forked from szcf-weiya/ESL-CN
-
Notifications
You must be signed in to change notification settings - Fork 0
/
mkdocs.yml
320 lines (284 loc) · 19.6 KB
/
mkdocs.yml
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
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
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
pages:
- 主页:
- 欢迎: 'index.md'
- 序言:
- 第二版序言: 'Preface/2016-07-20-Preface-to-the-Second-Edition.md'
- 第一版序言: 'Preface/2016-07-21-Preface-to-the-First-Edition.md'
- 上篇:
- 1 简介:
- 1.1 导言: '01-Introduction/2016-07-26-Chapter-1-Introduction.md'
- 2 监督学习概要:
- 2.1 导言: '02-Overview-of-Supervised-Learning/2.1-Introduction.md'
- 2.2 变量类型和术语: '02-Overview-of-Supervised-Learning/2.2-Variable-Types-and-Terminology.md'
- 2.3 两种预测的简单方法: '02-Overview-of-Supervised-Learning/2.3-Two-Simple-Approaches-to-Prediction.md'
- 2.4 统计判别理论: '02-Overview-of-Supervised-Learning/2.4-Statistical-Decision-Theory.md'
- 2.5 高维问题的局部方法: '02-Overview-of-Supervised-Learning/2.5-Local-Methods-in-High-Dimensions.md'
- 2.6 统计模型,监督学习和函数逼近: '02-Overview-of-Supervised-Learning/2.6-Statistical-Models-Supervised-Learning-and-Function-Approximation.md'
- 2.7 结构化的回归模型: '02-Overview-of-Supervised-Learning/2.7-Structured-Regression-Models.md'
- 2.8 限制性估计的种类: '02-Overview-of-Supervised-Learning/2.8-Classes-of-Restricted-Estimators.md'
- 2.9 模型选择和偏差-方差的权衡: '02-Overview-of-Supervised-Learning/2.9-Model-Selection-and-the-Bias-Variance-Tradeoff.md'
- 文献笔记: '02-Overview-of-Supervised-Learning/Bibliographic-Notes.md'
- 3 回归的线性方法:
- 3.1 导言: '03-Linear-Methods-for-Regression/3.1-Introduction.md'
- 3.2 线性回归模型和最小二乘法: '03-Linear-Methods-for-Regression/3.2-Linear-Regression-Models-and-Least-Squares.md'
- 3.3 子集的选择: '03-Linear-Methods-for-Regression/3.3-Subset-Selection.md'
- 3.4 收缩的方法: '03-Linear-Methods-for-Regression/3.4-Shrinkage-Methods.md'
- 3.5 运用派生输入方向的方法: '03-Linear-Methods-for-Regression/3.5-Methods-Using-Derived-Input-Directions.md'
- 3.6 选择和收缩方法的比较: '03-Linear-Methods-for-Regression/3.6-A-Comparison-of-the-Selection-and-Shrinkage-Methods.md'
- 3.7 多重输出的收缩和选择: '03-Linear-Methods-for-Regression/3.7-Multiple-Outcome-Shrinkage-and-Selection.md'
- 3.8 Lasso 和相关路径算法的补充: '03-Linear-Methods-for-Regression/3.8-More-on-the-Lasso-and-Related-Path-Algorithms.md'
- 3.9 计算上的考虑: '03-Linear-Methods-for-Regression/3.9-Computational-Considerations.md'
- 文献笔记: '03-Linear-Methods-for-Regression/Bibliographic-Notes.md'
- 4 分类的线性方法:
- 4.1 导言: '04-Linear-Methods-for-Classification/4.1-Introduction.md'
- 4.2 指示矩阵的线性回归: '04-Linear-Methods-for-Classification/4.2-Linear-Regression-of-an-Indicator-Matrix.md'
- 4.3 线性判别分析: '04-Linear-Methods-for-Classification/4.3-Linear-Discriminant-Analysis.md'
- 4.4 逻辑斯蒂回归: '04-Linear-Methods-for-Classification/4.4-Logistic-Regression.md'
