• 제목/요약/키워드: Technology Similarity

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Retrieval of Scholarly Articles with Similar Core Contents

  • Liu, Rey-Long
    • International Journal of Knowledge Content Development & Technology
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    • 제7권3호
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    • pp.5-27
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    • 2017
  • Retrieval of scholarly articles about a specific research issue is a routine job of researchers to cross-validate the evidence about the issue. Two articles that focus on a research issue should share similar terms in their core contents, including their goals, backgrounds, and conclusions. In this paper, we present a technique CCSE ($\underline{C}ore$ $\underline{C}ontent$ $\underline{S}imilarity$ $\underline{E}stimation$) that, given an article a, recommends those articles that share similar core content terms with a. CCSE works on titles and abstracts of articles, which are publicly available. It estimates and integrates three kinds of similarity: goal similarity, background similarity, and conclusion similarity. Empirical evaluation shows that CCSE performs significantly better than several state-of-the-art techniques in recommending those biomedical articles that are judged (by domain experts) to be the ones whose core contents focus on the same research issues. CCSE works for those articles that present research background followed by main results and discussion, and hence it may be used to support the identification of the closely related evidence already published in these articles, even when only titles and abstracts of the articles are available.

funcGNN과 Siamese Network의 코드 유사성 분석 성능비교 (Comparison of Code Similarity Analysis Performance of funcGNN and Siamese Network)

  • 최동빈;조인수;박용범
    • 반도체디스플레이기술학회지
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    • 제20권3호
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    • pp.113-116
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    • 2021
  • As artificial intelligence technologies, including deep learning, develop, these technologies are being introduced to code similarity analysis. In the traditional analysis method of calculating the graph edit distance (GED) after converting the source code into a control flow graph (CFG), there are studies that calculate the GED through a trained graph neural network (GNN) with the converted CFG, Methods for analyzing code similarity through CNN by imaging CFG are also being studied. In this paper, to determine which approach will be effective and efficient in researching code similarity analysis methods using artificial intelligence in the future, code similarity is measured through funcGNN, which measures code similarity using GNN, and Siamese Network, which is an image similarity analysis model. The accuracy was compared and analyzed. As a result of the analysis, the error rate (0.0458) of the Siamese network was bigger than that of the funcGNN (0.0362).

금형 기반 진동 신호 패턴의 유사도 분석을 통한 사출성형공정 변화 감지에 대한 연구 (A Study on Detecting Changes in Injection Molding Process through Similarity Analysis of Mold Vibration Signal Patterns)

  • 김종선
    • Design & Manufacturing
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    • 제17권3호
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    • pp.34-40
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    • 2023
  • In this study, real-time collection of mold vibration signals during injection molding processes was achieved through IoT devices installed on the mold surface. To analyze changes in the collected vibration signals, injection molding was performed under six different process conditions. Analysis of the mold vibration signals according to process conditions revealed distinct trends and patterns. Based on this result, cosine similarity was applied to compare pattern changes in the mold vibration signals. The similarity in time and acceleration vector space between the collected data was analyzed. The results showed that under identical conditions for all six process settings, the cosine similarity remained around 0.92±0.07. However, when different process conditions were applied, the cosine similarity decreased to the range of 0.47±0.07. Based on these results, a cosine similarity threshold of 0.60~0.70 was established. When applied to the analysis of mold vibration signals, it was possible to determine whether the molding process was stable or whether variations had occurred due to changes in process conditions. This establishes the potential use of cosine similarity based on mold vibration signals in future applications for real-time monitoring of molding process changes and anomaly detection.

코사인 유사도를 기반의 온톨로지를 이용한 문장유사도 분석 (Sentence Similarity Analysis using Ontology Based on Cosine Similarity)

  • 황치곤;윤창표;윤대열
    • 한국정보통신학회:학술대회논문집
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    • 한국정보통신학회 2021년도 춘계학술대회
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    • pp.441-443
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    • 2021
  • 문장 또는 텍스트 유사도란 두 가지 문장의 유사한 정도를 나타내는 척도이다. 텍스트의 유사도를 측정하는 기법으로 자카드 유사도, 코사인 유사도, 유클리디언 유사도, 맨하탄 유사도 등과 같이 있다. 현재 코사인 유사도 기법을 가장 많이 사용하고 있으나 이는 문장에서 단어의 출현 여부와 빈도수에 따른 분석이기 때문에, 의미적 관계에 대한 분석이 부족하다. 이에 우리는 온톨로지를 이용하여 단어 간의 관계를 부여하고, 두 문장에서 공통으로 포함된 단어를 추출할 때 의미적 유사성을 포함함으로써 문장의 유사도에 분석의 효율을 향상하고자 한다.

