首页|Reports Summarize Support Vector Machines Study Results from Jember University (Aspect-Based Sentiment Analysis of Avatar 2 Movie Reviews on IMDb Using Support Vector Machine)
Reports Summarize Support Vector Machines Study Results from Jember University (Aspect-Based Sentiment Analysis of Avatar 2 Movie Reviews on IMDb Using Support Vector Machine)
扫码查看
点击上方二维码区域,可以放大扫码查看
原文链接
NETL
NSTL
Current study results on have been published. According to news reporting out of Jember University by NewsRx editors, research stated, "In the digital age, IMDb plays a crucial role in influencing audience movie choices." The news reporters obtained a quote from the research from Jember University: "However, IMDb's movie ratings lack detailed information about specific aspects of films considered important in the industry's evaluation of audience responses. To address this gap, we conducted aspect-based sentiment analysis on 3198 reviews of Avatar 2. We focused on narrative and cinematic elements in the movie reviews, such as character, conflict, location, time, mise-en-scene, cinematography, editing, and sound. After data collection, we labeled the aspects and sentiments, and through TF-IDF weighting and SMOTE balancing, we performed sentiment classification. The Support Vector Machine model with SMOTE proved most effective, highlighting crucial features often discussed by audiences in both positive and negative sentiments. This analysis provides valuable insights for the film industry, aiding in better movie production, marketing, and a deeper understanding of audience preferences."