Changes: - Removed all Java code implementations - Kept only Go language solutions - Renamed "## Go 解法" to "## 解法" - Removed "### Go 代码要点" sections - Cleaned up duplicate headers and empty sections - Streamlined documentation for better readability Updated files (9): - 三数之和.md - 两数相加.md - 无重复字符的最长子串.md - 最长回文子串.md - 括号生成.md - 子集.md - 单词搜索.md - 电话号码的字母组合.md - 柱状图中最大的矩形.md All 22 LeetCode Hot 100 Medium problems now use Go exclusively. Code is cleaner, more focused, and easier to follow. Generated with [Claude Code](https://claude.ai/code) via [Happy](https://happy.engineering) Co-Authored-By: Claude <noreply@anthropic.com> Co-Authored-By: Happy <yesreply@happy.engineering>
592 lines
14 KiB
Markdown
592 lines
14 KiB
Markdown
# 括号生成 (Generate Parentheses)
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## 题目描述
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数字 `n` 代表生成括号的对数,请你设计一个函数,用于能够生成所有可能的并且 **有效的** 括号组合。
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### 示例
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**示例 1:**
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```
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输入:n = 3
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输出:["((()))","(()())","(())()","()(())","()()()"]
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```
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**示例 2:**
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```
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输入:n = 1
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输出:["()"]
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```
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### 约束条件
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- `1 <= n <= 8`
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## 解题思路
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### 方法一:回溯法(推荐)
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**核心思想:**使用回溯法生成所有可能的括号组合。在生成过程中,始终保持括号的有序性:
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1. 左括号数量不能超过 n
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2. 右括号数量不能超过左括号数量
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**算法步骤:**
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1. 初始化结果数组 `result` 和当前字符串 `current`
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2. 定义回溯函数 `backtrack(open, close)`:
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- `open`:已使用的左括号数量
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- `close`:已使用的右括号数量
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3. 终止条件:`len(current) == 2 * n`,将 `current` 加入 `result`
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4. 选择条件:
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- 如果 `open < n`,可以添加左括号
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- 如果 `close < open`,可以添加右括号
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5. 递归调用后撤销选择(回溯)
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**为什么这样做?**
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- 通过限制 `close < open`,保证任何时候右括号数量不超过左括号数量
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- 通过限制 `open < n`,保证左括号数量不超过 n
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- 这样生成的所有组合都是有效的
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### 方法二:DFS 深度优先搜索
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**核心思想:**与回溯法类似,但使用更纯粹的 DFS 思想。将问题看作在二叉树中搜索。
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**算法步骤:**
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1. 构建一个递归树,每个节点代表一个状态
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2. 从根节点开始,每次可以选择添加左括号或右括号
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3. 剪枝:不符合条件的分支直接跳过
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4. 到达叶子节点(长度为 2n)时,记录结果
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### 方法三:动态规划
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**核心思想:**利用卡特兰数(Catalan Number)的性质。n 对括号的有效组合数等于第 n 个卡特兰数。
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**递推公式:**
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- `dp[n]` 表示 n 对括号的所有有效组合
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- `dp[n] = "(" + dp[i] + ")" + dp[n-1-i]`,其中 `i` 从 0 到 n-1
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**算法步骤:**
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1. 初始化 `dp[0] = [""]`
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2. 对于 `i` 从 1 到 n:
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- 对于 `j` 从 0 到 i-1:
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- 将 `dp[j]` 的每个组合加上一对括号,再拼接 `dp[i-1-j]` 的每个组合
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3. 返回 `dp[n]`
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## 代码实现
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### Go 实现(回溯法)
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```go
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package main
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import "fmt"
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func generateParenthesis(n int) []string {
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result := []string{}
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current := []byte{}
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var backtrack func(open, close int)
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backtrack = func(open, close int) {
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// 终止条件:生成了 2n 个括号
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if len(current) == 2*n {
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result = append(result, string(current))
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return
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}
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// 添加左括号:左括号数量小于 n
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if open < n {
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current = append(current, '(')
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backtrack(open+1, close)
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current = current[:len(current)-1] // 回溯
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}
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// 添加右括号:右括号数量小于左括号数量
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if close < open {
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current = append(current, ')')
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backtrack(open, close+1)
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current = current[:len(current)-1] // 回溯
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}
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}
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backtrack(0, 0)
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return result
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}
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// 测试用例
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func main() {
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// 测试用例1
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n1 := 3
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fmt.Printf("输入: n = %d\n", n1)
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fmt.Printf("输出: %v\n", generateParenthesis(n1))
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// 测试用例2
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n2 := 1
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fmt.Printf("\n输入: n = %d\n", n2)
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fmt.Printf("输出: %v\n", generateParenthesis(n2))
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// 测试用例3
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n3 := 4
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fmt.Printf("\n输入: n = %d\n", n3)
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result3 := generateParenthesis(n3)
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fmt.Printf("输出长度: %d\n", len(result3))
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fmt.Printf("输出: %v\n", result3)
