粗糙不齊的 的英文怎麼說

中文拼音 [cāode]
粗糙不齊的 英文
hackly
  • : Ⅰ形容詞1 (長條東西直徑大的) wide (in diameter); thick 2 (長條東西兩長邊的距離寬的) wide (i...
  • : 形容詞(粗糙; 不細致) rough; coarse; crude
  • : 名詞[書面語] (剁物所用的木墩) a block of wood
  • : 齊名詞[書面語]1. (調味品) flavouring; seasoning; condiment2. (合金, 此義今多讀 ) alloy
  • : 4次方是 The fourth power of 2 is direction
  • 粗糙 : (不精細; 不光滑; 不細致; 草率) coarse; rough; crude
  1. Firstly, influence factors of generalization of neural network are presented in this thesis, in order to improve neural network ’ s generalization ability and dynamic knowledge acquirement adaptive ability, a structure auto - adaptive neural network new model based on genetic algorithm is proposed to optimize structure parameter of nn including hidden layer nodes, training epochs, initial weights, and so on ; secondly, through establishing integrating neural network and introducing data fusion technique, the integrality and precision of acquired knowledge is greatly improved. then aiming at the incompleteness and uncertainty problem consisting in the process of knowledge acquirement, knowledge acquirement method based on rough sets is explored to fulfill the rule extraction for intelligent diagnosis expert system, by completing missing value data and eliminating unnecessary attributes, discretization of continuous attribute, reducing redundancy, extracting rules in this thesis. finally, rough sets theory and neural network are combined to form rnn ( rough neural network ) model for acquiring knowledge, in which rough sets theory is employed to carry out some preprocessing and neural network is acted as one role of dynamic knowledge acquirement, and rnn can improve the speed and quality of knowledge acquirement greatly

    本文首先討論了影響神經網路泛化能力因素,提出了一種新結構自適應神經網路學習演算法,在新方法中,採用了遺傳演算法對神經網路結構參數(隱層節點數、訓練精度、初始權值)進行優化,大大提高了神經網路泛化能力和知識動態獲取自適應能力;其次,構造集成神經網路,引入數據融合演算法,實現了基於集成神經網路融合診斷,有效地提高了知識獲取全面性、完善性及精度;然後,針對知識獲取過程中所存在確定性、完備性等問題,探討了運用集理論知識獲取方法,通過缺損數據補、連續數據離散、沖突消除、冗餘信息約簡、知識規則抽取等一系列演算法實現了智能診斷知識規則獲取;最後,將集理論與神經網路相結合,研究了集-神經網路知識獲取方法。
  2. 20 this is a very rough classification. obviously, there are further steps, such as line breaking, alignment and justification. they need not be discussed here, as they go beyond localization

    20這是一種分類。顯然,還有更多步驟,例如斷行、對。由於它們超出了本地化范圍,所以在這里討論。
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