研究者業績

西村 治彦

ニシムラ ハルヒコ  (Haruhiko Nishimura)

基本情報

所属
大和大学 情報学部 情報学科 教授
兵庫県立大学 応用情報科学研究科 (名誉教授)
学位
学術博士(神戸大学)

ORCID ID
 https://orcid.org/0000-0003-1572-6747
J-GLOBAL ID
200901043372803974
researchmap会員ID
5000099933

外部リンク

主要な委員歴

 27

論文

 242
  • Anh Tu Tran, Sou Nobukawa, Nobuhiko Wagatsuma, Keiichiro Inagaki, Hirotaka Doho, Teruya Yamanishi, Haruhiko Nishimura
    Nonlinear Theory and Its Applications, IEICE 2025年  
  • Yudai Ebato, Sou Nobukawa, Yusuke Sakemi, Haruhiko Nishimura, Takashi Kanamaru, Nina Sviridova, Kazuyuki Aihara
    Scientific Reports 14(1) 2024年4月15日  
    Abstract The echo state network (ESN) is an excellent machine learning model for processing time-series data. This model, utilising the response of a recurrent neural network, called a reservoir, to input signals, achieves high training efficiency. Introducing time-history terms into the neuron model of the reservoir is known to improve the time-series prediction performance of ESN, yet the reasons for this improvement have not been quantitatively explained in terms of reservoir dynamics characteristics. Therefore, we hypothesised that the performance enhancement brought about by time-history terms could be explained by delay capacity, a recently proposed metric for assessing the memory performance of reservoirs. To test this hypothesis, we conducted comparative experiments using ESN models with time-history terms, namely leaky integrator ESNs (LI-ESN) and chaotic echo state networks (ChESN). The results suggest that compared with ESNs without time-history terms, the reservoir dynamics of LI-ESN and ChESN can maintain diversity and stability while possessing higher delay capacity, leading to their superior performance. Explaining ESN performance through dynamical metrics are crucial for evaluating the numerous ESN architectures recently proposed from a general perspective and for the development of more sophisticated architectures, and this study contributes to such efforts.
  • Tomoyuki Tanaka, Yoshifumi Kawakubo, Takeshi Shigematsu, Haruhiko Nishimura
    Blood Purification 2024年2月4日  
    INTRODUCTION: Continuous monitoring of relative blood volume (percentage BV) in hemodialysis (HD) is critical for determining dry weight and preventing intradialytic hypotension. However, the cause of the blood volume variation remains unknown. This research aims to examine factors that influence the percentage BV. METHODS: We devised a formula based on coefficients ("a," "τ" and "b") to predict changes in percentage BV. "a" denotes a significant decrease in percentage BV in the early stages of HD. "τ" represents the transition from early to late phase of HD. "b" denotes the slope of the decrease in percentage BV in the late phase of HD. We measured the percentage BV in 18 patients with end-stage renal disease. The coefficients were estimated by fitting experimental data from patients using a least squares optimization algorithm. A correlation analysis of these parameters and patient predialysis data was performed. RESULTS: Ultrafiltration rate (UFR) was found to be negatively correlated with "b" (r = -0.851, p < 0.01). However, UFR was not significantly related to "a." Predialysis serum total protein level was negatively correlated with "a" (r = -0.531, p = 0.042). Predialysis serum albumin and predialysis sodium were not significantly correlated with "a" and "τ". Plasma osmolarity did not have a significant relationship with "a" and "τ". DISCUSSION/CONCLUSION: UFR influenced the decrease in percentage BV in the late phase but did not influence the decrease of percentage BV in the early phase. "a" was associated with predialysis serum total protein level level but not with plasma osmolality or predialysis sodium. This implies that colloid oncotic pressure is important for plasma refilling immediately after dialysis begins.During the change of percentage BV, the decrease in the early phase of dialysis was not related to UFR, but related to other parameters, especially predialysis total protein level. A decrease in the late phase of dialysis is related to UFR.
  • Miwa Mitoma, Miyuki Fukushima, Masumi Azuma, Kyoko Ishigaki, Haruhiko Nishimura
    Supportive Care in Cancer 31(12) 678-678 2023年12月  
  • Hirotaka Doho, Haruhiko Nishimura, Sou Nobukawa
    Journal of Advanced Computational Intelligence and Intelligent Informatics 27(1) 44-53 2023年1月20日  

MISC

 628

主要な共同研究・競争的資金等の研究課題

 33

主要な産業財産権

 3