Search (39 results, page 1 of 2)

  • × theme_ss:"Data Mining"
  1. Vaughan, L.; Chen, Y.: Data mining from web search queries : a comparison of Google trends and Baidu index (2015) 0.07
    0.07339382 = product of:
      0.110090725 = sum of:
        0.0928731 = weight(_text_:index in 1605) [ClassicSimilarity], result of:
          0.0928731 = score(doc=1605,freq=6.0), product of:
            0.2221244 = queryWeight, product of:
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.05083213 = queryNorm
            0.418113 = fieldWeight in 1605, product of:
              2.4494898 = tf(freq=6.0), with freq of:
                6.0 = termFreq=6.0
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.0390625 = fieldNorm(doc=1605)
        0.01721763 = product of:
          0.03443526 = sum of:
            0.03443526 = weight(_text_:22 in 1605) [ClassicSimilarity], result of:
              0.03443526 = score(doc=1605,freq=2.0), product of:
                0.17800546 = queryWeight, product of:
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.05083213 = queryNorm
                0.19345059 = fieldWeight in 1605, 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=1605)
          0.5 = coord(1/2)
      0.6666667 = coord(2/3)
    
    Abstract
    Numerous studies have explored the possibility of uncovering information from web search queries but few have examined the factors that affect web query data sources. We conducted a study that investigated this issue by comparing Google Trends and Baidu Index. Data from these two services are based on queries entered by users into Google and Baidu, two of the largest search engines in the world. We first compared the features and functions of the two services based on documents and extensive testing. We then carried out an empirical study that collected query volume data from the two sources. We found that data from both sources could be used to predict the quality of Chinese universities and companies. Despite the differences between the two services in terms of technology, such as differing methods of language processing, the search volume data from the two were highly correlated and combining the two data sources did not improve the predictive power of the data. However, there was a major difference between the two in terms of data availability. Baidu Index was able to provide more search volume data than Google Trends did. Our analysis showed that the disadvantage of Google Trends in this regard was due to Google's smaller user base in China. The implication of this finding goes beyond China. Google's user bases in many countries are smaller than that in China, so the search volume data related to those countries could result in the same issue as that related to China.
    Source
    Journal of the Association for Information Science and Technology. 66(2015) no.1, S.13-22
  2. Classification, automation, and new media : Proceedings of the 24th Annual Conference of the Gesellschaft für Klassifikation e.V., University of Passau, March 15 - 17, 2000 (2002) 0.07
    0.06954091 = product of:
      0.10431136 = sum of:
        0.075830564 = weight(_text_:index in 5997) [ClassicSimilarity], result of:
          0.075830564 = score(doc=5997,freq=4.0), product of:
            0.2221244 = queryWeight, product of:
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.05083213 = queryNorm
            0.3413878 = fieldWeight in 5997, product of:
              2.0 = tf(freq=4.0), with freq of:
                4.0 = termFreq=4.0
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.0390625 = fieldNorm(doc=5997)
        0.028480802 = product of:
          0.056961603 = sum of:
            0.056961603 = weight(_text_:classification in 5997) [ClassicSimilarity], result of:
              0.056961603 = score(doc=5997,freq=8.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.35186368 = fieldWeight in 5997, 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=5997)
          0.5 = coord(1/2)
      0.6666667 = coord(2/3)
    
