Search (3 results, page 1 of 1)

  • × year_i:[2010 TO 2020}
  • × theme_ss:"Data Mining"
  • × theme_ss:"Automatisches Klassifizieren"
  1. Liu, X.; Yu, S.; Janssens, F.; Glänzel, W.; Moreau, Y.; Moor, B.de: Weighted hybrid clustering by combining text mining and bibliometrics on a large-scale journal database (2010) 0.05
    0.046299513 = product of:
      0.09259903 = sum of:
        0.09259903 = product of:
          0.18519805 = sum of:
            0.18519805 = weight(_text_:mining in 3464) [ClassicSimilarity], result of:
              0.18519805 = score(doc=3464,freq=6.0), product of:
                0.28585905 = queryWeight, product of:
                  5.642448 = idf(docFreq=425, maxDocs=44218)
                  0.05066224 = queryNorm
                0.64786494 = fieldWeight in 3464, product of:
                  2.4494898 = tf(freq=6.0), with freq of:
                    6.0 = termFreq=6.0
                  5.642448 = idf(docFreq=425, maxDocs=44218)
                  0.046875 = fieldNorm(doc=3464)
          0.5 = coord(1/2)
      0.5 = coord(1/2)
    
    Abstract
    We propose a new hybrid clustering framework to incorporate text mining with bibliometrics in journal set analysis. The framework integrates two different approaches: clustering ensemble and kernel-fusion clustering. To improve the flexibility and the efficiency of processing large-scale data, we propose an information-based weighting scheme to leverage the effect of multiple data sources in hybrid clustering. Three different algorithms are extended by the proposed weighting scheme and they are employed on a large journal set retrieved from the Web of Science (WoS) database. The clustering performance of the proposed algorithms is systematically evaluated using multiple evaluation methods, and they were cross-compared with alternative methods. Experimental results demonstrate that the proposed weighted hybrid clustering strategy is superior to other methods in clustering performance and efficiency. The proposed approach also provides a more refined structural mapping of journal sets, which is useful for monitoring and detecting new trends in different scientific fields.
    Theme
    Data Mining
  2. Teich, E.; Degaetano-Ortlieb, S.; Fankhauser, P.; Kermes, H.; Lapshinova-Koltunski, E.: ¬The linguistic construal of disciplinarity : a data-mining approach using register features (2016) 0.05
    0.046299513 = product of:
      0.09259903 = sum of:
        0.09259903 = product of:
          0.18519805 = sum of:
            0.18519805 = weight(_text_:mining in 3015) [ClassicSimilarity], result of:
              0.18519805 = score(doc=3015,freq=6.0), product of:
                0.28585905 = queryWeight, product of:
                  5.642448 = idf(docFreq=425, maxDocs=44218)
                  0.05066224 = queryNorm
                0.64786494 = fieldWeight in 3015, product of:
                  2.4494898 = tf(freq=6.0), with freq of:
                    6.0 = termFreq=6.0
                  5.642448 = idf(docFreq=425, maxDocs=44218)
                  0.046875 = fieldNorm(doc=3015)
          0.5 = coord(1/2)
      0.5 = coord(1/2)
    
    Abstract
    We analyze the linguistic evolution of selected scientific disciplines over a 30-year time span (1970s to 2000s). Our focus is on four highly specialized disciplines at the boundaries of computer science that emerged during that time: computational linguistics, bioinformatics, digital construction, and microelectronics. Our analysis is driven by the question whether these disciplines develop a distinctive language use-both individually and collectively-over the given time period. The data set is the English Scientific Text Corpus (scitex), which includes texts from the 1970s/1980s and early 2000s. Our theoretical basis is register theory. In terms of methods, we combine corpus-based methods of feature extraction (various aggregated features [part-of-speech based], n-grams, lexico-grammatical patterns) and automatic text classification. The results of our research are directly relevant to the study of linguistic variation and languages for specific purposes (LSP) and have implications for various natural language processing (NLP) tasks, for example, authorship attribution, text mining, or training NLP tools.
    Theme
    Data Mining
  3. Ma, Z.; Sun, A.; Cong, G.: On predicting the popularity of newly emerging hashtags in Twitter (2013) 0.02
    0.022275863 = product of:
      0.044551726 = sum of:
        0.044551726 = product of:
          0.08910345 = sum of:
            0.08910345 = weight(_text_:mining in 967) [ClassicSimilarity], result of:
              0.08910345 = score(doc=967,freq=2.0), product of:
                0.28585905 = queryWeight, product of:
                  5.642448 = idf(docFreq=425, maxDocs=44218)
                  0.05066224 = queryNorm
                0.31170416 = fieldWeight in 967, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  5.642448 = idf(docFreq=425, maxDocs=44218)
                  0.0390625 = fieldNorm(doc=967)
          0.5 = coord(1/2)
      0.5 = coord(1/2)
    
    Theme
    Data Mining