研究者業績

中西 崇文

ナカニシ タカフミ  (Takafumi Nakanishi)

基本情報

所属
武蔵野大学 データサイエンス学部 データサイエンス学科 准教授
学位
博士(工学)(2006年3月 筑波大学)

J-GLOBAL ID
200901081673746975
researchmap会員ID
5000096971

外部リンク

武蔵野大学 データサイエンス学部 データサイエンス学科長 准教授。国際大学グローバル・コミュニケーション・センター 主任研究員。デジタルハリウッド大学大学院 客員教授。1978年、三重県伊勢市生まれ。2006年3月、筑波大学大学院システム情報工学研究科にて博士(工学)の学位取得。2006年より情報通信研究機構にてナレッジクラスタシステムの研究開発等に従事。2014年4月より国際大学グローバル・コミュニケーション・センター准教授・主任研究員、テキストマイニング、データマイニング手法の研究開発に従事。2018年4月、武蔵野大学工学部 数理工学科 准教授。2019年4月より現職。専門は、データマイニング、感性情報処理、メディアコンテンツ分析など。著書に『スマートデータ・イノベーション』(翔泳社)、「シンギュラリティは怖くない:ちょっと落ちついて人工知能について考えよう」(草思社)がある。


論文

 122
  • Takafumi Nakanishi
    IEEE Access 12 121093-121113 2024年9月  査読有り筆頭著者最終著者責任著者
  • Takafumi Nakanishi, Ponlawat Chophuk, Krisana Chinnasarn
    IEEE Access 12 88696-88714 2024年6月24日  査読有り筆頭著者
  • Takafumi Nakanishi, Koharu Sano, Keiko Ojima, Tagiru Nakamura, Ryotaro Okada
    International Journal of Smart Computing and Artificial Intelligence 8(1) 1-1 2024年6月  査読有り
  • Yuta Ishii, Ayako Sugiyama, Kosuke Fukushima, Ryotaro Okada, Takafumi Nakanishi
    Studies in Computational Intelligence 219-236 2024年5月3日  査読有り最終著者
  • Takafumi Nakanishi
    IEEE Access 12 52623-52640 2024年4月11日  査読有り筆頭著者最終著者責任著者
  • Takafumi Nakanishi
    2024 IEEE 18th International Conference on Semantic Computing (ICSC) 2024年2月5日  査読有り筆頭著者最終著者責任著者
  • Yuki Ohkawa, Takafumi Nakanishi
    2024 IEEE 18th International Conference on Semantic Computing (ICSC) 2024年2月5日  査読有り最終著者責任著者
  • Taichi Ohno, Yusuke Hoshino, Takafumi Nakanishi
    2024 IEEE 18th International Conference on Semantic Computing (ICSC) 2024年2月5日  査読有り最終著者責任著者
  • Takafumi Nakanishi, Ayako Minematsu, Ryotaro Okada, Osamu Hasegawa, Virach Sornlertlamvanich
    Frontiers in Artificial Intelligence and Applications, Information Modelling and Knowledge Bases XXXV 227-238 2024年1月16日  査読有り筆頭著者責任著者
  • Ayako Minematsu, Takafumi Nakanishi
    2023 15th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 2023年12月11日  査読有り最終著者責任著者
  • Rintaro Fukui, Ryotaro Okada, Ayako Minematsu, Takafumi Nakanishi
    2023 15th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 2023年12月11日  査読有り最終著者責任著者
  • Takafumi Nakanishi
    2023 15th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 2023年12月11日  査読有り筆頭著者最終著者責任著者
  • Miyu Momozawa, Ryotaro Okada, Ayako Minematsu, Takafumi Nakanishi
    2023 15th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 2023年12月11日  査読有り最終著者責任著者
  • Rikito Ohnishi, Ryotaro Okada, Yuki Murakami, Takafumi Nakanishi, Teru Ozawa, Yutaka Ogasawara, Kazuhiro Ohashi
    2023 15th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 2023年12月11日  査読有り
  • Takafumi Nakanishi
    2023 IEEE International Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT) 2023年10月26日  査読有り筆頭著者最終著者責任著者
  • Takafumi Nakanishi
    IEEE Access 11 101020-101044 2023年9月  査読有り筆頭著者最終著者責任著者
  • Fan Cheng, Takafumi Nakanishi
    2023 14th IIAI International Congress on Advanced Applied Informatics (IIAI-AAI) 2023年7月8日  査読有り最終著者責任著者
  • Xuan Luo, Sota Kato, Asahi Obata, Budrul Ahsan, Ryotaro Okada, Takafumi Nakanishi
    ICDAR '23: Proceedings of the 4th ACM Workshop on Intelligent Cross-Data Analysis and Retrieval 32-36 2023年6月  査読有り最終著者
  • Kazuma Komiya, Ryotaro Okada, Ayako Minematsu, Takafumi Nakanishi
    Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing 2022-Winter 1-16 2023年5月5日  最終著者責任著者
  • Rikito Ohnishi, Yuki Murakami, Takafumi Nakanish, Ryotaro Okada, Teru Ozawa, Kosuke Fukushima, Taichi Miyamae, Yutaka Ogasawara, Kei Akiyama, Kazuhiro Ohashi
    Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing 2022-Winter 59-76 2023年5月5日  査読有り最終著者責任著者
  • Takafumi Nakanishi, Ayako Minematsu, Ryotaro Okada, Osamu Hasegawa, Virach Sornlertlamvanich
    Frontiers in Artificial Intelligence and Applications 2023年1月23日  査読有り筆頭著者責任著者
    Through technology, it is essential to seamlessly bridge the divide between diverse speaking communities (including the signer (the sign language speaker) community). In order to realize communication that successfully conveys emotions, it is necessary to recognize not only verbal information but also non-verbal information. In the case of signers, there are two main types of behavior: verbal behavior and emotional behavior. This paper presents a sign language recognition method by similarity measure with emotional expression specific to signers. We focus on recognizing the sign language conveying verbal information itself and on recognizing emotional expression. Our method recognizes sign language by time-series similarity measure on a small amount of model data, and at the same time, recognizes emotion expression specific to signers. Our method extracts time-series features of the body, arms, and hands from sign language videos and recognizes them by measuring the similarity of the time-series features. In addition, it recognizes the emotional expressions specific to signers from the time-series features of their faces.
