纺织漂染头发图片厂克重195+-5算法

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情志:心灵的通道―中国诗学的思维方式研究林继中
S---RS~(AT)~R
[1]刘若愚:《中国文学理论》,杜国清译,台湾联经出版公司,1981,页30。
[2]王元化:《文心雕龙讲疏》,上海古籍出版社,1992年,页91。
[3]参看拙作:《王维情感结构论析》,《文史哲》,1999,第1期;《李白歌诗的悲剧精神》,《文学遗产》,1994年第6期;《杜甫早期干游宴诗试析》.《草堂》,1986,第2期。
[4]艾略特:《艾略特文学论文集》,李赋宁译,百花洲出版社,1994,页11。下引只注页码。
[5]苏珊?朗格:《哲学新解》,1953,英文第3版,页216,转引自《情感与形式》译者前言。
[6]苏珊?朗格:《情感与形式》,页240。
[7]孔颖达:《左传?昭公二十五年》疏,《春秋左传正义》卷51。
[8]刘永济《十四朝文学要略》,黑龙江人民出版社,1984,页137。
[9]看赵沛霖《兴的源起》第二章,中国社科出版社,1987年版。
[10]《周礼?春官?大师》,郑玄注引郑众说。
[11]王逸《离骚经序》。
[12]宗白华《美学散步》,上海人民出版社,1981,页183。
[13]刘勰《文心雕龙?物色》。
[14]克莱夫?贝尔《艺术》,中国文联出版公司,周金环等译,1984,页3.
[15]叶维廉:《从现象到表现》,(台)东大图书股分公司,1994,页195一196。
[16]王夫之著,戴鸿森笺注:《姜斋诗话笺注》,人民文学出版社,1981,页51。
[17]该文收入姚柯夫编《(人间词话)及评论汇编》,书目文献出版社,1983,页154。
原载:《文艺理论研究》1999年06期
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ABOUT THIS JOURNAL
SPECIAL FEATURES
Andrew Estabrooks, 1
Taeho Jo and2
Nathalie Japkowicz
DOI:&10.1111/j.04.t01-1-00228.x
Computational Intelligence pages 18&36, Author Information1
IBM Toronto Lab, Canada&, 2University of Ottawa, Canada&, 3University of Ottawa, Canada&Publication HistoryIssue published online: 28 JAN 2004Article first published online: 28 JAN 2004
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