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Siamese 네트워크 기반 SAR 표적영상 간 유사도 분석 (Similarity Analysis Between SAR Target Images Based on Siamese Network)

  • 박지훈
    • 한국군사과학기술학회지
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    • 제25권5호
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    • pp.462-475
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    • 2022
  • Different from the field of electro-optical(EO) image analysis, there has been less interest in similarity metrics between synthetic aperture radar(SAR) target images. A reliable and objective similarity analysis for SAR target images is expected to enable the verification of the SAR measurement process or provide the guidelines of target CAD modeling that can be used for simulating realistic SAR target images. For this purpose, this paper presents a similarity analysis method based on the siamese network that quantifies the subjective assessment through the distance learning of similar and dissimilar SAR target image pairs. The proposed method is applied to MSTAR SAR target images of slightly different depression angles and the resultant metrics are compared and analyzed with qualitative evaluation. Since the image similarity is somewhat related to recognition performance, the capacity of the proposed method for target recognition is further checked experimentally with the confusion matrix.

Exploratory Methodology for Acquiring Architectural Plans Based on Spatial Graph Similarity

  • Ham, Sungil;Chang, Seongju;Suh, Dongjun;Narangerel, Amartuvshin
    • Architectural research
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    • 제17권2호
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    • pp.57-64
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    • 2015
  • In architectural planning, previous cases of similar spatial program provide important data for architectural design. Case-based reasoning (CBR) paradigm in the field of architectural design is closely related to the designing behavior of a planner who makes use of similar architectural designs and spatial programs in the past. In CBR, spatial graph can be constituted with most fundamental data, which can provide a method of searching spatial program by using visual graphs. This study developed a system for CBR that can analyze the similarity through graph comparison and search for buildings. This is an integrated system that is able to compare space similarity of different buildings and analyze their types, in addition to the analysis on a space within a single structure.

지식모니터링시스템에서 감성기준을 고려한 EFASIT 모델 (An EFASIT model considering the emotion criteria in Knowledge Monitoring System)

  • 류경현;피수영
    • 인터넷정보학회논문지
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    • 제12권4호
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    • pp.107-117
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    • 2011
  • 웹의 등장은 전통적인 정보검색을 비롯하여 지식관리와 일반 상거래 등 사회 전 분야의 급격한 변혁을 초래하였다. 그러나 검색엔진은 일반적으로 관련된 계산함수에 의해 순서화된 URL의 방대한 목록을 제공하지만, 관련 없는 정보의 필터링이나 사용자가 필요로 하는 정보의 검색에 많은 시간이 소요된다. 본 논문에서는 웹상의 효율적인 문서검색을 위해서 영역 코퍼스 정보를 바탕으로 확장된 퍼지 계층화 의사결정법(Extended Fuzzy AHP Method : EFAM)과 유사도 기법(SImilarity Technology : SIT)을 결합하고, 감성기준을 고려한 EFASIT(Extended Fuzzy AHP and SImilarity Technology)모델을 제안한다. 제안한 감성기준을 고려한 EFASIT 모델은 다양한 의사결정자들의 퍼지지식의 통합으로 좀 더 명확한 규칙을 생성할 수 있고 의사결정을 하는데 도움을 준다는 것을 실험을 통하여 확인한다.

Community Detection using Closeness Similarity based on Common Neighbor Node Clustering Entropy

  • Jiang, Wanchang;Zhang, Xiaoxi;Zhu, Weihua
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제16권8호
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    • pp.2587-2605
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    • 2022
  • In order to efficiently detect community structure in complex networks, community detection algorithms can be designed from the perspective of node similarity. However, the appropriate parameters should be chosen to achieve community division, furthermore, these existing algorithms based on the similarity of common neighbors have low discrimination between node pairs. To solve the above problems, a noval community detection algorithm using closeness similarity based on common neighbor node clustering entropy is proposed, shorted as CSCDA. Firstly, to improve detection accuracy, common neighbors and clustering coefficient are combined in the form of entropy, then a new closeness similarity measure is proposed. Through the designed similarity measure, the closeness similar node set of each node can be further accurately identified. Secondly, to reduce the randomness of the community detection result, based on the closeness similar node set, the node leadership is used to determine the most closeness similar first-order neighbor node for merging to create the initial communities. Thirdly, for the difficult problem of parameter selection in existing algorithms, the merging of two levels is used to iteratively detect the final communities with the idea of modularity optimization. Finally, experiments show that the normalized mutual information values are increased by an average of 8.06% and 5.94% on two scales of synthetic networks and real-world networks with real communities, and modularity is increased by an average of 0.80% on the real-world networks without real communities.

An Incremental Similarity Computation Method in Agglomerative Hierarchical Clustering

  • Jung, Sung-young;Kim, Taek-soo
    • 한국지능시스템학회논문지
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    • 제11권7호
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    • pp.579-583
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    • 2001
  • In the area of data clustering in high dimensional space, one of the difficulties is the time-consuming process for computing vector similarities. It becomes worse in the case of the agglomerative algorithm with the group-average link and mean centroid method, because the cluster similarity must be recomputed whenever the cluster center moves after the merging step. As a solution of this problem, we present an incremental method of similarity computation, which substitutes the scalar calculation for the time-consuming calculation of vector similarity with several measures such as the squared distance, inner product, cosine, and minimum variance. Experimental results show that it makes clustering speed significantly fast for very high dimensional data.

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