International Journal of Service and Knowledge Management https://iaiai.org/journals/index.php/IJSKM <p align="justify"><strong>International Journal of Service and Knowledge Management (IJSKM)</strong>&nbsp;is a peer-reviewed/refereed international journal that is dedicated to the theory and practice in Service and Knowledge Management. IJSKM strives to cover all aspects of working out new technologies and theories, and also mainly publishes technical contributions on outstanding inventions, innovation, and findings that have influential importance to Service and Knowledge Management. The journal is published on&nbsp;<a href="http://iaiai.org/publications/publicationethics.html" target="_blank" rel="noopener">IIAI Journals Publication Ethics</a>.</p> en-US editorial-office@iaiai.org (Tokuro Matsuo) editorial-office@iaiai.org (Tokuro Matsuo) Mon, 28 Oct 2024 01:44:13 +0000 OJS 3.1.2.4 http://blogs.law.harvard.edu/tech/rss 60 Adversarial Attacks for Time Series Classification using Partial Perturbations https://iaiai.org/journals/index.php/IJSKM/article/view/813 <p>Adversarial attacks using adversarial examples have recently become a significant threat that intentionally misleads deep-learning models beyond human recognition. Adversarial examples have primarily been studied in the field of image recognition; however, they have recently been applied in other fields, including time series data classification. To generate adversarial examples, small perturbations unrecognizable by humans are typically added to all the data regions. However, adding perturbations to the entire time series data results in time series data that are clearly manipulated for time series classification. In this case, adversarial attacks are immediately apparent to humans and do not pose a significant threat. This study shows that unidentifiable adversarial examples of time series can be identified as adversarial examples in time series data classification by adopting partial perturbations. The fast gradient sign method (FGSM) and projected gradient descent (PGD) attack methods, which are originally proposed for generating adversarial examples of image data, are applied to time series data classification models. In this study, partial-FGSM and partial-PGD attacks are proposed which utilize only a part of the perturbations to generate fewer unreliable adversarial examples of time series data that are easily recognized as adversarial examples. To evaluate partial-FGSM and partial-PGD attacks, the 2 Class-Based-Detecting adversarial detection method is employed, as its effectiveness for protecting adversarial attacks against time series classification has been proven. The performance is evaluated, and the results show that attacks are possible with a small degradation in attack performance for some datasets, even if the perturbation ratio is 1/10.</p> Jun Teraoka, Keiichi Tamura Copyright (c) 2024 International Journal of Service and Knowledge Management https://iaiai.org/journals/index.php/IJSKM/article/view/813 Mon, 28 Oct 2024 01:43:49 +0000 The Redesigning Road Network in the Era of Decreasing Population by Traffic Simulation https://iaiai.org/journals/index.php/IJSKM/article/view/814 <p>In light of an aging society in which the number of expressway users declines while infrastructure maintenance costs remain high, we propose a new method for evaluating whether expressway routes should be closed when their cost-benefit ratios become unfavorable owing to reduced usage. Moreover, we conducted a case study in which this method was applied to analyze the Kawasaki route (Kanagawa No. 6, Kawasaki route, a metropolitan expressway in Japan). The analysis results projected the cost-benefit ratio of this route to fall below 1 by 2025 owing to the reduced number of users. However, closing the Kawasaki route would lead to significant congestion on its alternative route, National Route 409. Restoring the congestion rate of National Route 409 to its previous level requires its expansion to 10 lanes, making the closure of the Kawasaki route impractical.</p> Shun Higashikawa, Shoko Abe, Kazuhiko Iwase, Tomoaki Takemura, Jieshuo Zhang, Tomoyuki Ohkubo, Hisashi Hayashi Copyright (c) 2024 International Journal of Service and Knowledge Management https://iaiai.org/journals/index.php/IJSKM/article/view/814 Mon, 28 Oct 2024 01:41:34 +0000 Intellectual Property Strategy Required for Startups from Joining in a New Business Ecosystem to Growing as Large Companies: A Case Study of Tesla https://iaiai.org/journals/index.php/IJSKM/article/view/842 <p>This article conducts a case study of Tesla’s intellectual property (IP) strategy to clarify the IP strategy required for startups from joining in a new business ecosystem to growing as large companies. As a result, it was clarified that to establish new businesses quickly, it may be effective for startups with limited own resources to focus on patents for not only core areas developed on their own but also the interface between core and outsourcing areas to collaborate with companies that have a substantial patent portfolio in outsourcing areas and open the interfaces to diffuse their core technologies. In the process of growing into large companies, startups are exposed to stiff competition as competitors try to catch up. Therefore, it is necessary to increase their capability, formulate added value through in-house research and development and design in the outsourcing areas, and apply for patents to increase its competitive advantage. It was further indicated that a pledge of non-exercise of patent rights may be an effective option to avoid being sued for patent infringement. This study is unique in identifying effective IP strategies for startups in terms of outsourcing, diffusion of their technologies, increasing their capability and avoiding patent infringement lawsuits.</p> Jun Oya, Naoshi Uchihira Copyright (c) 2024 International Journal of Service and Knowledge Management https://iaiai.org/journals/index.php/IJSKM/article/view/842 Mon, 28 Oct 2024 01:38:25 +0000