index.en.html 17.0 KB
Newer Older
1

Y
Yi Wang 已提交
2 3 4 5 6 7 8
<html>
<head>
  <script type="text/x-mathjax-config">
  MathJax.Hub.Config({
    extensions: ["tex2jax.js", "TeX/AMSsymbols.js", "TeX/AMSmath.js"],
    jax: ["input/TeX", "output/HTML-CSS"],
    tex2jax: {
9 10
      inlineMath: [ ['$','$'] ],
      displayMath: [ ['$$','$$'] ],
Y
Yi Wang 已提交
11 12 13 14 15 16
      processEscapes: true
    },
    "HTML-CSS": { availableFonts: ["TeX"] }
  });
  </script>
  <script src="https://cdnjs.cloudflare.com/ajax/libs/mathjax/2.7.0/MathJax.js" async></script>
Y
Yu Yang 已提交
17
  <script type="text/javascript" src="../.tools/theme/marked.js">
Y
Yi Wang 已提交
18 19 20 21 22
  </script>
  <link href="http://cdn.bootcss.com/highlight.js/9.9.0/styles/darcula.min.css" rel="stylesheet">
  <script src="http://cdn.bootcss.com/highlight.js/9.9.0/highlight.min.js"></script>
  <link href="http://cdn.bootcss.com/bootstrap/4.0.0-alpha.6/css/bootstrap.min.css" rel="stylesheet">
  <link href="https://cdn.jsdelivr.net/perfect-scrollbar/0.6.14/css/perfect-scrollbar.min.css" rel="stylesheet">
Y
Yu Yang 已提交
23
  <link href="../.tools/theme/github-markdown.css" rel='stylesheet'>
Y
Yi Wang 已提交
24 25 26 27 28 29 30 31 32 33 34 35 36 37
</head>
<style type="text/css" >
.markdown-body {
    box-sizing: border-box;
    min-width: 200px;
    max-width: 980px;
    margin: 0 auto;
    padding: 45px;
}
</style>


<body>

Y
Yu Yang 已提交
38
<div id="context" class="container-fluid markdown-body">
Y
Yi Wang 已提交
39 40 41 42 43
</div>

<!-- This block will be replaced by each markdown file content. Please do not change lines below.-->
<div id="markdown" style='display:none'>
# Linear Regression
44 45
Let us begin the tutorial with a classical problem called Linear Regression \[[1](#References)\]. In this chapter, we will train a model from a realistic dataset to predict home prices. Some important concepts in Machine Learning will be covered through this example.

L
Luo Tao 已提交
46
The source code for this tutorial lives on [book/fit_a_line](https://github.com/PaddlePaddle/book/tree/develop/01.fit_a_line). For instructions on getting started with PaddlePaddle, see [PaddlePaddle installation guide](https://github.com/PaddlePaddle/book/blob/develop/README.en.md#running-the-book).
Y
Yi Wang 已提交
47

48 49
## Problem Setup
Suppose we have a dataset of $n$ real estate properties. These real estate properties will be referred to as *homes* in this chapter for clarity.
Y
Yi Wang 已提交
50

51 52 53
Each home is associated with $d$ attributes. The attributes describe characteristics such the number of rooms in the home, the number of schools or hospitals in the neighborhood, and the traffic condition nearby.

In our problem setup, the attribute $x_{i,j}$ denotes the $j$th characteristic of the $i$th home. In addition, $y_i$ denotes the price of the $i$th home. Our task is to predict $y_i$ given a set of attributes $\{x_{i,1}, ..., x_{i,d}\}$. We assume that the price of a home is a linear combination of all of its attributes, namely,
Y
Yi Wang 已提交
54 55 56

$$y_i = \omega_1x_{i,1} + \omega_2x_{i,2} + \ldots + \omega_dx_{i,d} + b,  i=1,\ldots,n$$

