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ailearning/docs/da/084.md
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# 处理文本(数学表达式)
在字符串中使用一对 `$$` 符号可以利用 `Tex` 语法打出数学表达式,而且并不需要预先安装 `Tex`。在使用时我们通常加上 `r` 标记表示它是一个原始字符串raw string
In [1]:
```py
import matplotlib.pyplot as plt
import numpy as np
%matplotlib inline
```
In [2]:
```py
# plain text
plt.title('alpha > beta')
plt.show()
```
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)In [3]:
```py
# math text
plt.title(r'$\alpha > \beta$')
plt.show()
```
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)
## 上下标
使用 `_``^` 表示上下标:
$\alpha_i > \beta_i$
```py
r'$\alpha_i > \beta_i$'
```
$\sum\limits_{i=0}^\infty x_i$
```py
r'$\sum_{i=0}^\infty x_i$'
```
注:
* 希腊字母和特殊符号可以用 '\ + 对应的名字' 来显示
* `{}` 中的内容属于一个部分;要打出花括号是需要使用 `\{\}`
## 分数二项式系数stacked numbers
$\frac{3}{4}, \binom{3}{4}, \stackrel{3}{4}$
```py
r'$\frac{3}{4}, \binom{3}{4}, \stackrel{3}{4}$'
```
$\frac{5 - \frac{1}{x}}{4}$
```py
r'$\frac{5 - \frac{1}{x}}{4}$'
```
在 Tex 语言中,括号始终是默认的大小,如果要使括号大小与括号内部的大小对应,可以使用 `\left``\right` 选项:
$(\frac{5 - \frac{1}{x}}{4})$
```py
r'$(\frac{5 - \frac{1}{x}}{4})$'
```
$\left(\frac{5 - \frac{1}{x}}{4}\right)$
```py
r'$\left(\frac{5 - \frac{1}{x}}{4}\right)$'
```
## 根号
$\sqrt{2}$
```py
r'$\sqrt{2}$'
```
$\sqrt[3]{x}$
```py
r'$\sqrt[3]{x}$'
```
## 特殊字体
默认显示的字体是斜体,不过可以使用以下方法显示不同的字体:
| 命令 | 显示 |
| --- | --- |
| \mathrm{Roman} | $\mathrm{Roman}$ |
| \mathit{Italic} | $\mathit{Italic}$ |
| \mathtt{Typewriter} | $\mathtt{Typewriter}$ |
| \mathcal{CALLIGRAPHY} | $\mathcal{CALLIGRAPHY}$ |
| \mathbb{blackboard} | $\mathbb{blackboard}$ |
| \mathfrak{Fraktur} | $\mathfrak{Fraktur}$ |
| \mathsf{sansserif} | $\mathsf{sansserif}$ |
$s(t) = \mathcal{A}\ \sin(2 \omega t)$
```py
s(t) = \mathcal{A}\ \sin(2 \omega t)
```
注:
* Tex 语法默认忽略空格,要打出空格使用 `'\ '`
* \sin 默认显示为 Roman 字体
## 音调
| 命令 | 结果 |
| --- | --- |
| `\acute a` | $\acute a$ |
| `\bar a` | $\bar a$ |
| `\breve a` | $\breve a$ |
| `\ddot a` | $\ddot a$ |
| `\dot a` | $\dot a$ |
| `\grave a` | $\grave a$ |
| `\hat a` | $\hat a$ |
| `\tilde a` | $\tilde a$ |
| `\4vec a` | $\vec a$ |
| `\overline{abc}` | $\overline{abc}$ |
| `\widehat{xyz}` | $\widehat{xyz}$ |
| `\widetilde{xyz}` | $\widetilde{xyz}$ |
## 特殊字符表
参见:[http://matplotlib.org/users/mathtext.html#symbols](http://matplotlib.org/users/mathtext.html#symbols)
## 例子
In [4]:
```py
import numpy as np
import matplotlib.pyplot as plt
t = np.arange(0.0, 2.0, 0.01)
s = np.sin(2*np.pi*t)
plt.plot(t,s)
plt.title(r'$\alpha_i > \beta_i$', fontsize=20)
plt.text(1, -0.6, r'$\sum_{i=0}^\infty x_i$', fontsize=20)
plt.text(0.6, 0.6, r'$\mathcal{A}\ \mathrm{sin}(2 \omega t)$',
fontsize=20)
plt.xlabel('time (s)')
plt.ylabel('volts (mV)')
plt.show()
```
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