• Title/Summary/Keyword: Text categorization

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Optimization of Number of Training Documents in Text Categorization (문헌범주화에서 학습문헌수 최적화에 관한 연구)

  • Shim, Kyung
    • Journal of the Korean Society for information Management
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    • v.23 no.4 s.62
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    • pp.277-294
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    • 2006
  • This paper examines a level of categorization performance in a real-life collection of abstract articles in the fields of science and technology, and tests the optimal size of documents per category in a training set using a kNN classifier. The corpus is built by choosing categories that hold more than 2,556 documents first, and then 2,556 documents per category are randomly selected. It is further divided into eight subsets of different size of training documents : each set is randomly selected to build training documents ranging from 20 documents (Tr-20) to 2,000 documents (Tr-2000) per category. The categorization performances of the 8 subsets are compared. The average performance of the eight subsets is 30% in $F_1$ measure which is relatively poor compared to the findings of previous studies. The experimental results suggest that among the eight subsets the Tr-100 appears to be the most optimal size for training a km classifier In addition, the correctness of subject categories assigned to the training sets is probed by manually reclassifying the training sets in order to support the above conclusion by establishing a relation between and the correctness and categorization performance.

Making Anyatha (Upper Lander) and Auktha (Lower Lander): Crossing the Introduction of the Colonial Boundary System to British Burma (Myanmar)

  • Oo, Myo
    • SUVANNABHUMI
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    • v.13 no.2
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    • pp.135-164
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    • 2021
  • In Myanmar studies, despite research on the categorization of ethnic nationalities are fairly much, research on the categorization of Myanmar people (ethnic Myanmar) is rarely exposed. People settled down in Central Myanmar had been categorized by regionalism into two groups as Anyatha (Upper Lander) and Auktha (Lower lander). It can be determined that the regionalism of Myanmar people existed and still exists. Previous scholarship in the colonial history of Myanmar has primarily referred to the documents recorded by the colonial officers and historical texts composed by the British authorities and scholars. The Catalogue of the Hluttaw Records is one of the rarest documents recorded in the Myanmar language on the affairs in the borderline drawn by the British after the Second Anglo-Myanmar War (1852-1853). Scrutinizing the Catalogue of the Hluttaw Records, it has been found that the text sheds light on the division of Central Myanmar into two regions in colonial Burma, later known as Lower Myanmar and Myanmar kingdom. These areas were known as Upper Myanmar between 1853 and 1885, and the categorization of the Myanmar king's subject, known as Anyatha (Upper Lander) and British colony citizen later known as Auktha (Lower Lander). This article traces back the relation of introducing the colonial boundary system and the division of Central Myanmar into two regions that allowed the emergence of regionalism among Myanmar people.

Comparison Between Optimal Features of Korean and Chinese for Text Classification (한중 자동 문서분류를 위한 최적 자질어 비교)

  • Ren, Mei-Ying;Kang, Sinjae
    • Journal of the Korean Institute of Intelligent Systems
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    • v.25 no.4
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    • pp.386-391
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    • 2015
  • This paper proposed the optimal attributes for text classification based on Korean and Chinese linguistic features. The experiments committed to discover which is the best feature among n-grams which is known as language independent, morphemes that have language dependency and some other feature sets consisted with n-grams and morphemes showed best results. This paper used SVM classifier and Internet news for text classification. As a result, bi-gram was the best feature in Korean text categorization with the highest F1-Measure of 87.07%, and for Chinese document classification, 'uni-gram+noun+verb+adjective+idiom', which is the combined feature set, showed the best performance with the highest F1-Measure of 82.79%.

An Experimental Study on Text Categorization using an SVM Classifier (SVM 분류기를 이용한 문서 범주화 연구)

  • 정영미;임혜영
    • Journal of the Korean Society for information Management
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    • v.17 no.4
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    • pp.229-248
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    • 2000
  • Among several learning algorithms for lexl calegoriration. SVM(Snpport Vsctor Machines) has been provcd to ouq~e~fotm other classifiers. Th~study e~~aluales the categarizalion ability of en SVM classifier using the ModApte split of the Reutcrs-21578 dataset. First. an experiment 1s perlormed to test a few feature wetghtlng schemes that will be used in thc calegarization tasks. Second, (he categorization periarrnances of the lulear SVM and the non-linear SVM are compared. Finally. the binary SVM classifier is expanded into a multi-class classifier and thek pcrforrnnnces are comparativcly evaluated.

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Automatic Text Categorization Using Hybrid Multiple Model Schemes (하이브리드 다중모델 학습기법을 이용한 자동 문서 분류)

  • 명순희;김인철
    • Journal of the Korean Society for information Management
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    • v.19 no.4
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    • pp.35-51
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    • 2002
  • Inductive learning and classification techniques have been employed in various research and applications that organize textual data to solve the problem of information access. In this study, we develop hybrid model combination methods which incorporate the concepts and techniques for multiple modeling algorithms to improve the accuracy of text classification, and conduct experiments to evaluate the performances of proposed schemes. Boosted stacking, one of the extended stacking schemes proposed in this study yields higher accuracy relative to the conventional model combination methods and single classifiers.