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// 验证卡特兰数
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for i := 1; i <= 8; i++ {
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fmt.Printf("n = %d, 组合数 = %d\n", i, len(generateParenthesis(i)))
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}
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}
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```
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```go
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func generateParenthesisDP(n int) []string {
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if n == 0 {
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return []string{""}
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}
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dp := make([][]string, n+1)
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dp[0] = []string{""}
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for i := 1; i <= n; i++ {
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dp[i] = []string{}
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for j := 0; j < i; j++ {
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for _, left := range dp[j] {
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for _, right := range dp[i-1-j] {
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dp[i] = append(dp[i], "("+left+")"+right)
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}
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}
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}
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}
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return dp[n]
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}
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```
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- **时间复杂度:** O(4^n / √n)
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- 在回溯树中,每个节点最多有 2 个分支
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- 树的高度为 2n
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- 但是由于剪枝,实际复杂度约为卡特兰数 C(n)
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- 卡特兰数约为 O(4^n / (n^(3/2) * √π))
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- **空间复杂度:** O(n)
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- 递归栈深度最大为 2n
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- 存储结果的空间不算在内(这是必须的)
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### 动态规划
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- **时间复杂度:** O(4^n / √n)
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- 与回溯法类似,需要生成所有有效组合
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- **空间复杂度:** O(4^n / √n)
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- 需要存储中间结果和最终结果
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## 进阶问题
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### Q1: 如何判断一个括号字符串是否有效?
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**A:** 使用栈或者计数器。
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```go
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// 方法1: 使用栈
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func isValid(s string) bool {
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stack := []byte{}
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for _, c := range []byte(s) {
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if c == '(' {
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stack = append(stack, c)
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} else if len(stack) > 0 {
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stack = stack[:len(stack)-1]
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} else {
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return false
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}
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}
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return len(stack) == 0
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}
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// 方法2: 使用计数器
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func isValidSimple(s string) bool {
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count := 0
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for _, c := range s {
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if c == '(' {
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count++
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} else if c == ')' {
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count--
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}
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if count < 0 {
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return false
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}
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}
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return count == 0
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}
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```
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### Q2: 如果有三种括号 ()、[]、{},应该如何生成?
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**A:** 需要更复杂的逻辑来保证括号匹配。
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```go
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func generateMultipleParentheses(n int) []string {
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types := []byte{'(', ')', '[', ']', '{', '}'}
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result := []string{}
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current := []byte{}
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stack := []byte{}
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var backtrack func(int)
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backtrack = func(length int) {
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if len(current) == 2*n {
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result = append(result, string(current))
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return
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}
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for i := 0; i < len(types); i += 2 {
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// 添加左括号
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if length < n {
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current = append(current, types[i])
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stack = append(stack, types[i])
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backtrack(length + 1)
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current = current[:len(current)-1]
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stack = stack[:len(stack)-1]
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}
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}
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for i := 1; i < len(types); i += 2 {
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// 添加右括号:必须与栈顶匹配
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if len(stack) > 0 && stack[len(stack)-1] == types[i-1] {
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current = append(current, types[i])
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stack = stack[:len(stack)-1]
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backtrack(length)
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current = current[:len(current)-1]
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stack = append(stack, types[i-1])
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}
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}
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}
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backtrack(0)
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return result
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}
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```
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### Q3: 如何优化内存使用,特别是对于大的 n?