    Abstract
    Given the huge amount of information in the internet and in practically every domain of knowledge that we are facing today, knowledge discovery calls for automation. The book deals with methods from classification and data analysis that respond effectively to this rapidly growing challenge. The interested reader will find new methodological insights as well as applications in economics, management science, finance, and marketing, and in pattern recognition, biology, health, and archaeology.
    Content
    Data Analysis, Statistics, and Classification.- Pattern Recognition and Automation.- Data Mining, Information Processing, and Automation.- New Media, Web Mining, and Automation.- Applications in Management Science, Finance, and Marketing.- Applications in Medicine, Biology, Archaeology, and Others.- Author Index.- Subject Index.
    Series
    Proceedings of the ... annual conference of the Gesellschaft für Klassifikation e.V. ; 24)(Studies in classification, data analysis, and knowledge organization
  3. Mining text data (2012) 0.04
    0.036192376 = product of:
      0.054288562 = sum of:
        0.04289624 = weight(_text_:index in 362) [ClassicSimilarity], result of:
          0.04289624 = score(doc=362,freq=2.0), product of:
            0.2221244 = queryWeight, product of:
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.05083213 = queryNorm
            0.1931181 = fieldWeight in 362, product of:
              1.4142135 = tf(freq=2.0), with freq of:
                2.0 = termFreq=2.0
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.03125 = fieldNorm(doc=362)
        0.0113923205 = product of:
          0.022784641 = sum of:
            0.022784641 = weight(_text_:classification in 362) [ClassicSimilarity], result of:
              0.022784641 = score(doc=362,freq=2.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.14074548 = fieldWeight in 362, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.03125 = fieldNorm(doc=362)
          0.5 = coord(1/2)
      0.6666667 = coord(2/3)
    
    Content
    Inhalt: An Introduction to Text Mining.- Information Extraction from Text.- A Survey of Text Summarization Techniques.- A Survey of Text Clustering Algorithms.- Dimensionality Reduction and Topic Modeling.- A Survey of Text Classification Algorithms.- Transfer Learning for Text Mining.- Probabilistic Models for Text Mining.- Mining Text Streams.- Translingual Mining from Text Data.- Text Mining in Multimedia.- Text Analytics in Social Media.- A Survey of Opinion Mining and Sentiment Analysis.- Biomedical Text Mining: A Survey of Recent Progress.- Index.
  4. Information visualization in data mining and knowledge discovery (2002) 0.03
    0.034222268 = product of:
      0.051333398 = sum of:
        0.02144812 = weight(_text_:index in 1789) [ClassicSimilarity], result of:
          0.02144812 = score(doc=1789,freq=2.0), product of:
            0.2221244 = queryWeight, product of:
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.05083213 = queryNorm
            0.09655905 = fieldWeight in 1789, product of:
              1.4142135 = tf(freq=2.0), with freq of:
                2.0 = termFreq=2.0
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.015625 = fieldNorm(doc=1789)
        0.029885277 = sum of:
          0.016111175 = weight(_text_:classification in 1789) [ClassicSimilarity], result of:
            0.016111175 = score(doc=1789,freq=4.0), product of:
              0.16188543 = queryWeight, product of:
                3.1847067 = idf(docFreq=4974, maxDocs=44218)
                0.05083213 = queryNorm
              0.099522084 = fieldWeight in 1789, product of:
                2.0 = tf(freq=4.0), with freq of:
                  4.0 = termFreq=4.0
                3.1847067 = idf(docFreq=4974, maxDocs=44218)
                0.015625 = fieldNorm(doc=1789)
          0.0137741035 = weight(_text_:22 in 1789) [ClassicSimilarity], result of:
            0.0137741035 = score(doc=1789,freq=2.0), product of:
              0.17800546 = queryWeight, product of:
                3.5018296 = idf(docFreq=3622, maxDocs=44218)
                0.05083213 = queryNorm
              0.07738023 = fieldWeight in 1789, product of:
                1.4142135 = tf(freq=2.0), with freq of:
                  2.0 = termFreq=2.0
                3.5018296 = idf(docFreq=3622, maxDocs=44218)
                0.015625 = fieldNorm(doc=1789)
      0.6666667 = coord(2/3)
    