57
where $\vec{\omega}$ and $b$ are the model parameters we want to estimate. Once they are learned, we will be able to predict the price of a home, given the attributes associated with it. We call this model **Linear Regression**. In other words, we want to regress a value against several values linearly. In practice, a linear model is often too simplistic to capture the real relationships between the variables. Yet, because Linear Regression is easy to train and analyze, it has been applied to a large number of real problems. As a result, it is an important topic in many classic Statistical Learning and Machine Learning textbooks \[[2,3,4](#References)\].
Y
Yi Wang 已提交
58 59

## Results Demonstration
60
We first show the result of our model. The dataset [UCI Housing Data Set](https://archive.ics.uci.edu/ml/datasets/Housing) is used to train a linear model to predict the home prices in Boston. The figure below shows the predictions the model makes for some home prices. The $X$-axis represents the median value of the prices of simlilar homes within a bin, while the $Y$-axis represents the home value our linear model predicts. The dotted line represents points where $X=Y$. When reading the diagram, the more precise the model predicts, the closer the point is to the dotted line.
Y
Yi Wang 已提交
61
<p align="center">
62 63
    <img src = "image/predictions_en.png" width=400><br/>
    Figure 1. Predicted Value V.S. Actual Value
Y
Yi Wang 已提交
64 65 66 67 68 69
</p>

## Model Overview

### Model Definition

70
In the UCI Housing Data Set, there are 13 home attributes $\{x_{i,j}\}$ that are related to the median home price $y_i$, which we aim to predict. Thus, our model can be written as:
Y
Yi Wang 已提交
71 72 73

$$\hat{Y} = \omega_1X_{1} + \omega_2X_{2} + \ldots + \omega_{13}X_{13} + b$$

74
where $\hat{Y}$ is the predicted value used to differentiate from actual value $Y$. The model learns parameters $\omega_1, \ldots, \omega_{13}, b$, where the entries of $\vec{\omega}$ are **weights** and $b$ is **bias**.
Y
Yi Wang 已提交
75

76
Now we need an objective to optimize, so that the learned parameters can make $\hat{Y}$ as close to $Y$ as possible. Let's refer to the concept of [Loss Function (Cost Function)](https://en.wikipedia.org/wiki/Loss_function). A loss function must output a non-negative value, given any pair of the actual value $y_i$ and the predicted value $\hat{y_i}$. This value reflects the magnitutude of the model error.
Y
Yi Wang 已提交
77

78
For Linear Regression, the most common loss function is [Mean Square Error (MSE)](https://en.wikipedia.org/wiki/Mean_squared_error) which has the following form:
Y
Yi Wang 已提交
79 80 81

$$MSE=\frac{1}{n}\sum_{i=1}^{n}{(\hat{Y_i}-Y_i)}^2$$

82
That is, for a dataset of size $n$, MSE is the average value of the the prediction sqaure errors.
Y
Yi Wang 已提交
83 84 85

### Training

86 87 88 89
After setting up our model, there are several major steps to go through to train it:
1. Initialize the parameters including the weights $\vec{\omega}$ and the bias $b$. For example, we can set their mean values as $0$s, and their standard deviations as $1$s.
2. Feedforward. Evaluate the network output and compute the corresponding loss.
3. [Backpropagate](https://en.wikipedia.org/wiki/Backpropagation) the errors. The errors will be propagated from the output layer back to the input layer, during which the model parameters will be updated with the corresponding errors.
Y
Yi Wang 已提交
90 91
4. Repeat steps 2~3, until the loss is below a predefined threshold or the maximum number of repeats is reached.

92 93 94 95 96 97 98 99 100
## Dataset

### Python Dataset Modules

Our program starts with importing necessary packages:

```python
import paddle.v2 as paddle
import paddle.v2.dataset.uci_housing as uci_housing
Y
Yi Wang 已提交
101 102
```

103
We encapsulated the [UCI Housing Data Set](https://archive.ics.uci.edu/ml/datasets/Housing) in our Python module `uci_housing`.  This module can
Y
Yi Wang 已提交
104

105 106
1. download the dataset to `~/.cache/paddle/dataset/uci_housing/housing.data`, if not yet, and
2.  [preprocesses](#preprocessing) the dataset.
Y
Yi Wang 已提交
107

