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http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/38699| Title: | 使用SVM標記多種生醫具名實體 Annotating Multiple Types of Biomedical Entities Using Support Vector Machines |
| Authors: | Chih Lee 李遲 |
| Advisor: | 陳信希(Hsin-Hsi Chen) |
| Keyword: | 生物資訊,自然語言處理,生醫具名實體,支援向量機, bioinformatics,NLP,biomedical named entity,support vector machines, |
| Publication Year : | 2005 |
| Degree: | 碩士 |
| Abstract: | Named entity recognition is a fundamental task in biomedical text mining. Multiple-class entity annotation is more complicated and challenging than single-class entity annotation. In this thesis, we presented a single word classification approach to dealing with the multiple-class entity annotation problem using Support Vector Machines (SVMs). In other words, each token in a sentence is represented by a feature vector and classified as one of the given classes. Orthographical patterns, morphological patterns, results from existing gene/protein name taggers, context, part of speech (POS) tags, tags (class labels) of surrounding tokens, and other information are important features for named entity recognition. In addition, we employed a unique way of extracting and utilizing context information. Due to the huge number of non-entity instances (class ‘O’), we clustered the instances of this class into 5 subclasses to accelerate the SVM training process. We also applied a simple post-processing technique with the help of a dictionary and a post-processing technique via abbreviation extraction.
We presented the performance of our system using 13 different notions of correctness, showing the overall performance of our system is somewhere between 68.16% and 79.91% in terms of f-score, which is comparable to the performance of the top 3 systems in the JNLPBA shared task. Besides various notions of correctness used in evaluation, we defined 5 types of errors and showed how frequently our system made these types of mistakes. The error analysis also revealed the annotation discrepancies among the training and test corpora. Therefore, researchers approaching biomedical named entity recognition with machine learning algorithms should seek to improve their systems as well as be aware of the correctness of the underlying corpus. |
| URI: | http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/38699 |
| Fulltext Rights: | 有償授權 |
| Appears in Collections: | 資訊工程學系 |
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| File | Size | Format | |
|---|---|---|---|
| ntu-94-1.pdf Restricted Access | 435.77 kB | Adobe PDF |
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