  • M. Iwamoto, K. Ojima, R. Okada, T. Nakanishi
    2022 13th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 245-250 2022年12月  査読有り最終著者責任著者
  • K. Sano, K. Ojima, R. Okada, T.Nakanishi
    2022 13th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 202-207 2022年12月  査読有り最終著者責任著者
  • S. Liu, T. Nakanishi
    2022 13th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 196-201 2022年12月  査読有り最終著者責任著者
  • S. Hagimoto, T. Nitta, R. Okada, T. Nakanishi
    2022 13th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 189-195 2022年12月  査読有り最終著者責任著者
  • S. Ito, T. Nakanishi, M.Hashimoto
    2022 13th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter) 45-50 2022年12月  査読有り最終著者責任著者
  • Takuma Nitta, Shinpei Hagimoto, Kyosuke Miyamura, Ryotaro Okada, Takafumi Nakanishi
    2022 IEEE/WIC/ACM International Joint Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT) 2022年11月  
  • Yuki Ohkawa, Takafumi Nakanishi
    Advanced Data Mining and Applications 73-85 2022年11月  査読有り最終著者責任著者
  • Yuto Noji, Ryotaro Okada, Takafumi Nakanishi
    Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing 31-43 2022年11月  査読有り最終著者責任著者
  • Yuta Ishii, Aiha Ikegami, Takafumi Nakanishi
    EPiC Series in Computing 81 362-372 2022年9月  査読有り最終著者責任著者
    In this paper, we present a realization method of discovery for burst topic transition using the topic change point detection method for time-series text data. In our method, we focus on the topic change point detection method for time-series text data. By similarity measure using the topic change point detection method for time-series text data, we can discover for burst topic transition. In general, when we would like to understand the outline or main points of an event, we often read articles written by people who know information about the event or ask others who are aware of the event to tell us about it. However, the information obtained by these means is hearsay from others and subject to third-party bias, it is difficult to comprehend the events objectively. In our paper, we focus on the topic change and extract the topic change point detection It enables us to discover burst topic transitions. In this paper, we describe an evaluation experiment of a prototype system using our discovery for burst topic transition to verify the effectiveness of our method. We also implement an application by the user interface that provides some crews of a trendy word.
  • Koharu Sano, Keiko Ojima, Tagiru Nakamura, Ryotaro Okada, Takafumi Nakanishi
    EPiC Series in Computing 81 89-100 2022年9月  査読有り最終著者責任著者
    In this paper, we present an emotion estimation method using heart rate variability parameters of vital data. Recently, as sensors have become more precise and smaller, it has been possible to obtain users' vital data in real-time quickly. In our method, ECG (electrocardiogram) data are measured beforehand while listening to a story with voice narration that evokes emotions and based on the trends obtained through the measurement, the emotions that have a high correlation with the newly acquired ECG data are estimated to be the emotions expressed in the ECG data. With the implementation of our method, it is possible to estimate the user's emotions based on ECG data. In this paper, we also represent the application of our method to chat icons that see users' emotions in real-time. By realizing this application, users will see the changes in their emotions and control their mental health.
  • Aiha Ikegami, Takafumi Nakanishi
    2022 12th International Congress on Advanced Applied Informatics (IIAI-AAI) 436-442 2022年7月  査読有り最終著者責任著者
  • Hiroki Nakata, Takafumi Nakanishi
    2022 12th International Congress on Advanced Applied Informatics (IIAI-AAI) 443-448 2022年7月  査読有り最終著者責任著者
  • Ryuichi Hirano, Ryotaro Okada, Takafumi Nakanishi
    2022 12th International Congress on Advanced Applied Informatics (IIAI-AAI) 651-652 2022年7月  査読有り最終著者責任著者
  • Yuta Ishii, Takafumi Nakanishi, Ryotaro Okada, Ayako Minematsu
    ICBIR 2022 - 2022 7th International Conference on Business and Industrial Research, Proceedings 192-197 2022年6月  査読有り責任著者
    In general, when a place depicted in a novel exists, users may like to visit the site that appears in the story. There is a need to efficiently visit tourist spots in or around the places depicted in the novel when visiting them. When we realize to retrieve appropriate tourist spots in areas in stories, it is possible to increase the number of new sightseeing opportunities for users. This paper presents a tourist spot recommendation method corresponding to place names appearing in novel contents. Our system recommends some actual tourist spots corresponding to a novel selected by a user. The feature of our proposed method is to recommend tourist spots within the range that users can visit in a day, based on the place names that appear in the novel. We apply this method to realize seamless linking media between the creative world like a novel and the real-world.
