Search (5 results, page 1 of 1)

  • × author_ss:"Chen, H."
  • × theme_ss:"Internet"
  1. Dumais, S.; Chen, H.: Hierarchical classification of Web content (2000) 0.02
    0.01752632 = product of:
      0.03505264 = sum of:
        0.03505264 = product of:
          0.07010528 = sum of:
            0.07010528 = weight(_text_:classification in 492) [ClassicSimilarity], result of:
              0.07010528 = score(doc=492,freq=2.0), product of:
                0.16603322 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05213454 = queryNorm
                0.42223644 = fieldWeight in 492, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.09375 = fieldNorm(doc=492)
          0.5 = coord(1/2)
      0.5 = coord(1/2)
    
  2. Huang, C.; Fu, T.; Chen, H.: Text-based video content classification for online video-sharing sites (2010) 0.01
    0.014605265 = product of:
      0.02921053 = sum of:
        0.02921053 = product of:
          0.05842106 = sum of:
            0.05842106 = weight(_text_:classification in 3452) [ClassicSimilarity], result of:
              0.05842106 = score(doc=3452,freq=8.0), product of:
                0.16603322 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05213454 = queryNorm
                0.35186368 = fieldWeight in 3452, product of:
                  2.828427 = tf(freq=8.0), with freq of:
                    8.0 = termFreq=8.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.0390625 = fieldNorm(doc=3452)
          0.5 = coord(1/2)
      0.5 = coord(1/2)
    
    Abstract
    With the emergence of Web 2.0, sharing personal content, communicating ideas, and interacting with other online users in Web 2.0 communities have become daily routines for online users. User-generated data from Web 2.0 sites provide rich personal information (e.g., personal preferences and interests) and can be utilized to obtain insight about cyber communities and their social networks. Many studies have focused on leveraging user-generated information to analyze blogs and forums, but few studies have applied this approach to video-sharing Web sites. In this study, we propose a text-based framework for video content classification of online-video sharing Web sites. Different types of user-generated data (e.g., titles, descriptions, and comments) were used as proxies for online videos, and three types of text features (lexical, syntactic, and content-specific features) were extracted. Three feature-based classification techniques (C4.5, Naïve Bayes, and Support Vector Machine) were used to classify videos. To evaluate the proposed framework, user-generated data from candidate videos, which were identified by searching user-given keywords on YouTube, were first collected. Then, a subset of the collected data was randomly selected and manually tagged by users as our experiment data. The experimental results showed that the proposed approach was able to classify online videos based on users' interests with accuracy rates up to 87.2%, and all three types of text features contributed to discriminating videos. Support Vector Machine outperformed C4.5 and Naïve Bayes techniques in our experiments. In addition, our case study further demonstrated that accurate video-classification results are very useful for identifying implicit cyber communities on video-sharing Web sites.
  3. Chung, W.; Chen, H.: Browsing the underdeveloped Web : an experiment on the Arabic Medical Web Directory (2009) 0.01
    0.010595265 = product of:
      0.02119053 = sum of:
        0.02119053 = product of:
          0.04238106 = sum of:
            0.04238106 = weight(_text_:22 in 2733) [ClassicSimilarity], result of:
              0.04238106 = score(doc=2733,freq=2.0), product of:
                0.18256627 = queryWeight, product of:
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.05213454 = queryNorm
                0.23214069 = fieldWeight in 2733, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.046875 = fieldNorm(doc=2733)
          0.5 = coord(1/2)
      0.5 = coord(1/2)
    
    Date
    22. 3.2009 17:57:50
  4. Hu, D.; Kaza, S.; Chen, H.: Identifying significant facilitators of dark network evolution (2009) 0.01
    0.008829388 = product of:
      0.017658776 = sum of:
        0.017658776 = product of:
          0.03531755 = sum of:
            0.03531755 = weight(_text_:22 in 2753) [ClassicSimilarity], result of:
              0.03531755 = score(doc=2753,freq=2.0), product of:
                0.18256627 = queryWeight, product of:
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.05213454 = queryNorm
                0.19345059 = fieldWeight in 2753, 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=2753)
          0.5 = coord(1/2)
      0.5 = coord(1/2)
    
    Date
    22. 3.2009 18:50:30
  5. Yang, M.; Kiang, M.; Chen, H.; Li, Y.: Artificial immune system for illicit content identification in social media (2012) 0.01
    0.0073026326 = product of:
      0.014605265 = sum of:
        0.014605265 = product of:
          0.02921053 = sum of:
            0.02921053 = weight(_text_:classification in 4980) [ClassicSimilarity], result of:
              0.02921053 = score(doc=4980,freq=2.0), product of:
                0.16603322 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05213454 = queryNorm
                0.17593184 = fieldWeight in 4980, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.0390625 = fieldNorm(doc=4980)
          0.5 = coord(1/2)
      0.5 = coord(1/2)
    
    Abstract
    Social media is frequently used as a platform for the exchange of information and opinions as well as propaganda dissemination. But online content can be misused for the distribution of illicit information, such as violent postings in web forums. Illicit content is highly distributed in social media, while non-illicit content is unspecific and topically diverse. It is costly and time consuming to label a large amount of illicit content (positive examples) and non-illicit content (negative examples) to train classification systems. Nevertheless, it is relatively easy to obtain large volumes of unlabeled content in social media. In this article, an artificial immune system-based technique is presented to address the difficulties in the illicit content identification in social media. Inspired by the positive selection principle in the immune system, we designed a novel labeling heuristic based on partially supervised learning to extract high-quality positive and negative examples from unlabeled datasets. The empirical evaluation results from two large hate group web forums suggest that our proposed approach generally outperforms the benchmark techniques and exhibits more stable performance.