- 4.5 分离超平面: '04-Linear-Methods-for-Classification/4.5-Separating-Hyperplanes.md'
- 文献笔记: '04-Linear-Methods-for-Classification/Bibliographic-Notes.md'
- 5 基展开和正规化:
- 5.1 导言: '05-Basis-Expansions-and-Regularization/5.1-Introduction.md'
- 5.2 分段多项式和样条: '05-Basis-Expansions-and-Regularization/5.2-Piecewise-Polynomials-and-Splines.md'
- 5.3 滤波和特征提取: '05-Basis-Expansions-and-Regularization/5.3-Filtering-and-Feature-Extraction.md'
- 5.4 光滑样条: '05-Basis-Expansions-and-Regularization/5.4-Smoothing-Splines.md'
- 5.5 光滑参数的自动选择: '05-Basis-Expansions-and-Regularization/5.5-Automatic-Selection-of-the-Smoothing-Parameters.md'
- 5.6 非参逻辑斯蒂回归: '05-Basis-Expansions-and-Regularization/5.6-Nonparametric-Logistic-Regression.md'
- 5.7 多维样条: '05-Basis-Expansions-and-Regularization/5.7-Multidimensional-Splines.md'
- 5.8 正则化和再生核希尔伯特空间理论: '05-Basis-Expansions-and-Regularization/5.8-Regularization-and-Reproducing-Kernel-Hibert-Spaces.md'
- 5.9 小波光滑: '05-Basis-Expansions-and-Regularization/5.9-Wavelet-Smoothing.md'
- 文献笔记: '05-Basis-Expansions-and-Regularization/Bibliographic-Notes.md'
- 附录-B 样条的计算: '05-Basis-Expansions-and-Regularization/Appendix-Computations-for-B-splines.md'
- 6 核光滑方法:
- 6.0 导言: '06-Kernel-Smoothing-Methods/6.0-Introduction.md'
- 6.1 一维核光滑器: '06-Kernel-Smoothing-Methods/6.1-One-Dimensional-Kernel-Smoothers.md'
- 6.2 选择核的宽度: '06-Kernel-Smoothing-Methods/6.2-Selecting-the-Width-of-the-Kernel.md'
- 6.3 $\IR^p$中的局部回归: '06-Kernel-Smoothing-Methods/6.3-Local-Regression-in-Rp.md'
- 6.4 $\IR^p$中的结构化局部回归模型: '06-Kernel-Smoothing-Methods/6.4-Structured-Local-Regression-Models-in-Rp.md'
- 6.5 局部似然和其他模型: '06-Kernel-Smoothing-Methods/6.5-Local-Likelihood-and-Other-Models.md'
- 6.6 核密度估计和分类: '06-Kernel-Smoothing-Methods/6.6-Kernel-Density-Estimation-and-Classification.md'
- 6.7 径向基函数和核: '06-Kernel-Smoothing-Methods/6.7-Radial-Basis-Functions-and-Kernels.md'
- 6.8 混合模型的密度估计和分类: '06-Kernel-Smoothing-Methods/6.8-Mixture-Models-for-Density-Estimation-and-Classification.md'
- 6.9 计算上的考虑: '06-Kernel-Smoothing-Methods/6.9-Computational-Consoderations.md'
- 文献笔记: '06-Kernel-Smoothing-Methods/Bibliographic-Notes.md'
- 中篇:
- 7 模型评估及选择:
- 7.1 导言: '07-Model-Assessment-and-Selection/7.1-Introduction.md'
- 7.2 偏差,方差和模型复杂度: '07-Model-Assessment-and-Selection/7.2-Bias-Variance-and-Model-Complexity.md'
- 7.3 偏差-方差分解: '07-Model-Assessment-and-Selection/7.3-The-Bias-Variance-Decomposition.md'
- 7.4 测试误差率的 optimism: '07-Model-Assessment-and-Selection/7.4-Optimism-of-the-Training-Error-Rate.md'
- 7.5 样本内预测误差的估计: '07-Model-Assessment-and-Selection/7.5-Estimates-of-In-Sample-Prediction-Error.md'
- 7.6 参数的有效个数: '07-Model-Assessment-and-Selection/7.6-The-Effective-Number-of-Parameters.md'
- 7.7 贝叶斯方法和 BIC: '07-Model-Assessment-and-Selection/7.7-The-Bayesian-Approach-and-BIC.md'