    Date
    23. 3.2008 19:10:22
    Footnote
    In 13 chapters, Part Two provides an introduction to KDD, an overview of data mining techniques, and examples of the usefulness of data model visualizations. The importance of visualization throughout the KDD process is stressed in many of the chapters. In particular, the need for measures of visualization effectiveness, benchmarking for identifying best practices, and the use of standardized sample data sets is convincingly presented. Many of the important data mining approaches are discussed in this complementary context. Cluster and outlier detection, classification techniques, and rule discovery algorithms are presented as the basic techniques common to the KDD process. The potential effectiveness of using visualization in the data modeling process are illustrated in chapters focused an using visualization for helping users understand the KDD process, ask questions and form hypotheses about their data, and evaluate the accuracy and veracity of their results. The 11 chapters of Part Three provide an overview of the KDD process and successful approaches to integrating KDD, data mining, and visualization in complementary domains. Rhodes (Chapter 21) begins this section with an excellent overview of the relation between the KDD process and data mining techniques. He states that the "primary goals of data mining are to describe the existing data and to predict the behavior or characteristics of future data of the same type" (p. 281). These goals are met by data mining tasks such as classification, regression, clustering, summarization, dependency modeling, and change or deviation detection. Subsequent chapters demonstrate how visualization can aid users in the interactive process of knowledge discovery by graphically representing the results from these iterative tasks. Finally, examples of the usefulness of integrating visualization and data mining tools in the domain of business, imagery and text mining, and massive data sets are provided. This text concludes with a thorough and useful 17-page index and lengthy yet integrating 17-page summary of the academic and industrial backgrounds of the contributing authors. A 16-page set of color inserts provide a better representation of the visualizations discussed, and a URL provided suggests that readers may view all the book's figures in color on-line, although as of this submission date it only provides access to a summary of the book and its contents. The overall contribution of this work is its focus an bridging two distinct areas of research, making it a valuable addition to the Morgan Kaufmann Series in Database Management Systems. The editors of this text have met their main goal of providing the first textbook integrating knowledge discovery, data mining, and visualization. Although it contributes greatly to our under- standing of the development and current state of the field, a major weakness of this text is that there is no concluding chapter to discuss the contributions of the sum of these contributed papers or give direction to possible future areas of research. "Integration of expertise between two different disciplines is a difficult process of communication and reeducation. Integrating data mining and visualization is particularly complex because each of these fields in itself must draw an a wide range of research experience" (p. 300). Although this work contributes to the crossdisciplinary communication needed to advance visualization in KDD, a more formal call for an interdisciplinary research agenda in a concluding chapter would have provided a more satisfying conclusion to a very good introductory text.
  5. Tu, Y.-N.; Hsu, S.-L.: Constructing conceptual trajectory maps to trace the development of research fields (2016) 0.03
    0.025276855 = product of:
      0.075830564 = sum of:
        0.075830564 = weight(_text_:index in 3059) [ClassicSimilarity], result of:
          0.075830564 = score(doc=3059,freq=4.0), product of:
            0.2221244 = queryWeight, product of:
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.05083213 = queryNorm
            0.3413878 = fieldWeight in 3059, product of:
              2.0 = tf(freq=4.0), with freq of:
                4.0 = termFreq=4.0
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.0390625 = fieldNorm(doc=3059)
      0.33333334 = coord(1/3)
    
    Abstract
    This study proposes a new method to construct and trace the trajectory of conceptual development of a research field by combining main path analysis, citation analysis, and text-mining techniques. Main path analysis, a method used commonly to trace the most critical path in a citation network, helps describe the developmental trajectory of a research field. This study extends the main path analysis method and applies text-mining techniques in the new method, which reflects the trajectory of conceptual development in an academic research field more accurately than citation frequency, which represents only the articles examined. Articles can be merged based on similarity of concepts, and by merging concepts the history of a research field can be described more precisely. The new method was applied to the "h-index" and "text mining" fields. The precision, recall, and F-measures of the h-index were 0.738, 0.652, and 0.658 and those of text-mining were 0.501, 0.653, and 0.551, respectively. Last, this study not only establishes the conceptual trajectory map of a research field, but also recommends keywords that are more precise than those used currently by researchers. These precise keywords could enable researchers to gather related works more quickly than before.
  6. Leydesdorff, L.; Persson, O.: Mapping the geography of science : distribution patterns and networks of relations among cities and institutes (2010) 0.02
    0.02144812 = product of:
      0.06434436 = sum of:
        0.06434436 = weight(_text_:index in 3704) [ClassicSimilarity], result of:
          0.06434436 = score(doc=3704,freq=2.0), product of:
            0.2221244 = queryWeight, product of:
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.05083213 = queryNorm
            0.28967714 = fieldWeight in 3704, product of:
              1.4142135 = tf(freq=2.0), with freq of:
                2.0 = termFreq=2.0
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.046875 = fieldNorm(doc=3704)
      0.33333334 = coord(1/3)
    