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**A:** 可以使用生成器模式,逐个生成结果而不是全部存储。
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```go
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func generateParenthesisGenerator(n int, callback func(string)) {
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current := make([]byte, 0, 2*n)
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var backtrack func(open, close int)
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backtrack = func(open, close int) {
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if len(current) == 2*n {
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callback(string(current))
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return
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}
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if open < n {
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current = append(current, '(')
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backtrack(open+1, close)
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current = current[:len(current)-1]
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}
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if close < open {
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current = append(current, ')')
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backtrack(open, close+1)
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current = current[:len(current)-1]
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}
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}
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backtrack(0, 0)
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}
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```
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## P7 加分项
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### 1. 深度理解:卡特兰数(Catalan Number)
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**定义:**卡特兰数是组合数学中经常出现的数列,在许多计数问题中出现。
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**公式:**
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- C(n) = (2n)! / ((n+1)! × n!)
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- C(n) = C(0)×C(n-1) + C(1)×C(n-2) + ... + C(n-1)×C(0)
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**前几项:**1, 1, 2, 5, 14, 42, 132, 429, 1430, ...
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**应用场景:**
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1. 括号匹配问题(本题)
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2. 二叉搜索树的计数
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3. 出栈序列的计数
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4. 路径计数(不穿过对角线)
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**计算卡特兰数:**
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```go
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func catalanNumber(n int) int {
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if n <= 1 {
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return 1
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}
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// 动态规划计算
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dp := make([]int, n+1)
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dp[0], dp[1] = 1, 1
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for i := 2; i <= n; i++ {
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for j := 0; j < i; j++ {
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dp[i] += dp[j] * dp[i-1-j]
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}
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}
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return dp[n]
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}
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```
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### 2. 实战扩展:通用回溯框架
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**回溯法通用模板:**
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```go
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func backtrack(路径, 选择列表) {
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if 满足结束条件 {
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result = append(result, 路径)
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return
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}
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for 选择 in 选择列表 {
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// 做选择
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路径.add(选择)
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// 递归
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backtrack(路径, 选择列表)
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// 撤销选择(回溯)
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路径.remove(选择)
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}
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}
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```
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**应用示例:排列问题**
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```go
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func permute(nums []int) [][]int {
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result := [][]int{}
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current := []int{}
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used := make([]bool, len(nums))
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var backtrack func()
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backtrack = func() {
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if len(current) == len(nums) {
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temp := make([]int, len(current))
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copy(temp, current)
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result = append(result, temp)
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return
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}
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for i := 0; i < len(nums); i++ {
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if used[i] {
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continue
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}
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// 做选择
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current = append(current, nums[i])
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used[i] = true
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// 递归
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backtrack()
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// 撤销选择
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current = current[:len(current)-1]
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used[i] = false
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}
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}
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backtrack()
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return result
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}
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```
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### 3. 变形题目
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#### 变形1:最长有效括号
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**LeetCode 32:** 给定一个只包含 '(' 和 ')' 的字符串,找出最长有效(正确闭合)括号子串的长度。
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```go
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func longestValidParentheses(s string) int {
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maxLen := 0
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stack := []int{-1} // 初始化为 -1,便于计算长度
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for i, c := range s {
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if c == '(' {
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stack = append(stack, i)
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} else {
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stack = stack[:len(stack)-1]
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if len(stack) == 0 {
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stack = append(stack, i)
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} else {
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length := i - stack[len(stack)-1]
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if length > maxLen {
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maxLen = length
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}
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}
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}
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}
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return maxLen
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}
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```
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#### 变形2:不同的二叉搜索树
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**LeetCode 96:** 给定 n,求恰好由 n 个节点组成且节点值从 1 到 n 互不相同的二叉搜索树有多少种?