A Text Content Classification Using LSTM For Objective Category Classification

  • Noh, Young-Dan;Cho, Kyu-Cheol
    • Journal of the Korea Society of Computer and Information
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    • v.26 no.5
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    • pp.39-46
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    • 2021
  • AI is deeply applied to various algorithms that assists us, not only daily technologies like translator and Face ID, but also contributing to innumerable fields in industry, due to its dominance. In this research, we provide convenience through AI categorization, extracting the only data that users need, with objective classification, rather than verifying all data to find from the internet, where exists an immense number of contents. In this research, we propose a model using LSTM(Long-Short Term Memory Network), which stands out from text classification, and compare its performance with models of RNN(Recurrent Neural Network) and BiLSTM(Bidirectional LSTM), which is suitable structure for natural language processing. The performance of the three models is compared using measurements of accuracy, precision, and recall. As a result, the LSTM model appears to have the best performance. Therefore, in this research, text classification using LSTM is recommended.

Machine Learning Based Automatic Categorization Model for Text Lines in Invoice Documents

  • Shin, Hyun-Kyung
    • Journal of Korea Multimedia Society
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    • v.13 no.12
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    • pp.1786-1797
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    • 2010
  • Automatic understanding of contents in document image is a very hard problem due to involvement with mathematically challenging problems originated mainly from the over-determined system induced by document segmentation process. In both academic and industrial areas, there have been incessant and various efforts to improve core parts of content retrieval technologies by the means of separating out segmentation related issues using semi-structured document, e.g., invoice,. In this paper we proposed classification models for text lines on invoice document in which text lines were clustered into the five categories in accordance with their contents: purchase order header, invoice header, summary header, surcharge header, purchase items. Our investigation was concentrated on the performance of machine learning based models in aspect of linear-discriminant-analysis (LDA) and non-LDA (logic based). In the group of LDA, na$\"{\i}$ve baysian, k-nearest neighbor, and SVM were used, in the group of non LDA, decision tree, random forest, and boost were used. We described the details of feature vector construction and the selection processes of the model and the parameter including training and validation. We also presented the experimental results of comparison on training/classification error levels for the models employed.

Methodology for Applying Text Mining Techniques to Analyzing Online Customer Reviews for Market Segmentation (온라인 고객리뷰 분석을 통한 시장세분화에 텍스트마이닝 기술을 적용하기 위한 방법론)

  • Kim, Keun-Hyung;Oh, Sung-Ryoel
    • The Journal of the Korea Contents Association
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    • v.9 no.8
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    • pp.272-284
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    • 2009
  • In this paper, we proposed the methodology for analyzing online customer reviews by using text mining technologies. We introduced marketing segmentation into the methodology because it would be efficient and effective to analyze the online customers by grouping them into similar online customers that might include similar opinions and experiences of the customers. That is, the methodology uses categorization and information extraction functions among text mining technologies, matched up with the concept of market segmentation. In particular, the methodology also uses cross-tabulations analysis function which is a kind of traditional statistics analysis functions to derive rigorous results of the analysis. In order to confirm the validity of the methodology, we actually analyzed online customer reviews related with tourism by using the methodology.

Competitive intelligence in Korean Ramen Market using Text Mining and Sentiment Analysis

  • Kim, Yoosin;Jeong, Seung Ryul
    • Journal of Internet Computing and Services
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    • v.19 no.1
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    • pp.155-166
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    • 2018
  • These days, online media, such as blogospheres, online communities, and social networking sites, provides the uncountable user-generated content (UGC) to discover market intelligence and business insight with. The business has been interested in consumers, and constantly requires the approach to identify consumers' opinions and competitive advantage in the competing market. Analyzing consumers' opinion about oneself and rivals can help decision makers to gain in-depth and fine-grained understanding on the human and social behavioral dynamics underlying the competition. In order to accomplish the comparison study for rival products and companies, we attempted to do competitive analysis using text mining with online UGC for two popular and competing ramens, a market leader and a market follower, in the Korean instant noodle market. Furthermore, to overcome the lack of the Korean sentiment lexicon, we developed the domain specific sentiment dictionary of Korean texts. We gathered 19,386 pieces of blogs and forum messages, developed the Korean sentiment dictionary, and defined the taxonomy for categorization. In the context of our study, we employed sentiment analysis to present consumers' opinion and statistical analysis to demonstrate the differences between the competitors. Our results show that the sentiment portrayed by the text mining clearly differentiate the two rival noodles and convincingly confirm that one is a market leader and the other is a follower. In this regard, we expect this comparison can help business decision makers to understand rich in-depth competitive intelligence hidden in the social media.

A Novel Feature Selection Method in the Categorization of Imbalanced Textual Data

  • Pouramini, Jafar;Minaei-Bidgoli, Behrouze;Esmaeili, Mahdi
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.12 no.8
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    • pp.3725-3748
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    • 2018
  • Text data distribution is often imbalanced. Imbalanced data is one of the challenges in text classification, as it leads to the loss of performance of classifiers. Many studies have been conducted so far in this regard. The proposed solutions are divided into several general categories, include sampling-based and algorithm-based methods. In recent studies, feature selection has also been considered as one of the solutions for the imbalance problem. In this paper, a novel one-sided feature selection known as probabilistic feature selection (PFS) was presented for imbalanced text classification. The PFS is a probabilistic method that is calculated using feature distribution. Compared to the similar methods, the PFS has more parameters. In order to evaluate the performance of the proposed method, the feature selection methods including Gini, MI, FAST and DFS were implemented. To assess the proposed method, the decision tree classifications such as C4.5 and Naive Bayes were used. The results of tests on Reuters-21875 and WebKB figures per F-measure suggested that the proposed feature selection has significantly improved the performance of the classifiers.