    Object
    Science Citation Index
  7. Chowdhury, G.G.: Template mining for information extraction from digital documents (1999) 0.02
    0.016069788 = product of:
      0.04820936 = sum of:
        0.04820936 = product of:
          0.09641872 = sum of:
            0.09641872 = weight(_text_:22 in 4577) [ClassicSimilarity], result of:
              0.09641872 = score(doc=4577,freq=2.0), product of:
                0.17800546 = queryWeight, product of:
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.05083213 = queryNorm
                0.5416616 = fieldWeight in 4577, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.109375 = fieldNorm(doc=4577)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Date
    2. 4.2000 18:01:22
  8. Wang, W.M.; Cheung, C.F.; Lee, W.B.; Kwok, S.K.: Mining knowledge from natural language texts using fuzzy associated concept mapping (2008) 0.01
    0.014298747 = product of:
      0.04289624 = sum of:
        0.04289624 = weight(_text_:index in 2121) [ClassicSimilarity], result of:
          0.04289624 = score(doc=2121,freq=2.0), product of:
            0.2221244 = queryWeight, product of:
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.05083213 = queryNorm
            0.1931181 = fieldWeight in 2121, product of:
              1.4142135 = tf(freq=2.0), with freq of:
                2.0 = termFreq=2.0
              4.369764 = idf(docFreq=1520, maxDocs=44218)
              0.03125 = fieldNorm(doc=2121)
      0.33333334 = coord(1/3)
    