- 7.8 最小描述长度: '07-Model-Assessment-and-Selection/7.8-Minimum-Description-Length.md'
- 7.9 VC 维: '07-Model-Assessment-and-Selection/7.9-Vapnik-Chervonenkis-Dimension.md'
- 7.10 交叉验证: '07-Model-Assessment-and-Selection/7.10-Cross-Validation.md'
- 7.11 自助法: '07-Model-Assessment-and-Selection/7.11-Bootstrap-Methods.md'
- 7.12 条件测试误差或期望测试误差: '07-Model-Assessment-and-Selection/7.12-Conditional-or-Expected-Test-Error.md'
- 文献笔记: '07-Model-Assessment-and-Selection/Bibliographic-Notes.md'
- 8 模型推断和平均:
- 8.1 导言: '08-Model-Inference-and-Averaging/8.1-Introduction.md'
- 8.2 自助法和最大似然法: '08-Model-Inference-and-Averaging/8.2-The-Bootstrap-and-Maximum-Likelihood-Methods.md'
- 8.3 贝叶斯方法: '08-Model-Inference-and-Averaging/8.3-Bayesian-Methods.md'
- 8.4 自助法和贝叶斯推断之间的关系: '08-Model-Inference-and-Averaging/8.4-Relationship-Between-the-Bootstrap-and-Bayesian-Inference.md'
- 8.5 EM 算法: '08-Model-Inference-and-Averaging/8.5-The-EM-Algorithm.md'
- 8.6 从后验分布采样的 MCMC: '08-Model-Inference-and-Averaging/8.6-MCMC-for-Sampling-from-the-Posterior.md'
- 8.7 袋装法: '08-Model-Inference-and-Averaging/8.7-Bagging.md'
- 8.8 模型平均和堆栈: '08-Model-Inference-and-Averaging/8.8-Model-Averaging-and-Stacking.md'
- 8.9 随机搜索: '08-Model-Inference-and-Averaging/8.9-Stochastic-Search.md'
- 文献笔记: '08-Model-Inference-and-Averaging/Bibliographic-Notes.md'
- 9 增广模型,树,以及相关方法:
- 9.0 导言: '09-Additive-Models-Trees-and-Related-Methods/9.0-Introduction.md'
- 9.1 广义可加模型: '09-Additive-Models-Trees-and-Related-Methods/9.1-Generalized-Additive-Models.md'
- 9.2 基于树的方法: '09-Additive-Models-Trees-and-Related-Methods/9.2-Tree-Based-Methods.md'
- 9.3 PRIM: '09-Additive-Models-Trees-and-Related-Methods/9.3-PRIM.md'
- 9.4 多变量自适应回归样条: '09-Additive-Models-Trees-and-Related-Methods/9.4-MARS.md'
- 9.5 专家的分层混合: '09-Additive-Models-Trees-and-Related-Methods/9.5-Hierarchical-Mixtures-of-Experts.md'
- 9.6 缺失数据: '09-Additive-Models-Trees-and-Related-Methods/9.6-Missing-Data.md'
- 9.7 计算上的考虑: '09-Additive-Models-Trees-and-Related-Methods/9.7-Computational-Considerations.md'
- 文献笔记: '09-Additive-Models-Trees-and-Related-Methods/Bibliographic-Notes.md'
- 10 增强和可加树:
- 10.1 boosting 方法: '10-Boosting-and-Additive-Trees/10.1-Boosting-Methods.md'
- 10.2 boosting 拟合可加模型: '10-Boosting-and-Additive-Trees/10.2-Boosting-Fits-an-Additive-Model.md'
- 10.3 向前逐步加性建模: '10-Boosting-and-Additive-Trees/10.3-Forward-Stagewise-Additive-Modeling.md'
- 10.4 指数损失和 AdaBoost: '10-Boosting-and-Additive-Trees/10.4-Exponential-Loss-and-AdaBoost.md'
- 10.5 为什么是指数损失: '10-Boosting-and-Additive-Trees/10.5-Why-Exponential-Loss.md'
- 10.6 损失函数和鲁棒性: '10-Boosting-and-Additive-Trees/10.6-Loss-Functions-and-Robustness.md'
- 10.7 数据挖掘的现货方法: '10-Boosting-and-Additive-Trees/10.7-Off-the-Shelf-Procedures-for-Data-Mining.md'
