• Title/Summary/Keyword: 희소성지표

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Derivation of Scarcity Index for Korean Coal Using Input Distance Function (투입물거리함수(投入物巨利函數)를 이용한 한국(韓國) 무연탄(無煙炭)의 희소성지표(稀少性指標) 산정(算定))

  • Lee, Myunghun
    • Environmental and Resource Economics Review
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    • v.13 no.1
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    • pp.33-47
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    • 2004
  • Even though the price of extracted but unprocessed coal has been available in Korea, the use of it as scarcity index would be inappropriate because of price subsidy. Following Halvorsen and Smith(1984), Kim and Lee(2002) derived estimates of the shadow price of unextracted coal by estimating the restricted cost function and differentiating with respect to the quantity of coal extracted. In Korea, however, due to the limited data the capital prices have been computed inconsistently case by case without relying on the robust formula like the Christensen-Jorgenson methodology used in US, which could result in biased estimators of the restricted cost function. In the paper the shadow prices of the resources in situ are obtained by measuring an input distance function defined by Shephard (1970), which requires only the data on the quantities of inputs and output. Empirical results for the Korean coal mining industry show that these shadow prices as a coal scarcity have increased fast by approximately three times in comparisons with those obtained by Kim and Lee.

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한국 석탄자원의 희소성 측정

  • Lee, Myeong-Heon
    • Environmental and Resource Economics Review
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    • v.4 no.1
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    • pp.91-102
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    • 1994
  • 우리나라에서 다른 광물자원보다 매장량이 비교적 풍부하고 에너지원으로서 총에너지소비량에서 중요한 몫을 차지해 온 석탄의 희소성을 측정하기 위하여 시장가격을 사용할 경우 그 결과는 실질고갈상태를 왜곡시킬 수 있다. 왜냐하면 정부가 석탄가격을 관리하며 생산원가보다 낮은 부분에 대해서는 보조금이나 장려금을 지급해 왔기 때문이다. 그러므로 본 연구는 쌍대성이론(duality theory)을 토대로 한 할버슨-스미스(Halvorsen-Smith, 1984) 모형을 이용하여 매장되어 있는 광물자원의 암묵가격(shadow price)을 실증적으로 추정함으로써 우리나라 석탄자원의 희소성을 측정하였다. 최종생산물의 가격으로 측정된 희소성지표에 의하면 우리나라의 석탄자원은 매우 완만하게 고갈되어 가고 있는 반면에 광석의 암묵가격으로 본 회소성지표에 의하면 그보다 더 빠른 속도로 고갈되어 가고 있음을 알 수 있었다.

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Empirical Study on Correlation between Performance and PSI According to Adversarial Attacks for Convolutional Neural Networks (컨벌루션 신경망 모델의 적대적 공격에 따른 성능과 개체군 희소 지표의 상관성에 관한 경험적 연구)

  • Youngseok Lee
    • The Journal of Korea Institute of Information, Electronics, and Communication Technology
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    • v.17 no.2
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    • pp.113-120
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    • 2024
  • The population sparseness index(PSI) is being utilized to describe the functioning of internal layers in artificial neural networks from the perspective of neurons, shedding light on the black-box nature of the network's internal operations. There is research indicating a positive correlation between the PSI and performance in each layer of convolutional neural network models for image classification. In this study, we observed the internal operations of a convolutional neural network when adversarial examples were applied. The results of the experiments revealed a similar pattern of positive correlation for adversarial examples, which were modified to maintain 5% accuracy compared to applying benign data. Thus, while there may be differences in each adversarial attack, the observed PSI for adversarial examples demonstrated consistent positive correlations with benign data across layers.

A Survey on the Domestic Radio Devices Industry and Spectrum Usage Status (국내 무선기기 산업 및 주파수 사용현황 조사)

  • Jahng, J.H;Ahn, C.M.;Kim, T.H.;Seung, K.H.
    • Electronics and Telecommunications Trends
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    • v.24 no.3
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    • pp.139-146
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    • 2009
  • 최근 국가의 무형자산인 전파자원에 대한 수요가 급증하면서 전파자원의 희소성과 경제적 가치가 점점 높아지고 있다. 이에 미국, 유럽, 일본 등 해외 선진국은 정기적으로 전파이용자의 활용 현황을 조사하고 있으며, 그 결과를 전파정책 수립을 위한 기초자료로 활용하고 있다. 이에 본 조사는 국내 전파이용 기업들을 대상으로 무선기기 산업 현황 및 주파수 활용 실태를 파악하고, 그동안 부진했던 무선기기 제품의 활성화 및 전파이용에 대한 제도개선과 지원방안을 모색하고자 시행하였으며, 이를 통해 전파산업육성에 있어서 중요한 지표가 될 수 있는 아이템의 체계적인 발굴 및 전략적 시사점을 제시하였다.