    Abstract
    Natural Language Processing (NLP) techniques have been successfully used to automatically extract information from unstructured text through a detailed analysis of their content, often to satisfy particular information needs. In this paper, an automatic concept map construction technique, Fuzzy Association Concept Mapping (FACM), is proposed for the conversion of abstracted short texts into concept maps. The approach consists of a linguistic module and a recommendation module. The linguistic module is a text mining method that does not require the use to have any prior knowledge about using NLP techniques. It incorporates rule-based reasoning (RBR) and case based reasoning (CBR) for anaphoric resolution. It aims at extracting the propositions in text so as to construct a concept map automatically. The recommendation module is arrived at by adopting fuzzy set theories. It is an interactive process which provides suggestions of propositions for further human refinement of the automatically generated concept maps. The suggested propositions are relationships among the concepts which are not explicitly found in the paragraphs. This technique helps to stimulate individual reflection and generate new knowledge. Evaluation was carried out by using the Science Citation Index (SCI) abstract database and CNET News as test data, which are well known databases and the quality of the text is assured. Experimental results show that the automatically generated concept maps conform to the outputs generated manually by domain experts, since the degree of difference between them is proportionally small. The method provides users with the ability to convert scientific and short texts into a structured format which can be easily processed by computer. Moreover, it provides knowledge workers with extra time to re-think their written text and to view their knowledge from another angle.
  9. KDD : techniques and applications (1998) 0.01
    0.0137741035 = product of:
      0.04132231 = sum of:
        0.04132231 = product of:
          0.08264462 = sum of:
            0.08264462 = weight(_text_:22 in 6783) [ClassicSimilarity], result of:
              0.08264462 = score(doc=6783,freq=2.0), product of:
                0.17800546 = queryWeight, product of:
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.05083213 = queryNorm
                0.46428138 = fieldWeight in 6783, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.09375 = fieldNorm(doc=6783)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Footnote
    A special issue of selected papers from the Pacific-Asia Conference on Knowledge Discovery and Data Mining (PAKDD'97), held Singapore, 22-23 Feb 1997
  10. Derek Doran, D.; Gokhale, S.S.: ¬A classification framework for web robots (2012) 0.01
    0.010740783 = product of:
      0.03222235 = sum of:
        0.03222235 = product of:
          0.0644447 = sum of:
            0.0644447 = weight(_text_:classification in 505) [ClassicSimilarity], result of:
              0.0644447 = score(doc=505,freq=4.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.39808834 = fieldWeight in 505, product of:
                  2.0 = tf(freq=4.0), with freq of:
                    4.0 = termFreq=4.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.0625 = fieldNorm(doc=505)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Abstract
    The behavior of modern web robots varies widely when they crawl for different purposes. In this article, we present a framework to classify these web robots from two orthogonal perspectives, namely, their functionality and the types of resources they consume. Applying the classification framework to a year-long access log from the UConn SoE web server, we present trends that point to significant differences in their crawling behavior.
  11. Lowe, D.B.; Dollinger, I.; Koster, T.; Herbert, B.E.: Text mining for type of research classification (2021) 0.01
    0.00986604 = product of:
      0.029598119 = sum of:
        0.029598119 = product of:
          0.059196237 = sum of:
            0.059196237 = weight(_text_:classification in 720) [ClassicSimilarity], result of:
              0.059196237 = score(doc=720,freq=6.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.3656675 = fieldWeight in 720, product of:
                  2.4494898 = tf(freq=6.0), with freq of:
                    6.0 = termFreq=6.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.046875 = fieldNorm(doc=720)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Abstract
    This project brought together undergraduate students in Computer Science with librarians to mine abstracts of articles from the Texas A&M University Libraries' institutional repository, OAKTrust, in order to probe the creation of new metadata to improve discovery and use. The mining operation task consisted simply of classifying the articles into two categories of research type: basic research ("for understanding," "curiosity-based," or "knowledge-based") and applied research ("use-based"). These categories are fundamental especially for funders but are also important to researchers. The mining-to-classification steps took several iterations, but ultimately, we achieved good results with the toolkit BERT (Bidirectional Encoder Representations from Transformers). The project and its workflows represent a preview of what may lie ahead in the future of crafting metadata using text mining techniques to enhance discoverability.
    Source
    Cataloging and classification quarterly. 59(2021) no.8, p.815-834
  12. Haravu, L.J.; Neelameghan, A.: Text mining and data mining in knowledge organization and discovery : the making of knowledge-based products (2003) 0.01
    0.009493601 = product of:
      0.028480802 = sum of:
        0.028480802 = product of:
          0.056961603 = sum of:
            0.056961603 = weight(_text_:classification in 5653) [ClassicSimilarity], result of:
              0.056961603 = score(doc=5653,freq=8.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.35186368 = fieldWeight in 5653, 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=5653)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Abstract
    Discusses the importance of knowledge organization in the context of the information overload caused by the vast quantities of data and information accessible on internal and external networks of an organization. Defines the characteristics of a knowledge-based product. Elaborates on the techniques and applications of text mining in developing knowledge products. Presents two approaches, as case studies, to the making of knowledge products: (1) steps and processes in the planning, designing and development of a composite multilingual multimedia CD product, with the potential international, inter-cultural end users in view, and (2) application of natural language processing software in text mining. Using a text mining software, it is possible to link concept terms from a processed text to a related thesaurus, glossary, schedules of a classification scheme, and facet structured subject representations. Concludes that the products of text mining and data mining could be made more useful if the features of a faceted scheme for subject classification are incorporated into text mining techniques and products.
    Content
    Beitrag eines Themenheftes "Knowledge organization and classification in international information retrieval"
    Source
    Cataloging and classification quarterly. 37(2003) nos.1/2, S.96-114
  13. Bell, D.A.; Guan, J.W.: Computational methods for rough classification and discovery (1998) 0.01
    0.009398185 = product of:
      0.028194554 = sum of:
        0.028194554 = product of:
          0.05638911 = sum of:
            0.05638911 = weight(_text_:classification in 2909) [ClassicSimilarity], result of:
              0.05638911 = score(doc=2909,freq=4.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.34832728 = fieldWeight in 2909, product of:
                  2.0 = tf(freq=4.0), with freq of:
                    4.0 = termFreq=4.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.0546875 = fieldNorm(doc=2909)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Abstract
    Rough set theory is a mathematical tool to deal with vagueness and uncertainty. To apply the theory, it needs to be associated with efficient and effective computational methods. A relation can be used to represent a decison table for use in decision making. By using this kind of table, rough set theory can be applied successfully to rough classification and knowledge discovery. Presents computational methods for using rough sets to identify classes in datasets, finding dependencies in relations, and discovering rules which are hidden in databases. Illustrates the methods with a running example from a database of car test results
  14. Short, M.: Text mining and subject analysis for fiction; or, using machine learning and information extraction to assign subject headings to dime novels (2019) 0.01
    0.009398185 = product of:
      0.028194554 = sum of:
        0.028194554 = product of:
          0.05638911 = sum of:
            0.05638911 = weight(_text_:classification in 5481) [ClassicSimilarity], result of:
              0.05638911 = score(doc=5481,freq=4.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.34832728 = fieldWeight in 5481, product of:
                  2.0 = tf(freq=4.0), with freq of:
                    4.0 = termFreq=4.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.0546875 = fieldNorm(doc=5481)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Abstract
    This article describes multiple experiments in text mining at Northern Illinois University that were undertaken to improve the efficiency and accuracy of cataloging. It focuses narrowly on subject analysis of dime novels, a format of inexpensive fiction that was popular in the United States between 1860 and 1915. NIU holds more than 55,000 dime novels in its collections, which it is in the process of comprehensively digitizing. Classification, keyword extraction, named-entity recognition, clustering, and topic modeling are discussed as means of assigning subject headings to improve their discoverability by researchers and to increase the productivity of digitization workflows.
    Source
    Cataloging and classification quarterly. 57(2019) no.5, S.315-336
  15. Matson, L.D.; Bonski, D.J.: Do digital libraries need librarians? (1997) 0.01
    0.009182736 = product of:
      0.027548207 = sum of:
        0.027548207 = product of:
          0.055096414 = sum of:
            0.055096414 = weight(_text_:22 in 1737) [ClassicSimilarity], result of:
              0.055096414 = score(doc=1737,freq=2.0), product of:
                0.17800546 = queryWeight, product of:
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.05083213 = queryNorm
                0.30952093 = fieldWeight in 1737, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.0625 = fieldNorm(doc=1737)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Date
    22.11.1998 18:57:22
  16. Lusti, M.: Data Warehousing and Data Mining : Eine Einführung in entscheidungsunterstützende Systeme (1999) 0.01
    0.009182736 = product of:
      0.027548207 = sum of:
        0.027548207 = product of:
          0.055096414 = sum of:
            0.055096414 = weight(_text_:22 in 4261) [ClassicSimilarity], result of:
              0.055096414 = score(doc=4261,freq=2.0), product of:
                0.17800546 = queryWeight, product of:
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.05083213 = queryNorm
                0.30952093 = fieldWeight in 4261, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.0625 = fieldNorm(doc=4261)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Date
    17. 7.2002 19:22:06
  17. Amir, A.; Feldman, R.; Kashi, R.: ¬A new and versatile method for association generation (1997) 0.01
    0.009182736 = product of:
      0.027548207 = sum of:
