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1.
Applying Ant Colony Algorithm Cluster Analysis to Classification of Fireproof Trees;
蚁群聚类分析在防火树种分类中的应用
2.
Study on Support Vector Machine Based Chestnut Species Classification
基于支持向量机的栗属树种分类研究
3.
Application Study on Classicfication of Liriodenron Tree Species with Isozyme Technique
同功酶技术在鹅掌楸属树种分类中的应用研究
4.
Analysis of Wood Transverse Section Microstructure Based on Computer Vision and Research on Species Identification;
木材横切面构造特征计算机视觉分析与树种分类识别研究
5.
A variety of conifers and hardwoods makes up the bulk of the vegetation.
大部分植被由各种针叶树类和阔叶树类构成。
6.
RAPD Analysis of the Several Bio-chemical Types of the Cinnamomum Caphora and Related Species;
樟树几种生化类型及近缘种的RAPD分析
7.
Method for Decision-tree Classifier Using Multi-feature of Images
基于影像多种特征的决策树分类方法
8.
A MULTI-CLASS CLASSIFIER BASED ON SVM DECISION TREE
一种基于支持向量机决策树多类分类器
9.
Study on Simulating the Geographical Distributions of Common Tree Species in China Based on Generalized Models and Classification and Regression Tree;
基于广义模型和分类回归树的中国常见树种地理分布模拟研究
10.
FUZZY CLUSTER ANALYSIS OF ECOLOGICAL GROUPS OF PRECIOUS DECIDUOUS TREES IN MOUNTAINS OF EAST LIAONING
辽宁东部山区珍贵阔叶树种生态组的聚类分析
11.
Ornamental Tree Species and Their Ecological Distribution in Mountain GuLongzhong;
隆中山观赏树木种类调查及其生态分布
12.
Division of Site Type and Selection of Resistant Species on Semiarid Sand Area
半干旱风沙区立地类型划分与抗逆树种选择
13.
Investigation of the Landscape Trees in the Campus of Chuzhou Vocational Technology College
滁州职业技术学院园林树木种类调查与分析
14.
Decision tree classification of remote sensing images based on vegetation indices
一种基于植被指数的遥感影像决策树分类方法
15.
Philippine tree similar to the breadfruit tree bearing edible fruit.
菲律宾树种,类似于面包树的可食果实。
16.
A similar plant exudate, such as a resin.
树脂一种类似的植物渗出液,如树脂
17.
2 species belong to palearctic affinity (3.4%);
树栖种类繁多,有26种,近于总种数之半.
18.
Decision tree is a kind of cluster analysis method using divide-andconquer strategy,the key of making up of decision tree is to choose appropriate attribute.
决策树是一种采用分治策略的聚类分析方法,构建决策树的关键是选择合适的属性。