研究者業績

浦木 麻子

ウラキ アサコ  (Asako Uraki)

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

研究者番号
20465032
J-GLOBAL ID
202401003468539270
researchmap会員ID
R000065730

論文

 21
  • Asako Uraki, Yasushi Kiyoki
    The 36th International Conference on Information Modelling and Knowledge Bases (EJC2026) 2026年6月10日  査読有り筆頭著者
  • 鶴谷奏, 浦木麻子
    第18回データ工学と情報マネジメントに関するフォーラム (DEIM2026) 論文集 2026年3月  最終著者
  • Yasushi Kiyoki, Asako Uraki, Shiori Sasaki, Yukio Chen
    Information Modelling and Knowledge Bases XXXV (IOS Press, Frontiers in Artificial Intelligence and Applications 380 57-76 2024年1月16日  査読有り
    “Semantic space creation” and “distance-computing” are basic functions to realize semantic computing for environmental phenomena memorization, retrieval, analysis, integration and visualization. We have introduced “SPA-based (Sensing, Processing and Actuation) Multi-dimensional Semantic Computing Method” for realizing a global environmental system, “5-Dimensional World Map System”. This method is important to design new environmental systems with Cyber-Physical Space-integration to detect environmental phenomena occurring in a physical-space (real space). This method maps those phenomena to a multi-dimensional semantic-space, performs semantic computing, and actuates the semantic-computing results to the physical space with visualizations for expressing environmental phenomena, causalities and influences. As an actual system of this method, currently, the 5D World Map System is globally utilized as a Global Environmental Semantic Computing System, in SDG14, United-Nations-ESCAP: (https://sdghelpdesk.unescap.org/toolboxes). This paper presents a semantic computing method, focusing on “Time-series-Analytical Semantic-Space Creation and Semantic Distance Computing on 5D World Map System” for realizing global environmental analysis in time-series. This paper also presents the time-series analysis of actual environmental changes on 5D World Map System. The first analysis is on the depth of earthquakes Earthquake with time-series semantic computing on 5D World Map System, which occurred around the world during the period from Aug. 23rd to Aug. 28th, 2014, and Jan 7th to Jan. 13th, 2023. The second is the experimental analysis of the time-series difference extraction on glacier melting phenomena in Mont Blanc, Alps, during the period from 2013 to 2022, and Puncak Jaya (Jayawijaya Mountains), Papua, during the period from 1991 to 2020 as important environmental changes.
  • Asako Uraki, Yasushi Kiyoki, Koji Murakami, Akira Kano
    Information Modelling and Knowledge Bases XXXV (IOS Press, Frontiers in Artificial Intelligence and Applications 380 20-39 2024年1月16日  査読有り筆頭著者
    The important process of time series analysis for public health data is to determine target data as a semantic discrete value, according to a context from continuous phenomenon around our circumstance. Typically, each field of experts has their own fields’ specific and practical knowledge to specify an appropriate target part of data which contains the key features of their intended context in each analysis. Those are often implicit, thus not defined as systematically and quantitatively. In this paper, we present a context-based time series analysis and prediction method for public health data. The most essential point of our approach is to express a basis of time series context as the combination of the following 5 elements (1: granularity setting on time axis, 2: feature extraction method, 3: time-window setting, 4: differential computing function, and 5: pivot setting) to determine target data as semantic discrete values, according to the time series context of analysis for public health data. One of the main features of our method is to create different results by switching time series contexts. The method realizes 1) introducing a new normalization (context expression) method to fix a target reference data for time series analysis and prediction according to a context, and 2) presenting a process to generate semantic discrete values reflecting the 5 elements. And the significant features of the proposing method are 1) our context definition realizes the closed world of the semantic differential computing on time axis from the viewpoint of database system, and 2) the 5 elements enable to explicit and quantify experts’ semantic viewpoint of specifying a certain reference data according to a context for each analysis and prediction. As our experiment, we have realized analysis and prediction by applying actual public health data. The results of the experiments show the prediction feasibility of our method in the field of public health data, effectiveness to generate results for discussion regarding switching context, and applicability to express time series context of an expert knowledge for analysis and prediction as combination of the 5 elements to make the knowledge explicit and quantitative expression.
  • Yasushi Kiyoki, Koji Murakami, Asako Uraki, Shiori Sasaki, Akira Kano, Yuta Yakushiji, Eri Fujiwara, Mutsumi Kondo, Hitomi Azuma
    Information Modelling and Knowledge Bases XXXIV (IOS Press, Frontiers in Artificial Intelligence and Applications 364 217-234 2023年1月23日  査読有り
    It is significant to detect, estimate and predict “Human-health situations” and “a spread of transmitted disease” with past and current information of health-related phenomena. Temporal-transition and differential computing realizes semantic interpretations for situation changes in two phenomena with “temporal-length” in “specific situation”. The “temporal-length” in “specific situation” is used to compare two phenomena in multiple contexts in semantics. We present a new Temporal-transition Differential Computing Model for detecting, estimating and predicting “Human-health situations” and “a spread of transmitted disease.” This model defines “temporal-transition data structure” for expressing past and current information of health-related phenomena with temporal-axis, and two processes for Human-Health Semantic Space Creation and Semantic Computing with dimensional control mechanism.

講演・口頭発表等

 12

担当経験のある科目(授業)

 19

所属学協会

 1

共同研究・競争的資金等の研究課題

 5

学術貢献活動

 8

メディア報道

 3