• 제목/요약/키워드: Boyer-Moore Algorithm

검색결과 4건 처리시간 0.015초

Boyer-Moore 알고리즘을 위한 GPU상에서의 병렬 최적화 (Parallelization and Performance Optimization of the Boyer-Moore Algorithm on GPU)

  • 정요상;쟌느앗-프엉;이명호;남덕윤;김직수;황순욱
    • 정보과학회 컴퓨팅의 실제 논문지
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    • 제21권2호
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    • pp.138-143
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    • 2015
  • Boyer-Moore 알고리즘은 컴퓨터 및 인터넷 보안, 바이오 인포매틱스 등의 응용프로그램에서 널리 활용되는 패턴매칭 알고리즘이다. 이 알고리즘은 방대한 양의 입력 데이터에 존재하는 특정한 하나의 패턴을 실시간에 검색해야하는 높은 계산 요구량으로 인하여 병렬 처리 및 성능 최적화가 필수적이다. 본 논문에서는 GPU를 활용하여 BM 알고리즘을 병렬 최적화하는 방법론을 제안한다. 방법론에 따라 알고리즘 cascading 기법을 적용하여 실행시간에 소요되는 매핑 오버헤드를 최소화하고, 멀티스레딩 효과를 극대화하여 스레드들간의 부하 부산을 향상시킴으로써 순차실행 대비 최대 45배의 성능향상을 얻었다.

네트워크 보안을 위한 강력한 문자열 매칭 알고리즘 (Robust Quick String Matching Algorithm for Network Security)

  • 이종욱;박찬길
    • 디지털산업정보학회논문지
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    • 제9권4호
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    • pp.135-141
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    • 2013
  • String matching is one of the key algorithms in network security and many areas could be benefit from a faster string matching algorithm. Based on the most efficient string matching algorithm in sual applications, the Boyer-Moore (BM) algorithm, a novel algorithm called RQS is proposed. RQS utilizes an improved bad character heuristic to achieve bigger shift value area and an enhanced good suffix heuristic to dramatically improve the worst case performance. The two heuristics combined with a novel determinant condition to switch between them enable RQS achieve a higher performance than BM both under normal and worst case situation. The experimental results reveal that RQS appears efficient than BM many times in worst case, and the longer the pattern, the bigger the performance improvement. The performance of RQS is 7.57~36.34% higher than BM in English text searching, 16.26~26.18% higher than BM in uniformly random text searching, and 9.77% higher than BM in the real world Snort pattern set searching.

A Study on Image Recommendation System based on Speech Emotion Information

  • Kim, Tae Yeun;Bae, Sang Hyun
    • 통합자연과학논문집
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    • 제11권3호
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    • pp.131-138
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    • 2018
  • In this paper, we have implemented speeches that utilized the emotion information of the user's speech and image matching and recommendation system. To classify the user's emotional information of speech, the emotional information of speech about the user's speech is extracted and classified using the PLP algorithm. After classification, an emotional DB of speech is constructed. Moreover, emotional color and emotional vocabulary through factor analysis are matched to one space in order to classify emotional information of image. And a standardized image recommendation system based on the matching of each keyword with the BM-GA algorithm for the data of the emotional information of speech and emotional information of image according to the more appropriate emotional information of speech of the user. As a result of the performance evaluation, recognition rate of standardized vocabulary in four stages according to speech was 80.48% on average and system user satisfaction was 82.4%. Therefore, it is expected that the classification of images according to the user's speech information will be helpful for the study of emotional exchange between the user and the computer.

Automatic In-Text Keyword Tagging based on Information Retrieval

  • Kim, Jin-Suk;Jin, Du-Seok;Kim, Kwang-Young;Choe, Ho-Seop
    • Journal of Information Processing Systems
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    • 제5권3호
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    • pp.159-166
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    • 2009
  • As shown in Wikipedia, tagging or cross-linking through major keywords in a document collection improves not only the readability of documents but also responsive and adaptive navigation among related documents. In recent years, the Semantic Web has increased the importance of social tagging as a key feature of the Web 2.0 and, as its crucial phenotype, Tag Cloud has emerged to the public. In this paper we provide an efficient method of automated in-text keyword tagging based on large-scale controlled term collection or keyword dictionary, where the computational complexity of O(mN) - if a pattern matching algorithm is used - can be reduced to O(mlogN) - if an Information Retrieval technique is adopted - while m is the length of target document and N is the total number of candidate terms to be tagged. The result shows that automatic in-text tagging with keywords filtered by Information Retrieval speeds up to about 6 $\sim$ 40 times compared with the fastest pattern matching algorithm.