  • Shota Tamaru, Hyuga Taki, Rune Usuki, Takafumi Nakanishi
    ACM International Conference Proceeding Series, 2022 the 6th International Conference on Information System and Data Mining (ICISDM 2022) 81-88 2022年5月27日  査読有り最終著者責任著者
    This paper presents a recipe recommendation method by similarity measure with food image recognition. In general, it is difficult for users with little cooking experience to find out what kind of dishes they can make from the ingredients they currently have. Therefore, we propose a system that recommends recipes based on the ingredients in the user's current inventory, thereby increasing the number of dishes in the user's cooking repertoire. This system uses camera images of foodstuffs as input, recognizes the foodstuffs, and searches for recipes. In the experiment, we conducted a questionnaire survey of the recognized food ingredients and a questionnaire survey of recipe suggestions, and the results showed that more than 3/4 of the respondents answered that the recognition results and recipe contents were correct for some of the images. In this way, possible for users to search for recipes with fewer steps.
  • Takuma Nitta, Shinpei Hagimoto, Ari Yanase, Ryotaro Okada, Virach Sornlertlamvanich, Takafumi Nakanishi
    International Journal of Smart Computing and Artificial Intelligence 6(1) 1-1 2022年3月  査読有り招待有り最終著者責任著者
  • Aiha Ikegami, Ryotaro Okada, Takafumi Nakanishi
    Studies in Computational Intelligence 1012 SCI 152-173 2022年  査読有り最終著者
    In this paper, we present a method for discovering of historical transition in aesthetic notions of waka poetry over by using changes in co-occurrence words. The structure and the words used in waka poetry change as time passes. By analyzing the chronological changes in the structures and words of waka poetry, we can clarify the historical changes in the aesthetic notions of Japanese people. In this paper, we focus on the three major anthologies of Japanese poetry, Manyoshu, Kokin Wakashu and Shin Kokin Wakashu, and on Kago, which is the central elements in Japanese poetry. Kago is a word and expression often used in Japanese poetry. In our method, we derive differences in the frequency of occurrence of Kago categorized according to their meanings in each collection and extract important co-occurrences of Kago as context words. By our method, we clarify the differences in the context words of Kago and show the historical transition of aesthetic notions.
  • Takafumi Nakanishi
    Ieee/acis International Conference on Software Engineering, Artificial Intelligence, Networking and Parallel/distributed Computing (snpd-fall) 68-73 2021年11月  査読有り最終著者責任著者
  • Takafumi Nakanishi, Ryotaro Okada, Rintaro Nakahodo
    International Journal of Smart Computing and Artificial Intelligence 5(1) 51-66 2021年10月  査読有り筆頭著者責任著者
  • T. Nakanishi
    Proceedings of the 10th International Congress on Advanced Applied Informatics 382-387 2021年7月  査読有り筆頭著者
  • K. Miyamura, R. Okada, T. Nakanishi
    Proceedings of the 10th International Congress on Advanced Applied Informatics 804-809 2021年7月  査読有り最終著者
  • A. Yanase, T. Nakanishi
    Proceedings of the 10th International Congress on Advanced Applied Informatics 810-817 2021年7月  査読有り最終著者
  • S. Hagimoto, T. Nitta, A. Yanase, T. Nakanishi, R. Okada, V. Sornlertlamvanich
    Proceeding of 19th IADIS International Conference e-Society 2021 FSP 5.1(F144) 169-176 2021年3月  査読有り
  • L. Xuan, S. Kato, B. Ahsan, T. Nakanishi
    the 79th Annual Meeting of Midwest Political Science Association 2021年  査読有り最終著者
  • Kyosuke Miyamura, Ryotaro Okada, Takafumi Nakanishi
    Proceedings - 20th IEEE/ACIS International Summer Conference on Computer and Information Science, ICIS 2021-Summer 36-41 2021年  査読有り最終著者
    In this study, we propose an automatic mashup creation method based on the similarity of musical features. The mashup is one of the techniques of uninterrupted composition of music with similar sound quality and characteristics. When mashups can be created algorithmically and automatically, there are more opportunities to listen to music corresponding to one’s sensibilities using streaming services with large amounts of musical content. Our method automatically creates mashup works by decomposing existing music into components defined by their respective instruments. These components are subsequently recombined with each other depending on the evaluation of their similarity. In this study, we also implement an automated mashup creation system using our proposed method and validate it using a questionnaire. Our method can change the way people listen to music, and enable them to easily consume the large amount of music available, especially through the Internet.
