Search (2 results, page 1 of 1)

  • × author_ss:"Zhou, Z."
  • × year_i:[2020 TO 2030}
  1. Liu, J.; Zhou, Z.; Gao, M.; Tang, J.; Fan, W.: Aspect sentiment mining of short bullet screen comments from online TV series (2023) 0.01
    0.0065351077 = product of:
      0.026140431 = sum of:
        0.026140431 = product of:
          0.052280862 = sum of:
            0.052280862 = weight(_text_:aspects in 1018) [ClassicSimilarity], result of:
              0.052280862 = score(doc=1018,freq=2.0), product of:
                0.20938325 = queryWeight, product of:
                  4.5198684 = idf(docFreq=1308, maxDocs=44218)
                  0.046325076 = queryNorm
                0.2496898 = fieldWeight in 1018, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  4.5198684 = idf(docFreq=1308, maxDocs=44218)
                  0.0390625 = fieldNorm(doc=1018)
          0.5 = coord(1/2)
      0.25 = coord(1/4)
    
    Abstract
    Bullet screen comments (BSCs) are user-generated short comments that appear as real-time overlays on many video platforms, expressing the audience opinions and emotions about different aspects of the ongoing video. Unlike traditional long comments after a show, BSCs are often incomplete, ambiguous in context, and correlated over time. Current studies in sentiment analysis of BSCs rarely address these challenges, motivating us to develop an aspect-level sentiment analysis framework. Our framework, BSCNET, is a pre-trained language encoder-based deep neural classifier designed to enhance semantic understanding. A novel neighbor context construction method is proposed to uncover latent contextual correlation among BSCs over time, and we also incorporate semi-supervised learning to reduce labeling costs. The framework increases F1 (Macro) and accuracy by up to 10% and 10.2%, respectively. Additionally, we have developed two novel downstream tasks. The first is noisy BSCs identification, which reached F1 (Macro) and accuracy of 90.1% and 98.3%, respectively, through fine-tuning the BSCNET. The second is the prediction of future episode popularity, where the MAPE is reduced by 11%-19.0% when incorporating sentiment features. Overall, this study provides a methodology reference for aspect-level sentiment analysis of BSCs and highlights its potential for viewing experience or forthcoming content optimization.
  2. Wu, Z.; Li, R.; Zhou, Z.; Guo, J.; Jiang, J.; Su, X.: ¬A user sensitive subject protection approach for book search service (2020) 0.00
    0.0039227554 = product of:
      0.015691021 = sum of:
        0.015691021 = product of:
          0.031382043 = sum of:
            0.031382043 = weight(_text_:22 in 5617) [ClassicSimilarity], result of:
              0.031382043 = score(doc=5617,freq=2.0), product of:
                0.16222252 = queryWeight, product of:
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.046325076 = queryNorm
                0.19345059 = fieldWeight in 5617, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.0390625 = fieldNorm(doc=5617)
          0.5 = coord(1/2)
      0.25 = coord(1/4)
    
    Date
    6. 1.2020 17:22:25

Authors