- 10.8 垃圾邮件的例子: '10-Boosting-and-Additive-Trees/10.8-Spam-Data.md'
- 10.9 boosting 树: '10-Boosting-and-Additive-Trees/10.9-Boosting-Trees.md'
- 10.10 Gradient Boosting 的数值优化: '10-Boosting-and-Additive-Trees/10.10-Numerical-Optimization-via-Gradient-Boosting.md'
- 10.11 大小合适的 boosting 树: '10-Boosting-and-Additive-Trees/10.11-Right-Sized-Trees-for-Boosting.md'
- 10.12 正则化: '10-Boosting-and-Additive-Trees/10.12-Regularization.md'
- 10.13 解释性: '10-Boosting-and-Additive-Trees/10.13-Interpretation.md'
- 10.14 例子: '10-Boosting-and-Additive-Trees/10.14-Illustrations.md'
- 文献笔记: '10-Boosting-and-Additive-Trees/Bibliographic-Notes.md'
- 11 神经网络:
- 11.1 导言: '11-Neural-Networks/11.1-Introduction.md'
- 11.2 投影寻踪回归: '11-Neural-Networks/11.2-Projection-Pursuit-Regression.md'
- 11.3 神经网络: '11-Neural-Networks/11.3-Neural-Networks.md'
- 11.4 拟合神经网络: '11-Neural-Networks/11.4-Fitting-Neural-Networks.md'
- 11.5 训练神经网络的一些问题: '11-Neural-Networks/11.5-Some-Issues-in-Training-Neural-Networks.md'
- 11.6 模拟数据的例子: '11-Neural-Networks/11.6-Example-of-Simulated-Data.md'
- 11.7 邮编数字的例子: '11-Neural-Networks/11.7-Example-ZIP-Code-Data.md'
- 文献笔记: '11-Neural-Networks/Bibliographic-Notes.md'
- 12 支持向量机和灵活的判别方法:
- 12.1 导言: '12-Support-Vector-Machines-and-Flexible-Discriminants/12.1-Introduction.md'
- 12.2 支持向量分类器: '12-Support-Vector-Machines-and-Flexible-Discriminants/12.2-The-Support-Vector-Classifier.md'
- 12.3 支持向量机和核: '12-Support-Vector-Machines-and-Flexible-Discriminants/12.3-Support-Vector-Machines-and-Kernels.md'
- 12.4 广义线性判别分析: '12-Support-Vector-Machines-and-Flexible-Discriminants/12.4-Generalizing-Linear-Discriminant-Analysis.md'
- 12.5 FDA: '12-Support-Vector-Machines-and-Flexible-Discriminants/12.5-Flexible-Disciminant-Analysis.md'
- 12.6 PDA: '12-Support-Vector-Machines-and-Flexible-Discriminants/12.6-Penalized-Discriminant-Analysis.md'
- 12.7 混合判别分析: '12-Support-Vector-Machines-and-Flexible-Discriminants/12.7-Mixture-Discriminant-Analysis.md'
- 计算上的考虑: '12-Support-Vector-Machines-and-Flexible-Discriminants/Computational-Considerations.md'
- 文献笔记: '12-Support-Vector-Machines-and-Flexible-Discriminants/Bibliographic-Notes.md'
- 下篇:
- 13 原型方法和最近邻:
- 13.1 导言: '13-Prototype-Methods-and-Nearest-Neighbors/13.1-Introduction.md'
- 13.2 原型方法: '13-Prototype-Methods-and-Nearest-Neighbors/13.2-Prototype-Methods.md'
- 13.3 k 最近邻分类器: '13-Prototype-Methods-and-Nearest-Neighbors/13.3-k-Nearest-Neighbor-Classifiers.md'
- 13.4 自适应的最近邻方法: '13-Prototype-Methods-and-Nearest-Neighbors/13.4-Adaptive-Nearest-Neighbor-Methods.md'
- 13.5 计算上的考虑: '13-Prototype-Methods-and-Nearest-Neighbors/13.5-Computational-Considerations.md'
- 文献笔记: '13-Prototype-Methods-and-Nearest-Neighbors/Bibliographic-Notes.md'
- 14 非监督学习:
- 14.1 导言: '14-Unsupervised-Learning/14.1-Introduction.md'