  • Takeru Hakii, Koshi Shimada, Takafumi Nakanishi, Ryotaro Okada, Keigo Matsuda, Ryo Onishi, Keiko Takahashi
    Proceedings - 20th IEEE/ACIS International Summer Conference on Computer and Information Science, ICIS 2021-Summer 22-28 2021年  査読有り責任著者
    This paper presents a weather map prediction method using RGB metaphorical feature extraction for atmospheric pressure patterns. In the field of meteorological science, predicting weather based on the analysis of observational data and the knowledge of weather experts is crucial. Weather experts draw weather maps based on air pressure distribution; hence, we believe that weather maps entail the interpretations of weather experts. In this study, we improved the prediction accuracy by using machine learning to recognize patterns of qualitative expert interpretations that cannot be predicted by analyzing observed data alone. The proposed method can be realized via two steps. The first is developing a module for extracting pressure pattern features from a weather map. Certain features, such as tropical cyclones or atmospheric high/low pressure distributions, are emphasized in weather maps to facilitate better understanding of the weather features. Therefore, we can predict weather features based on the knowledge of weather experts using data that contain their interpretations, particularly weather maps. The developed module extracts the atmospheric pressure features from the current weather map as an RGB metaphorical gradation map. The second step is developing a module to design a predicted weather map using the extracted features. The weather map of the following day is predicted using pix2pix. To the best of our knowledge, our method for extracting features from weather maps is the first to create a predicted weather map automatically.
  • Sota Kato, Takafumi Nakanishi, Budrul Ahsan, Hirokazu Shimauchi
    J. Cloud Comput. 10(1) 21 2021年  査読有り
    Herein, we present a novel topic variation detection method that combines a topic extraction method and a change-point detection method. It extracts topics from time-series text data as the feature of each time and detects change points from the changing patterns of the extracted topics. We applied this method to analyze the valuable, albeit underutilized, text dataset containing the Japanese Prime Minister’s (PM’s) detailed daily activities for over 32 years. The proposed method and data provide novel insights into the empirical analyses of political business cycles, which is a classical issue in economics and political science. For instance, as our approach enables us to directly observe and analyze the PM’s actions, it can overcome the empirical challenges encountered by previous research owing to the unobservability of the PM’s behavior. Our empirical observations are primarily consistent with recent theoretical developments regarding this topic. Despite limitations, by employing a completely novel method and dataset, our approach enhances our understanding and provides new insights into this classic issue.
  • T. Nitta, S. Hagimoto, A. Yanase, T. Nakanishi, R. Okada, V. Sornlertlamvanich
    Proceedings of the 3rd IEEE/IIAI International Congress on Applied Information Technology 2020年12月  査読有り
  • Abdullah Iskandar, Takafumi Nakanishi, Achmad Basuki, Ryotaro Okada, Takashi Kitagawa
    IES 2020 - International Electronics Symposium: The Role of Autonomous and Intelligent Systems for Human Life and Comfort 655-661 2020年9月  査読有り
    In this paper, we present gaze-music transformation realization method by realizing gaze emotion detection system and interconnecting the detection system and an automatic music media creation system. This method automatically creates a music media contents by a detected emotion from human gaze. When it is possible to realize a system that acquires human gaze data from a camera device, detects emotions from the data, and creates media content in response to those emotions, it will contribute to creative activities corresponding to human emotion. Our method connects a gaze emotion detection system and an automatic music creation system by the similarity of words that represent emotions and impressions. It is possible to compare emotions by comparing the emotions expressed by each different vocabulary using the similarity of words.

MISC

 75

書籍等出版物

 5

共同研究・競争的資金等の研究課題

 5

産業財産権

 21