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```go
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func numTrees(n int) int {
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dp := make([]int, n+1)
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dp[0], dp[1] = 1, 1
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for i := 2; i <= n; i++ {
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for j := 1; j <= i; j++ {
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dp[i] += dp[j-1] * dp[i-j]
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}
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}
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return dp[n]
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}
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```
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#### 变形3:括号分数
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**LeetCode 856:** 给定一个平衡括号字符串 S,按下述规则计算该字符串的分数:
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- `()` 得 1 分
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- `AB` 得 `A + B` 分,其中 A 和 B 是平衡括号字符串
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- `(A)` 得 `2 × A` 分,其中 A 是平衡括号字符串
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```go
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func scoreOfParentheses(s string) int {
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stack := []int{0} // 栈底保存当前层的分数
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for _, c := range s {
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if c == '(' {
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stack = append(stack, 0) // 新的一层,初始分数为 0
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} else {
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// 弹出当前层的分数
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top := stack[len(stack)-1]
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stack = stack[:len(stack)-1]
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// 计算分数
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if top == 0 {
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stack[len(stack)-1] += 1
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} else {
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stack[len(stack)-1] += 2 * top
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}
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}
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}
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return stack[0]
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}
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```
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### 4. 优化技巧
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#### 优化1:剪枝优化
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在回溯过程中,尽早发现不可能的解并剪枝。
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```go
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func generateParenthesisOptimized(n int) []string {
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result := []string{}
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current := []byte{}
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var backtrack func(open, close int)
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backtrack = func(open, close int) {
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// 剪枝:如果剩余的右括号太多,无法完成
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if close > open {
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return
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}
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if len(current) == 2*n {
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result = append(result, string(current))
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return
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||
}
|
||
|
||
if open < n {
|
||
current = append(current, '(')
|
||
backtrack(open+1, close)
|
||
current = current[:len(current)-1]
|
||
}
|
||
|
||
if close < open {
|
||
current = append(current, ')')
|
||
backtrack(open, close+1)
|
||
current = current[:len(current)-1]
|
||
}
|
||
}
|
||
|
||
backtrack(0, 0)
|
||
return result
|
||
}
|
||
```
|
||
|
||
#### 优化2:迭代优化
|
||
|
||
使用迭代代替递归,避免栈溢出。
|
||
|
||
```go
|
||
func generateParenthesisIterative(n int) []string {
|
||
type state struct {
|
||
current string
|
||
open int
|
||
close int
|
||
}
|
||
|
||
result := []string{}
|
||
stack := []state{{"", 0, 0}}
|
||
|
||
for len(stack) > 0 {
|
||
// 弹出栈顶
|
||
s := stack[len(stack)-1]
|
||
stack = stack[:len(stack)-1]
|
||
|
||
if len(s.current) == 2*n {
|
||
result = append(result, s.current)
|
||
continue
|
||
}
|
||
|
||
if s.open < n {
|
||
stack = append(stack, state{s.current + "(", s.open + 1, s.close})
|
||
}
|
||
|
||
if s.close < s.open {
|
||
stack = append(stack, state{s.current + ")", s.open, s.close + 1})
|
||
}
|
||
}
|
||
|
||
return result
|
||
}
|
||
```
|
||
|
||
### 5. 实际应用场景
|
||
|
||
- **编译器:** 语法分析和表达式求值
|
||
- **代码格式化:** 自动添加括号
|
||
- **数学表达式:** 验证表达式有效性
|
||
- **数据验证:** 检查嵌套结构(如 HTML 标签)
|
||
|
||
### 6. 面试技巧
|
||
|
||
**面试官可能会问:**
|
||
1. "为什么要用回溯法而不是暴力枚举?"
|
||
2. "卡特兰数和这个问题有什么关系?"
|
||
3. "如何证明你的算法生成的所有组合都是有效的?"
|
||
|
||
**回答要点:**
|
||
1. 回溯法通过剪枝避免了无效组合的生成,效率更高
|
||
2. n 对括号的有效组合数等于第 n 个卡特兰数
|
||
3. 通过维护 `open` 和 `close` 计数器,保证了右括号永远不超过左括号
|
||
|
||
### 7. 相关题目推荐
|
||
|
||
- LeetCode 22: 括号生成(本题)
|
||
- LeetCode 17: 电话号码的字母组合
|
||
- LeetCode 32: 最长有效括号
|
||
- LeetCode 39: 组合总和
|
||
- LeetCode 46: 全排列
|
||
- LeetCode 78: 子集
|
||
- LeetCode 96: 不同的二叉搜索树
|