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Data-Science-Notes

数据科学的笔记以及资料搜集,目前尚在更新,部分内容来源于github搜集。

0.math (数学基础)

1.python-basic (python基础)

2.numpy(numpy基础)

3.pandas(pandas基础)

4.scipy(scipy基础)

5.data-visualization(数据可视化基础,包含matplotlib和seaborn)

6.scikit-learn(scikit-learn基础)

7.machine-learning(机器学习基础)

8.deep-learning(深度学习基础)

9.feature-engineering(特征工程基础)

参考

关于作者

微信公众号:机器学习初学者 gongzhong 知识星球:黄博的机器学习圈子xingqiu

我的知乎

机器学习qq群:704220115(我们有11个群,加过一个就不需要加了)

注意:github下载太慢的话,关注我的公众号:“机器学习初学者”,回复“学习路线”即可下载本仓库的镜像文件,整个仓库压缩成一个iso。

如果需要引用这个Repo:

格式: fengdu78, Data-Science-Notes, (2019), GitHub repository, https://github.com/fengdu78/Data-Science-Notes

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data-science-notes's Issues

CS229-LinearAlgebra 勘误

我们用$a^T$或者$A_{i,:}$表示矩阵$A$的第$i$行:
应更正为:
我们用$a^T_i$或者$A_{i,:}$表示矩阵$A$的第$i$行:

关于特征重要度计算时的问题

使用我自己的数据集时,前面画相关性图时都没有报错,直到使用这句代码fs.identify_zero_importance(task = 'classification', eval_metric = 'auc', n_iterations = 10, early_stopping = True)
报错为:y contains new labels: [ 628 1396 1476 1800 2076 3620 3814 3832 3840 4246 4392 4398 4500 4536],但是我检查数据之后没有发现new labels,请问是什么原因呢?非常感谢您的开发!!

CS229-Prob 勘误

  1. 概率的基本要素
    (3) $A_1,A_2,\cdots \cup_{i} A_{i} \in \mathcal{F}\Longrightarrow\cup_{i} A_{i} \in \mathcal{F}$
    应更正为
    (3) $A_1,A_2,\cdots A_{i} \in \mathcal{F}\Longrightarrow\cup_{i} A_{i} \in \mathcal{F}$

100_Numpy_exercises第49题答案无法运行问题及解决方法

出现的问题

ValueError Traceback (most recent call last)
in
----> 1 np.set_printoptions(threshold=np.nan)
2 Z = np.zeros((16,16))
3 print(Z)
ValueError: threshold must be non-NAN, try sys.maxsize for untruncated representation

解决方法

将np.set_printoptions(threshold=np.nan)改为np.set_printoptions(threshold=np.inf)
我的numpy版本为1.19.1

1.numpy-beginner.ipynb 勘误

In [104]:
x = [[1,3,3],
[7,5,2]]
print(np.argmax(x,axis=0))

这里的axis=0应修改为:
axis=1
否则与说明不符

CS229-LinearAlgebra

Page13
3.13-Line6

u是具有特征值 λi 和 b 的特征向量
应更正为:
u是具有特征值 λi 的特征向量
ui is an eigenvector with eigenvalue λi

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