结构指针的应用,链表处理

1,链表的概念

链表是将若干数据项按一定规则连接起来的[数据类型]表,链表中的每一个数据称为一个节点,既链表是由称为节点的元素组成的,节点多少根据需要确定.
链表连接规则:
前一个节点指向下一个节点,只要通过前一个节点才能找到下一个节点,每个节点都包括下面2部分内容,数据部分和指针部分,
数据部分:可以根据需要由多个成员组成,存放的是需要处理的数据,
指针部分,该部分存放的是一个节点地址,链表中的每个节点通过指针连接在一起,

2,对链表进行归类

链表必须要知道其表头的头指针位置,如果一个链表中的节点只有一个指向其他节点的指针,则称为单项链表
若节点有2个指向其他节点的指针,则称为双向链表;

单链表节点类型定义

struct sture
{
int num;
chr name[];
char sex;
}; struct stu_node
{
struct sture s1;//利用上面定义的结构体定义一个结构体变量;
//定义了针对上面定义的结构体数据类型即可使用此数据类型进行对类型成员初始化,并引用;
struct stu_node *next; //定义一个指向此结构体的指针变量
//next->s1->上面结构体定义的变量名.上面结构体中的成员名;等等
};

头指针变量head-->指针链表的首节点.

链表的每个节点由2个域组成

(1.):数据域,存储节点本身的信息.

(2.):指针域,指向后续节点的指针,未节点的指针域置为NULL,作为链表结束标志.

链表实践;

aaarticlea/png;base64,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" alt="" />

最新文章

  1. Mysql的Haproxy反向代理和负载均衡
  2. vector it->和*it
  3. 开始学emacs-1
  4. Bzoj1176 [Balkan2007]Mokia
  5. (转载)SQL Server 2005 如何启用xp_cmdshell组件
  6. jquery easy ui 1.3.4 布局layout(4)
  7. [转]matlab如何复制spectrum scope的图
  8. UVa 548 (二叉树的递归遍历) Tree
  9. (转)Android面试题
  10. xpath选择器
  11. JavaScript Invalid Date Verify
  12. 《Programming WPF》翻译 第7章 7.我们进行到哪里了?
  13. Handler消息机制实现更新主UI
  14. Boost::asio io_service 实现分析
  15. GPS转换为百度坐标
  16. 多种Timer的场景应用
  17. 初识 MongoDB,MongoDB 的安装运行
  18. 把ajax包装成promise的形式(3)
  19. EL知识点总结
  20. Haproxy Mysql cluster 高可用Mysql集群

热门文章

  1. VS 工具箱 Dev控件显示
  2. double类型与Double包装类型
  3. Python:数据结构(list, tuple, Dict & Set)
  4. ssh/scp免密码登录传输
  5. 关于java日期
  6. 《DSP using MATLAB》示例 Example 9.4
  7. svn问题解答
  8. {vlFeat}{matlab}{VS2010}{编译配置}
  9. fpga rom 初始化mif文件生成
  10. 13 Stream Processing Patterns for building Streaming and Realtime Applications