Increasing Accuracy of Classifying Useful Reviews by Removing Neutral Terms (중립도 기반 선택적 단어 제거를 통한 유용 리뷰 분류 정확도 향상 방안)

  • Lee, Minsik;Lee, Hong Joo
    • Journal of Intelligence and Information Systems
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    • v.22 no.3
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    • pp.129-142
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    • 2016
  • Customer product reviews have become one of the important factors for purchase decision makings. Customers believe that reviews written by others who have already had an experience with the product offer more reliable information than that provided by sellers. However, there are too many products and reviews, the advantage of e-commerce can be overwhelmed by increasing search costs. Reading all of the reviews to find out the pros and cons of a certain product can be exhausting. To help users find the most useful information about products without much difficulty, e-commerce companies try to provide various ways for customers to write and rate product reviews. To assist potential customers, online stores have devised various ways to provide useful customer reviews. Different methods have been developed to classify and recommend useful reviews to customers, primarily using feedback provided by customers about the helpfulness of reviews. Most shopping websites provide customer reviews and offer the following information: the average preference of a product, the number of customers who have participated in preference voting, and preference distribution. Most information on the helpfulness of product reviews is collected through a voting system. Amazon.com asks customers whether a review on a certain product is helpful, and it places the most helpful favorable and the most helpful critical review at the top of the list of product reviews. Some companies also predict the usefulness of a review based on certain attributes including length, author(s), and the words used, publishing only reviews that are likely to be useful. Text mining approaches have been used for classifying useful reviews in advance. To apply a text mining approach based on all reviews for a product, we need to build a term-document matrix. We have to extract all words from reviews and build a matrix with the number of occurrences of a term in a review. Since there are many reviews, the size of term-document matrix is so large. It caused difficulties to apply text mining algorithms with the large term-document matrix. Thus, researchers need to delete some terms in terms of sparsity since sparse words have little effects on classifications or predictions. The purpose of this study is to suggest a better way of building term-document matrix by deleting useless terms for review classification. In this study, we propose neutrality index to select words to be deleted. Many words still appear in both classifications - useful and not useful - and these words have little or negative effects on classification performances. Thus, we defined these words as neutral terms and deleted neutral terms which are appeared in both classifications similarly. After deleting sparse words, we selected words to be deleted in terms of neutrality. We tested our approach with Amazon.com's review data from five different product categories: Cellphones & Accessories, Movies & TV program, Automotive, CDs & Vinyl, Clothing, Shoes & Jewelry. We used reviews which got greater than four votes by users and 60% of the ratio of useful votes among total votes is the threshold to classify useful and not-useful reviews. We randomly selected 1,500 useful reviews and 1,500 not-useful reviews for each product category. And then we applied Information Gain and Support Vector Machine algorithms to classify the reviews and compared the classification performances in terms of precision, recall, and F-measure. Though the performances vary according to product categories and data sets, deleting terms with sparsity and neutrality showed the best performances in terms of F-measure for the two classification algorithms. However, deleting terms with sparsity only showed the best performances in terms of Recall for Information Gain and using all terms showed the best performances in terms of precision for SVM. Thus, it needs to be careful for selecting term deleting methods and classification algorithms based on data sets.