108 109 110 111 112
### An Introduction of the Dataset

The UCI housing dataset has 506 instances. Each instance describes the attributes of a house in surburban Boston.  The attributes are explained below:

| Attribute Name | Characteristic | Data Type |
Y
Yi Wang 已提交
113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128
| ------| ------ | ------ |
| CRIM | per capita crime rate by town | Continuous|
| ZN | proportion of residential land zoned for lots over 25,000 sq.ft. | Continuous |
| INDUS | proportion of non-retail business acres per town | Continuous |
| CHAS | Charles River dummy variable | Discrete, 1 if tract bounds river; 0 otherwise|
| NOX | nitric oxides concentration (parts per 10 million) | Continuous |
| RM | average number of rooms per dwelling | Continuous |
| AGE | proportion of owner-occupied units built prior to 1940 | Continuous |
| DIS | weighted distances to five Boston employment centres | Continuous |
| RAD | index of accessibility to radial highways | Continuous |
| TAX | full-value property-tax rate per $10,000 | Continuous |
| PTRATIO | pupil-teacher ratio by town | Continuous |
| B | 1000(Bk - 0.63)^2 where Bk is the proportion of blacks by town | Continuous |
| LSTAT | % lower status of the population | Continuous |
| MEDV | Median value of owner-occupied homes in $1000's | Continuous |

129
The last entry is the median home price.
Y
Yi Wang 已提交
130 131 132

### Preprocessing
#### Continuous and Discrete Data
133 134 135
We define a feature vector of length 13 for each home, where each entry corresponds to an attribute. Our first observation is that, among the 13 dimensions, there are 12 continuous dimensions and 1 discrete dimension.

Note that although a discrete value is also written as numeric values such as 0, 1, or 2, its meaning differs from a continuous value drastically.  The linear difference between two discrete values has no meaning. For example, suppose $0$, $1$, and $2$ are used to represent colors *Red*, *Green*, and *Blue* respectively. Judging from the numeric representation of these colors, *Red* differs more from *Blue* than it does from *Green*. Yet in actuality, it is not true that extent to which the color *Blue* is different from *Red* is greater than the extent to which *Green* is different from *Red*. Therefore, when handling a discrete feature that has $d$ possible values, we usually convert it to $d$ new features where each feature takes a binary value, $0$ or $1$, indicating whether the original value is absent or present. Alternatively, the discrete features can be mapped onto a continuous multi-dimensional vector through an embedding table. For our problem here, because CHAS itself is a binary discrete value, we do not need to do any preprocessing.
Y
Yi Wang 已提交
136 137

#### Feature Normalization
138
We also observe a huge difference among the value ranges of the 13 features (Figure 2). For instance, the values of feature *B* fall in $[0.32, 396.90]$, whereas those of feature *NOX* has a range of $[0.3850, 0.8170]$. An effective optimization would require data normalization. The goal of data normalization is to scale te values of each feature into roughly the same range, perhaps $[-0.5, 0.5]$. Here, we adopt a popular normalization technique where we substract the mean value from the feature value and divide the result by the width of the original range.
Y
Yi Wang 已提交
139 140 141

There are at least three reasons for [Feature Normalization](https://en.wikipedia.org/wiki/Feature_scaling) (Feature Scaling):
- A value range that is too large or too small might cause floating number overflow or underflow during computation.
142 143
- Different value ranges might result in varying *importances* of different features to the model (at least in the beginning of the training process). This assumption about the data is often unreasonable, making the optimization difficult, which in turn results in increased training time.
- Many machine learning techniques or models (e.g., *L1/L2 regularization* and *Vector Space Model*) assumes that all the features have roughly zero means and their value ranges are similar.
Y
Yi Wang 已提交
144 145

<p align="center">
146 147
    <img src = "image/ranges_en.png" width=550><br/>
    Figure 2. The value ranges of the features
Y
Yi Wang 已提交
148 149 150
</p>

#### Prepare Training and Test Sets
151 152 153 154 155 156 157 158 159 160 161
We split the dataset in two, one for adjusting the model parameters, namely, for model training, and the other for model testing. The model error on the former is called the **training error**, and the error on the latter is called the **test error**. Our goal in training a model is to find the statistical dependency between the outputs and the inputs, so that we can predict new outputs given new inputs. As a result, the test error reflects the performance of the model better than the training error does. We consider two things when deciding the ratio of the training set to the test set: 1) More training data will decrease the variance of the parameter estimation, yielding more reliable models; 2) More test data will decrease the variance of the test error, yielding more reliable test errors. One standard split ratio is $8:2$.


