C++高级数据结构之线段树

2022-05-24 11:58:40
目录
前言:高级数据结构(Ⅲ)线段树(Segment Tree)线段树的原理树的创建单点修改区间查找完整代码及测试

前言:

    高级数据结构(Ⅲ)线段树(Segment>线段树的原理树的创建单点修改区间查找完整代码及测试

    高级数据结构(Ⅲ)线段树(Segment>

    线段树的原理

    线段树是一种二叉搜索树>

    若对于一个数组使用前缀和数组保存它的区间和,那么查找区间和时间复杂度为O(1),而区间修改时间复杂度为O(n)。使用线段树可以快速查找或修改某个区间的值,时间复杂度为O(logN)。

    线段树中每一个结点代表一个区间,对于区间【1, 7】线段树的结构如下图

    实例:

    class SegmentTree{
    private static final int[] tree = new int[1000];
    int[] arr;
    SegmentTree() {
    }
    SegmentTree(int[] arr) {
    this.arr = arr;
    }
    //创建树···
    public void buildTree(){}
    //单点修改更新树
    public void updateTree(){}
    //区间查找
    public void queryTree(){}
    }

    树的创建

    给定一个数组arr>

    对于一个结点k,它的左孩子为2 * k,右孩子为 2 * k + 1,此公式适用于根结点从1开始。但我们在数组中存储元素时下标通常是从0开始的,即根结点从0开始,此时它的左孩子为 2 * k + 1, 右孩子为 2 * k + 2。

    如下图所示,数组arr的长度为7,由于树是以2为基数的,且线段树中叶子结点保存的是arr中单个结点的值,我们可以将数组arr的长度设想为8 (2 ^ 3 = 8,理解为新添了一个元素0,这对区间和并不影响),此时它对应的线段树就是一棵结点数为15(1 + 2 + 4 + 8)的满二叉树。相应的结点值,映射到数组tree的值在图中可清晰的看出。

    那么,如何用处程序来创建一棵树呢?

    由于线段树叶子结点都是数组arr中的某一元素,所以我们可以使用两个变量low和high来标记数组arr的区间,

      若low == high,此时令tree[node] = arr[low],并终止递归否则,将区间二分,分别计算左区间[low, mid]和右区间[mid +1, high],并在最后更新tree[node]

      实现:

      //创建树
      public void buildTree() {
      this.buildTree(0, 0, arr.length - 1);
      }
      private void buildTree(int node, int low, int high) {
      if(low == high) {
      tree[node] = arr[low];
      return;
      }
      int mid = low + (high - low) / 2;
      int lnode = 2 * node + 1;
      int rnode = 2 * node + 2;
      buildTree(lnode, low, mid);
      buildTree(rnode, mid + 1, high);
      tree[node] = tree[lnode] + tree[rnode];
      }

      单点修改

      若现在将arr[4]的值修改为1,需要怎样操作呢?

      从下图绿色标出的结点不难看出其更新过程,先将其所对应的叶子结点修改,然后继续向上修改其父节点即可。

      当long==high&&low==index时更新两个数组的值,否则,缩小区间,在相应的区间搜索,最后更新结点和即可,相应代码如下

      //单点修改更新树
      public void updateTree(int index, int val) {
      this.updateTree(0, 0, arr.length - 1, index, val);
      }
      private void updateTree(int node, int low, int high, int index, int val) {
      if(low == high && low == index) {
      arr[index] = val;
      tree[node] = val;
      return;
      }
      int mid = low + (high - low) / 2;
      int lnode = 2 * node + 1;
      int rnode = 2 * node + 2;
      if(index >= low && index <= mid) {
      updateTree(lnode, low, mid, index, val);
      }else {
      updateTree(rnode, mid + 1, high, index, val);
      }
      tree[node] = tree[lnode] + tree[rnode];
      }

      区间查找

      若现在查找数组arr区间和[3,6],如何利用线段树呢?

      在线段树中,我们将它的和划分为两个区间[3]和[4,6],如图中的黄色结点

      下面来看看相关代码如何实现,给定一个查找区间[L, R],同样使用变量low和high维护对数组arr的二分查找边界

        若当前区间low > R 或者 high < L,说明已超出查找范围,返回0若[low, high]处于区间[L, R]内,返回当前结点的值tree[node]

        然后继续在左右区间查找并保存左右区间的值sumLeft和sumRight,最后返回sumLeft + sumRight即可

        //区间查找
        public int queryTree(int L, int R) {
        return this.queryTree(0, 0, arr.length - 1, L, R);
        }
        private int queryTree(int node, int low,
        int high, int L, int R) {
        if(low > R || high < L) {
        return 0;
        }else if(low >= L && high <= R) {
        return tree[node];
        }
        int mid = low + (high - low) / 2;
        int lnode = 2 * node + 1;
        int rnode = 2 * node + 2;
        int sumleft = queryTree(lnode, low, mid, L, R);
        int sumRight = queryTree(rnode, mid + 1, high, L, R);
        return sumleft + sumRight;
        }