Estimating the Method of the Number of Visitors of Water-friendly Park Using GPS Location Information (GPS 위치정보를 활용한 친수공원 이용객 수 추정방법 연구)

  • Kim, Seong-Jun;Kim, Tae-Jeong;Kim, Chang-Sung
    • Ecology and Resilient Infrastructure
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    • v.7 no.3
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    • pp.171-180
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    • 2020
  • With the increase in industrialization and urbanization, scarcity of space for leisure life has become an important issue. Opportunities such as natural scenery and ecological experiences provided by waterfront spaces around streams are fundamental factors in the development of the community and creation of a hydrophilic park. In the past, on-site surveys have been conducted using human resources to quantify the number of river visitors, but the accuracy of the results was not sufficient owing to limitations in expenses, manpower, space, and time. In this study, to overcome this problem, we estimated the number of visitors using the location information related to hydrophilic parks. The study areas were Samrak Ecological Park and Daejeo Ecological Park located downstream of the Nakdong River. We compared and analyzed the pattern of the visitors by using the large communication data and the visiting pattern based on GPS location information. The GPS location information is based on Google Popular Times and Kakao visitor data. When the GPS location data were used, the pattern for weekday and weekend visitors was clearer than when the large communication data were used. Therefore, it is expected to be similar to the result of GPS location information if the number of visitors is extracted under the condition of precision of pCELL size and residence time of 30 minutes or more when using future communication big data. In addition, if revisions such as the Personal Information Protection Act are made to extract more accurate data, by estimating the number of visitors based on GPS data, more accurate indicators of the number of visitors can be derived.

A Study of Recommendation Systems for Supporting Command and Control (C2) Workflow (지휘통제 워크플로우 지원 추천 시스템 연구)

  • Park, Gyudong;Jeon, Gi-Yoon;Sohn, Mye;Kim, Jongmo
    • Journal of Internet Computing and Services
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    • v.23 no.1
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    • pp.125-134
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    • 2022
  • The development of information communication and artificial intelligence technology requires the intelligent command and control (C2) system for Korean military, and various studies are attempted to achieve it. In particular, as a volume ofinformation in the C2 workflow increases exponentially, this study pays attention to the collaborative filtering (CF) and recommendation systems (RS) that can provide the essential information for the users of the C2 system has been developed. The RS performing information filtering in the C2 system should provide an explanatory recommendation and consider the context of the tasks and users. In this paper, we propose a contextual pre-filtering CARS framework that recommends information in the C2 workflow. The proposed framework consists of four components: 1) contextual pre-filtering that filters data in advance based on the context and relationship of the users, 2) feature selection to overcome the data sparseness that is a weak point for the CF, 3) the proposed CF with the features distances between the users used to calculate user similarity, and 4) rule-based post filtering to reflect user preferences. In order to evaluate the superiority of this study, various distance methods of the existing CF method were compared to the proposed framework with two experimental datasets in real-world. As a result of comparative experiments, it was shown that the proposed framework was superior in terms of MAE, MSE, and MSLE.

GEase-K: Linear and Nonlinear Autoencoder-based Recommender System with Side Information (GEase-K: 부가 정보를 활용한 선형 및 비선형 오토인코더 기반의 추천시스템)

  • Taebeom Lee;Seung-hak Lee;Min-jeong Ma;Yoonho Cho
    • Journal of Intelligence and Information Systems
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    • v.29 no.3
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    • pp.167-183
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    • 2023
  • In the recent field of recommendation systems, various studies have been conducted to model sparse data effectively. Among these, GLocal-K(Global and Local Kernels for Recommender Systems) is a research endeavor combining global and local kernels to provide personalized recommendations by considering global data patterns and individual user characteristics. However, due to its utilization of kernel tricks, GLocal-K exhibits diminished performance on highly sparse data and struggles to offer recommendations for new users or items due to the absence of side information. In this paper, to address these limitations of GLocal-K, we propose the GEase-K (Global and EASE kernels for Recommender Systems) model, incorporating the EASE(Embarrassingly Shallow Autoencoders for Sparse Data) model and leveraging side information. Initially, we substitute EASE for the local kernel in GLocal-K to enhance recommendation performance on highly sparse data. EASE, functioning as a simple linear operational structure, is an autoencoder that performs highly on extremely sparse data through regularization and learning item similarity. Additionally, we utilize side information to alleviate the cold-start problem. We enhance the understanding of user-item similarities by employing a conditional autoencoder structure during the training process to incorporate side information. In conclusion, GEase-K demonstrates resilience in highly sparse data and cold-start situations by combining linear and nonlinear structures and utilizing side information. Experimental results show that GEase-K outperforms GLocal-K based on the RMSE and MAE metrics on the highly sparse GoodReads and ModCloth datasets. Furthermore, in cold-start experiments divided into four groups using the GoodReads and ModCloth datasets, GEase-K denotes superior performance compared to GLocal-K.