跳到主要內容
    標題Early Prediction of Academic Article Lifecycle Models Based on Multimodal Architecture
    學年112
    學期2
    發表日期2024-07-08
    作品名稱Early Prediction of Academic Article Lifecycle Models Based on Multimodal Architecture
    作品名稱(其他語言)
    著者Chia-Ling Chang, Yi- Lung Lin and Yi-Hung Liu
    作品所屬單位
    出版者
    會議名稱The International Conference on Intelligent Science and Sustainable Development (ISASD 2024)
    會議地點東京,日本
    摘要The study of citation lifecycles in academic publications is crucial in scholarly research. Many studies use descriptive statistics or regression analyses to forecast citation outcomes, but they often don't fully combine textual data (like titles, abstracts, and keywords) with numerical data (such as impact factors and h-indexes). This research introduces an innovative multimodal model designed to predict early citation trajectories for scholarly articles, addressing this gap. We developed eight models to predict citations from the first to the eighth year based on 2017 data. Our lifecycle analysis shows that the model maintains high performance over multiple years, highlighting its robustness and adaptability. The results underscore the benefits of combining diverse data types for long-term predictive tasks, making our model a valuable tool for researchers and practitioners in Library and Information Science. This model significantly improves our ability to assess the early citation potential of academic papers, making it a valuable resource for researchers and policymakers in academic publishing. Additionally, to thoroughly explore bibliographic data, the study used LDA to investigate the topic distribution of library and information science publications in 2017.
    關鍵字Life Cycle of Scholarly Articles;Citation Time Window;Early Prediction;Multimodal learning;Deep learning
    語言英文
    收錄於
    會議性質國際
    校內研討會地點
    研討會時間20240708~20240711
    通訊作者
    國別日本
    公開徵稿
    出版型式
    出處