When training complex models, we usually have one more split: the validation set. Complex models usually have [Hyperparameters](https://en.wikipedia.org/wiki/Hyperparameter_optimization) that need to be set before the training process, such as the number of layers in the network. Because hyperparameters are not part of the model parameters, they cannot be trained using the same loss function. Thus we will try several sets of hyperparameters to train several models and cross-validate them on the validation set to pick the best one; finally, the selected trained model is tested on the test set. Because our model is relatively simple, we will omit this validation process.


## Training

`fit_a_line/trainer.py` demonstrates the training using [PaddlePaddle](http://paddlepaddle.org).

### Initialize PaddlePaddle
Y
Yi Wang 已提交
162 163

```python
164
paddle.init(use_gpu=False, trainer_count=1)
Y
Yi Wang 已提交
165 166
```

167
### Model Configuration
Y
Yi Wang 已提交
168

169
Logistic regression is essentially a fully-connected layer with linear activation:
Y
Yi Wang 已提交
170 171

```python
172 173 174 175 176
x = paddle.layer.data(name='x', type=paddle.data_type.dense_vector(13))
y_predict = paddle.layer.fc(input=x,
                                size=1,
                                act=paddle.activation.Linear())
y = paddle.layer.data(name='y', type=paddle.data_type.dense_vector(1))
L
Luo Tao 已提交
177
cost = paddle.layer.mse_cost(input=y_predict, label=y)
178 179
```
### Create Parameters
Y
Yi Wang 已提交
180

181 182
```python
parameters = paddle.parameters.create(cost)
Y
Yi Wang 已提交
183 184
```

185
### Create Trainer
Y
Yi Wang 已提交
186 187

```python
188
optimizer = paddle.optimizer.Momentum(momentum=0)
Y
Yi Wang 已提交
189

190 191 192 193
trainer = paddle.trainer.SGD(cost=cost,
                             parameters=parameters,
                             update_equation=optimizer)
```
Y
Yi Wang 已提交
194

195
### Feeding Data
Y
Yi Wang 已提交
196

197 198 199
PaddlePaddle provides the
[reader mechanism](https://github.com/PaddlePaddle/Paddle/tree/develop/doc/design/reader)
for loadinng training data. A reader may return multiple columns, and we need a Python dictionary to specify the mapping from column index to data layers.
Y
Yi Wang 已提交
200 201

```python
202
feeding={'x': 0, 'y': 1}
Y
Yi Wang 已提交
203 204
```

205 206
Moreover, an event handler is provided to print the training progress:

L
liaogang 已提交
207
```python
L
liaogang 已提交
208
# event_handler to print training and testing info
L
liaogang 已提交
209 210 211
def event_handler(event):
    if isinstance(event, paddle.event.EndIteration):
        if event.batch_id % 100 == 0:
L
liaogang 已提交
212 213 214
            print "Pass %d, Batch %d, Cost %f" % (
                event.pass_id, event.batch_id, event.cost)

L
liaogang 已提交
215
    if isinstance(event, paddle.event.EndPass):
L
liaogang 已提交
216 217 218 219 220
        result = trainer.test(
            reader=paddle.batch(
                uci_housing.test(), batch_size=2),
            feeding=feeding)
        print "Test %d, Cost %f" % (event.pass_id, result.cost)
L
liaogang 已提交
221 222
```