        完整代码及测试

        class SegmentTree{
        private static final int[] tree = new int[1000];
        int[] arr;
        SegmentTree() {
        }
        SegmentTree(int[] arr) {
        this.arr = arr;
        }
        //创建树
        public void buildTree() {
        this.buildTree(0, 0, arr.length - 1);
        }
        private void buildTree(int node, int low, int high) {
        if(low == high) {
        tree[node] = arr[low];
        return;
        }
        int mid = low + (high - low) / 2;
        int lnode = 2 * node + 1;
        int rnode = 2 * node + 2;
        buildTree(lnode, low, mid);
        buildTree(rnode, mid + 1, high);
        tree[node] = tree[lnode] + tree[rnode];
        }
        //单点修改更新树
        public void updateTree(int index, int val) {
        this.updateTree(0, 0, arr.length - 1, index, val);
        }
        private void updateTree(int node, int low, int high, int index, int val) {
        if(low == high && low == index) {
        arr[index] = val;
        tree[node] = val;
        return;
        }
        int mid = low + (high - low) / 2;
        int lnode = 2 * node + 1;
        int rnode = 2 * node + 2;
        if(index >= low && index <= mid) {
        updateTree(lnode, low, mid, index, val);
        }else {
        updateTree(rnode, mid + 1, high, index, val);
        }
        tree[node] = tree[lnode] + tree[rnode];
        }
        //区间查找
        public int queryTree(int L, int R) {
        return this.queryTree(0, 0, arr.length - 1, L, R);
        }
        private int queryTree(int node, int low, int high, int L, int R) {
        if(low > R || high < L) {
        return 0;
        }else if(low >= L && high <= R) {
        return tree[node];
        }
        int mid = low + (high - low) / 2;
        int lnode = 2 * node + 1;
        int rnode = 2 * node + 2;
        int sumleft = queryTree(lnode, low, mid, L, R);
        int sumRight = queryTree(rnode, mid + 1, high, L, R);
        return sumleft + sumRight;
        }
        //输出线段树的值
        public void printTree() {
        int size = 15; //size值的大小由arr数组的大小而定
        for (int i = 0; i < size; i++) {
        System.out.print(tree[i] + " ");
        }
        System.out.println();
        }
        }
        public class SegmentTreeTest {
        public static void main(String[] args) {
        int[] arr = {6, 4, 7, 5, 8, 3, 9};
        SegmentTree st = new SegmentTree(arr);
        //创建线段树
        st.buildTree();
        st.printTree();
        //>>>42 22 20 10 12 11 9 6 4 7 5 8 3 0 0
        //查找区间[3, 6]
        int sum = st.queryTree(3, 6);
        System.out.println(sum);
        //>>>25
        //单点修改更新树, 令arr[4] = 1
        st.updateTree(4, 1);
        st.printTree();
        //>>>35 22 13 10 12 4 9 6 4 7 5 1 3 0 0
        }
        }

        树结点版本:

        此版本不使用数组保存,而是以结点来保存值,相应代码不难实现,如下:

        import java.util.ArrayDeque;
        import java.util.Deque;
        class SegNode{
        int val;
        SegNode lnode;
        SegNode rnode;
        SegNode(){}
        SegNode(int val) {
        this.val = val;
        }
        }
        class SegTree{
        SegNode root;
        int[] arr;
        SegTree() {}
        SegTree(int[] arr) {
        this.arr = arr;
        this.bulidTree();
        }
        //创建树
        public void bulidTree() {
        root = this.buildTree(0, arr.length - 1);
        }
        private SegNode buildTree(int low, int high) {
        if(low == high) {
        return new SegNode(arr[low]);
        }
        SegNode node = new SegNode();
        int mid = low + (high - low) / 2;
        node.lnode = buildTree(low, mid);
        node.rnode = buildTree(mid + 1, high);
        node.val = node.lnode.val + node.rnode.val;
        return node;
        }
        //单点修改更新树
        public void updateTree(int index, int val) {
        root = updateTree(root ,0, arr.length - 1, index, val);
        }
        private SegNode updateTree(SegNode node, int low, int high, int index, int val) {
        if(low == high && low == index) {
        arr[index] = val;
        node.val = val;
        return node;
        }
        int mid = low + (high - low) / 2;
        if(index >= low && index <= mid) {
        node.lnode = updateTree(node.lnode, low, mid, index, val);
        }else {
        node.rnode = updateTree(node.rnode, mid + 1, high, index, val);
        }
        node.val = node.lnode.val + node.rnode.val;
        return node;
        }
        //查找区间
        public int queryTree(int L, int R) {
        return queryTree(root, 0, arr.length - 1, L, R);
        }
        private int queryTree(SegNode node, int low, int high, int L ,int R) {
        if(low > R || high < L) {
        return 0;
        }else if(low >= L && high <= R) {
        return node.val;
        }
        int mid = low + (high - low) / 2;
        int sumLeft = queryTree(node.lnode, low, mid, L, R);
        int sumRight = queryTree(node.rnode, mid + 1, high, L, R);
        return sumLeft + sumRight;
        }
        //输出树(层次遍历)
        public void printTree() {
        Deque<SegNode> queue = new ArrayDeque<SegNode>();
        queue.offer(this.root);
        while(!queue.isEmpty()) {
        int size = queue.size();
        for (int i = 0; i < size; i++) {
        SegNode node = queue.poll();
        System.out.print(node.val + " ");
        if(node.lnode != null) queue.offer(node.lnode);
        if(node.rnode != null) queue.offer(node.rnode);
        }
        }
        }
        }
        public class SegmentTreeNodeTest {
        public static void main(String[] args) {
        int[] arr = {6, 4, 7, 5, 8, 3, 9};
        //创建线段树
        SegTree st = new SegTree(arr);
        st.printTree();
        System.out.println("");
        //>>>42 22 20 10 12 11 9 6 4 7 5 8 3
        //查找区间[3, 6]
        int sum = st.queryTree(3, 6);
        System.out.println(sum);
        //>>>25
        //单点修改更新树, 令arr[4] = 1
        st.updateTree(4, 1);
        st.printTree();
        System.out.println("");
        >>>35 22 13 10 12 4 9 6 4 7 5 1 3
        }
        }

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