        0.027548207 = product of:
          0.055096414 = sum of:
            0.055096414 = weight(_text_:22 in 1270) [ClassicSimilarity], result of:
              0.055096414 = score(doc=1270,freq=2.0), product of:
                0.17800546 = queryWeight, product of:
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.05083213 = queryNorm
                0.30952093 = fieldWeight in 1270, product of:
                  1.4142135 = tf(freq=2.0), with freq of:
                    2.0 = termFreq=2.0
                  3.5018296 = idf(docFreq=3622, maxDocs=44218)
                  0.0625 = fieldNorm(doc=1270)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Source
    Information systems. 22(1997) nos.5/6, S.333-347
  18. Ayadi, H.; Torjmen-Khemakhem, M.; Daoud, M.; Huang, J.X.; Jemaa, M.B.: Mining correlations between medically dependent features and image retrieval models for query classification (2017) 0.01
    0.0082217 = product of:
      0.024665099 = sum of:
        0.024665099 = product of:
          0.049330197 = sum of:
            0.049330197 = weight(_text_:classification in 3607) [ClassicSimilarity], result of:
              0.049330197 = score(doc=3607,freq=6.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.3047229 = fieldWeight in 3607, product of:
                  2.4494898 = tf(freq=6.0), with freq of:
                    6.0 = termFreq=6.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.0390625 = fieldNorm(doc=3607)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Abstract
    The abundance of medical resources has encouraged the development of systems that allow for efficient searches of information in large medical image data sets. State-of-the-art image retrieval models are classified into three categories: content-based (visual) models, textual models, and combined models. Content-based models use visual features to answer image queries, textual image retrieval models use word matching to answer textual queries, and combined image retrieval models, use both textual and visual features to answer queries. Nevertheless, most of previous works in this field have used the same image retrieval model independently of the query type. In this article, we define a list of generic and specific medical query features and exploit them in an association rule mining technique to discover correlations between query features and image retrieval models. Based on these rules, we propose to use an associative classifier (NaiveClass) to find the best suitable retrieval model given a new textual query. We also propose a second associative classifier (SmartClass) to select the most appropriate default class for the query. Experiments are performed on Medical ImageCLEF queries from 2008 to 2012 to evaluate the impact of the proposed query features on the classification performance. The results show that combining our proposed specific and generic query features is effective in query classification.
  19. Deogun, J.S.: Feature selection and effective classifiers (1998) 0.01
    0.008055588 = product of:
      0.024166763 = sum of:
        0.024166763 = product of:
          0.048333526 = sum of:
            0.048333526 = weight(_text_:classification in 2911) [ClassicSimilarity], result of:
              0.048333526 = score(doc=2911,freq=4.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.29856625 = fieldWeight in 2911, product of:
                  2.0 = tf(freq=4.0), with freq of:
                    4.0 = termFreq=4.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.046875 = fieldNorm(doc=2911)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Abstract
    Develops and analyzes 4 algorithms for feature selection in the context of rough set methodology. Develops the notion of accuracy of classification that can be used for upper or lower classification methods and defines the feature selection problem. Presents a discussion of upper classifiers and develops 4 features selection heuristics and discusses the family of stepwise backward selection algorithms. Analyzes the worst case time complexity in all algorithms presented. Discusses details of the experiments and results of using a family of stepwise backward selection learning data sets and a duodenal ulcer data set. Includes the experimental setup and results of comparison of lower classifiers and upper classiers on the duodenal ulcer data set. Discusses exteded decision tables
  20. Biskri, I.; Rompré, L.: Using association rules for query reformulation (2012) 0.01
    0.008055588 = product of:
      0.024166763 = sum of:
        0.024166763 = product of:
          0.048333526 = sum of:
            0.048333526 = weight(_text_:classification in 92) [ClassicSimilarity], result of:
              0.048333526 = score(doc=92,freq=4.0), product of:
                0.16188543 = queryWeight, product of:
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.05083213 = queryNorm
                0.29856625 = fieldWeight in 92, product of:
                  2.0 = tf(freq=4.0), with freq of:
                    4.0 = termFreq=4.0
                  3.1847067 = idf(docFreq=4974, maxDocs=44218)
                  0.046875 = fieldNorm(doc=92)
          0.5 = coord(1/2)
      0.33333334 = coord(1/3)
    
    Abstract
    In this paper the authors will present research on the combination of two methods of data mining: text classification and maximal association rules. Text classification has been the focus of interest of many researchers for a long time. However, the results take the form of lists of words (classes) that people often do not know what to do with. The use of maximal association rules induced a number of advantages: (1) the detection of dependencies and correlations between the relevant units of information (words) of different classes, (2) the extraction of hidden knowledge, often relevant, from a large volume of data. The authors will show how this combination can improve the process of information retrieval.

Years

Languages

  • e 32
  • d 7

Types