書名: | (Data Analysis Update) The Economy of Nature (5版) | |||
作者: | Ricklefs | |||
版次: | 5 | |||
ISBN: | 9780716777625 | |||
出版社: | Freeman | |||
書籍開數、尺寸: | 27.4*21.6 | |||
重量: | 1.28 Kg | |||
頁數: | 550 | |||
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售價: | 1400元 | |||
庫存: | 已售完 | |||
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