based Transformer for Assamese Abstractive Text Summarization. Procedia Computer Science, 235, 1097-1104.
Phukan, R., Neog, M., Goutom, P. J., & Baruah, N. (2024). Automated Spelling Error Detection in Assamese Texts using Deep Learning Approaches. Procedia Computer Science, 235, 1684-1694.
Goutom, P. J., & Baruah, N. (2023). Text summarization in Assamese language using sequence to sequence RNNs. Indian Journal of Science and Technology, 16(SP2), 22-29.