- 14.2 关联规则: '14-Unsupervised-Learning/14.2-Association-Rules.md'
- 14.3 聚类分析: '14-Unsupervised-Learning/14.3-Cluster-Analysis.md'
- 14.4 自组织图: '14-Unsupervised-Learning/14.4-Self-Organizing-Maps.md'
- 14.5 主成分,主曲线以及主曲面: '14-Unsupervised-Learning/14.5-Principal-Components-Curves-and-Surfaces.md'
- 14.6 非负矩阵分解: '14-Unsupervised-Learning/14.6-Non-negative-Matrix-Factorization.md'
- 14.7 独立成分分析和探索投影寻踪: '14-Unsupervised-Learning/14.7-Independent-Component-Analysis-and-Exploratory-Projection-Pursuit.md'
- 14.8 多维缩放: '14-Unsupervised-Learning/14.8-Multidimensional-Scaling.md'
- 14.9 非线性降维和局部多维缩放: '14-Unsupervised-Learning/14.9-Nonlinear-Dimension-Reduction-and-Local-Multidimensional-Scaling.md'
- 14.10 谷歌的 PageRank 算法: '14-Unsupervised-Learning/14.10-The-Google-PageRank-Algorithm.md'
- 文献笔记: '14-Unsupervised-Learning/Bibliographic-Notes.md'
- 15 随机森林:
- 15.1 导言: '15-Random-Forests/15.1-Introduction.md'
- 15.2 随机森林的定义: '15-Random-Forests/15.2-Definition-of-Random-Forests.md'
- 15.3 随机森林的细节: '15-Random-Forests/15.3-Details-of-Random-Forests.md'
- 15.4 随机森林的分析: '15-Random-Forests/15.4-Analysis-of-Random-Forests.md'
- 文献笔记: '15-Random-Forests/Bibliographic-Notes.md'
- 16 集成学习:
- 16.1 导言: '16-Ensemble-Learning/16.1-Introduction.md'
- 16.2 增强和正则路径: '16-Ensemble-Learning/16.2-Boosting-and-Regularization-Paths.md'
- 16.3 学习集成: '16-Ensemble-Learning/16.3-Learning-Ensembles.md'
- 文献笔记: '16-Ensemble-Learning/Bibliographic-Notes.md'
- 17 无向图模型:
- 17.1 导言: '17-Undirected-Graphical-Models/17.1-Introduction.md'
- 17.2 马尔科夫图及其性质: '17-Undirected-Graphical-Models/17.2-Markov-Graphs-and-Their-Properties.md'
- 17.3 连续变量的无向图模型: '17-Undirected-Graphical-Models/17.3-Undirected-Graphical-Models-for-Continuous-Variables.md'
- 17.4 离散变量的无向图模型: '17-Undirected-Graphical-Models/17.4-Undirected-Graphical-Models-for-Discrete-Variables.md'
- 文献笔记: '17-Undirected-Graphical-Models/Bibliographic-Notes.md'
- 18 高维问题:
- 18.1 当 p 大于 N: '18-High-Dimensional-Problems/18.1-When-p-is-Much-Bigger-than-N.md'
- 18.2 对角线性判别分析和最近收缩重心: '18-High-Dimensional-Problems/18.2-Diagonal-Linear-Discriminant-Analysis-and-Nearest-Shrunken-Centroids.md'
- 18.3 二次正则的线性分类器: '18-High-Dimensional-Problems/18.3-Linear-Classifiers-with-Quadratic-Regularization.md'
- 18.4 一次正则的线性分类器: '18-High-Dimensional-Problems/18.4-Linear-Classifiers-with-L1-Regularization.md'
- 18.5 当特征不可用时的分类: '18-High-Dimensional-Problems/18.5-Classification-When-Features-are-Unavailable.md'
- 18.6 有监督的主成分: '18-High-Dimensional-Problems/18.6-High-Dimensional-Regression.md'
- 18.7 特征评估和多重检验问题: '18-High-Dimensional-Problems/18.7-Feature-Assessment-and-the-Multiple-Testing-Problem.md'
- 文献笔记: '18-High-Dimensional-Problems/Bioliographic-Notes.md'
- 个人笔记:
- 习题解答:
- 索引: 'notes/manual.md'
- 习题 Ex. 17.7: 'notes/Graph/ex-17-7.md'