Y
Yi Wang 已提交
223
```python
Q
qiaolongfei 已提交
224 225
# event_handler to print training and testing info
from paddle.v2.plot import Ploter
Q
qiaolongfei 已提交
226

Q
qiaolongfei 已提交
227 228 229
train_title = "Train cost"
test_title = "Test cost"
plot_cost = Ploter(train_title, test_title)
Q
qiaolongfei 已提交
230

Q
qiaolongfei 已提交
231
step = 0
Q
qiaolongfei 已提交
232

L
liaogang 已提交
233
def event_handler_plot(event):
Q
qiaolongfei 已提交
234
    global step
235
    if isinstance(event, paddle.event.EndIteration):
Q
qiaolongfei 已提交
236
        if step % 10 == 0:  # every 10 batches, record a train cost
Q
qiaolongfei 已提交
237
            plot_cost.append(train_title, step, event.cost)
Q
qiaolongfei 已提交
238

Q
qiaolongfei 已提交
239
        if step % 100 == 0: # every 100 batches, record a test cost
Q
qiaolongfei 已提交
240 241 242 243
            result = trainer.test(
                reader=paddle.batch(
                    uci_housing.test(), batch_size=2),
                feeding=feeding)
Q
qiaolongfei 已提交
244
            plot_cost.append(test_title, step, result.cost)
Q
qiaolongfei 已提交
245 246

        if step % 100 == 0: # every 100 batches, update cost plot
Q
qiaolongfei 已提交
247 248
            plot_cost.plot()

Q
qiaolongfei 已提交
249
        step += 1
Y
Yi Wang 已提交
250 251
```

252
### Start Training
Y
Yi Wang 已提交
253

254 255 256 257 258 259 260
```python
trainer.train(
    reader=paddle.batch(
        paddle.reader.shuffle(
            uci_housing.train(), buf_size=500),
        batch_size=2),
    feeding=feeding,
L
liaogang 已提交
261
    event_handler=event_handler_plot,
262
    num_passes=30)
Y
Yi Wang 已提交
263 264
```

Q
qiaolongfei 已提交
265
![png](./image/train_and_test.png)
Q
qiaolongfei 已提交
266

Q
qiaolongfei 已提交
267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293
### Apply model

#### 1. generate testing data

```python
test_data_creator = paddle.dataset.uci_housing.test()
test_data = []

for item in test_data_creator():
    test_data.append((item[0], ))
    if len(test_data) == 5:
        break

for data in test_data:
    print data
```

#### 2. inference

```python
probs = paddle.infer(
    output_layer=y_predict, parameters=parameters, input=test_data)

for data in probs:
    print data
```

Y
Yi Wang 已提交
294
## Summary
295
This chapter introduces *Linear Regression* and how to train and test this model with PaddlePaddle, using the UCI Housing Data Set. Because a large number of more complex models and techniques are derived from linear regression, it is important to understand its underlying theory and limitation.
Y
Yi Wang 已提交
296 297 298 299 300 301 302 303 304


## References
1. https://en.wikipedia.org/wiki/Linear_regression
2. Friedman J, Hastie T, Tibshirani R. The elements of statistical learning[M]. Springer, Berlin: Springer series in statistics, 2001.
3. Murphy K P. Machine learning: a probabilistic perspective[M]. MIT press, 2012.
4. Bishop C M. Pattern recognition[J]. Machine Learning, 2006, 128.

<br/>
305
This tutorial is contributed by <a xmlns:cc="http://creativecommons.org/ns#" href="http://book.paddlepaddle.org" property="cc:attributionName" rel="cc:attributionURL">PaddlePaddle</a>, and licensed under a <a rel="license" href="http://creativecommons.org/licenses/by-nc-sa/4.0/">Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License</a>.
306

Y
Yi Wang 已提交
307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324
</div>
<!-- You can change the lines below now. -->

<script type="text/javascript">
marked.setOptions({
  renderer: new marked.Renderer(),
  gfm: true,
  breaks: false,
  smartypants: true,
  highlight: function(code, lang) {
    code = code.replace(/&amp;/g, "&")
    code = code.replace(/&gt;/g, ">")
    code = code.replace(/&lt;/g, "<")
    code = code.replace(/&nbsp;/g, " ")
    return hljs.highlightAuto(code, [lang]).value;
  }
});
document.getElementById("context").innerHTML = marked(
325
        document.getElementById("markdown").innerHTML)
Y
Yi Wang 已提交
326 327
</script>
</body>