- 笔记列表:
- 列表: 'notes/ipynb/list.md'
- 模拟实验:
- 模拟 Fig. 3.18: 'notes/linear-reg/sim-3-18.md'
- 模拟 Fig. 4.3: 'notes/LDA/sim-4-3.md'
- 模拟 Fig. 4.5: 'notes/LDA/sim-4-5.md'
- 模拟 Fig. 5.9: 'notes/spline/sim-5-9.md'
- 模拟 Fig. 7.3: 'notes/ModelSelection/sim7_3.md'
- 模拟 Fig. 7.7: 'notes/ModelSelection/sim7_7.md'
- 模拟 Fig. 7.9: 'notes/ModelSelection/sim7_9.md'
- 模拟 Fig. 13.5: 'notes/Prototype/sim13_5.md'
- 模拟 Fig. 14.42: 'notes/ICA/sim14_42.md'
- 模拟 Fig. 18.1: 'notes/HighDim/sim18_1.md'
- 模拟 Eq. 10.2: 'notes/boosting/sim-eq-10-2.md'
- 模拟 Tab. 12.2: 'notes/SVM/skin-of-the-orange.md'
- 模拟 Fig. 9.7: 'notes/tree/sim-9-7.md'
- 算法实现:
- 算法 Alg. 17.1: 'notes/Graph/alg-17-1.md'
- 比较总结:
- 估计高斯混合模型参数的三种方式: 'notes/Mixture-Gaussian.md'
- SVM 处理线性和非线性类别边界: 'notes/SVM/e1071.md'
- 损失函数的梯度总结及 Julia 实现: 'notes/boosting/summary-loss-function.md'
- R 语言中的多种决策树算法实现: 'notes/tree/various-classification-methods.md'
- R 语言处理缺失数据: 'notes/missing-data/missing-data.md'
site_name: 'ESL CN'
site_description: 'The Elements of Statistical Learning(ESL) 的中文笔记、代码实现以及习题解答'
#site_url: https://szcf-weiya.github.io/ESL-CN/
site_author: szcf-weiya
site_url: https://esl.hohoweiya.xyz
repo_name: 'szcf-weiya/ESL-CN'
repo_url: 'https://github.com/szcf-weiya/ESL-CN'
edit_uri: ""
#url_en: https://stats.hohoweiya.xyz
#url_cn: https://blog.hohoweiya.xyz
#website_en: Blog
#website_cn: 随笔
copyright: 'Copyright © 2016-2019 weiya'
markdown_extensions:
- admonition
- smarty
- sane_lists
- mdx_math
- codehilite
- footnotes
- meta
- pymdownx.critic
- pymdownx.emoji:
emoji_generator: !!python/name:pymdownx.emoji.to_svg
- toc:
permalink: true
extra_css:
- css/misc.css
- css/iDisqus.min.css
# - css/newsprint.css
# - css/admonition_fix.css
extra:
disqus: 'esl-hohoweiya-xyz'
social:
- type: 'github'
link: 'https://github.com/szcf-weiya'
- type: 'code'
link: 'https://tech.hohoweiya.xyz'
- type: 'home'
link: 'https://hohoweiya.xyz'
- type: 'rss'
link: 'https://blog.hohoweiya.xyz'
- type: 'linkedin'
link: 'https://www.linkedin.com/in/szcfweiya/'
- type: 'envelope'
link: 'mailto:[email protected]'
# in order to avoid loading search.js and require.js
# ~~replace default extra_javascript with extra_javascripts~~
# disable extra_javascript
#extra_javascript:
# - js/mathjax.js
# - 'https://cdn.bootcss.com/mathjax/2.7.2-beta.0/MathJax.js?config=TeX-AMS-MML_HTMLorMML'
# - js/baiduzhanzhang.js
#docs_dir: 'docs'
extra_templates:
- sitemap.xml
theme:
name: null
custom_dir: material
language: 'en'
feature:
tabs: true
logo: 'img/logo_white_24x24.svg'
favicon: 'img/favicon.ico'
palette:
primary: 'black'
accent: 'red'
font: false
# custom_dir: yeti
#theme_dir: 'yeti'
# Google Analytics
google_analytics:
- 'UA-85046550-1'
- 'auto'
use_directory_urls: false
enable_search: true
#plugins: []