首页
网站开发
桌面应用
管理软件
微信开发
App开发
嵌入式软件
工具软件
数据采集与分析
其他
首页
>
> 详细
program编程讲解、辅导Java,C++程序、讲解Python语言编程 讲解留学生Processing|讲解Python程序
项目预算:
开发周期:
发布时间:
要求地区:
1. [15 Marks] Repeat the advertisement exercise with the following changes.
(a) The data is generated via the following data generation mechanism. Xi ∼ U(0, 1) for
i ∈ {1, 2, 3}; here U(0, 1) stands for the continuous uniform distribution over the [0, 1] set.
However, we require that X1 + X2 + X3 = 1, that is, the explanatory variables stand for
a percentage of the budget.
(b) In addition, the model for y is as follow:
Y = 0.5X1 + 3X2 + 5X3 + 5X2X3 + 2X1X2X3 + W, (1)
where W ∼ U(0, 1).
Similar to the original example, generate train and test sets of size N = 1000. Fit the linear regression
and the random forest models to the data. For the linear regression, make an inference
about the coefficients, specifically, comment about the contributions of different advertisement
types to sales. Use the linear model and the RF (with 500 trees), to make a prediction (using
the test set), and report the corresponding mean squared errors.
When constructing datasets, please use “1” and “2” seeds for the train and the test sets,
respectively.
2. [10 Marks] Consider the following variant of the cross-validation procedure.
(i) Using the available data, find a subset of “good” predictors that show correlation with
the response variable.
(ii) Using these predictors, construct a model (for regression or classification).
(iii) Use cross-validation to estimate the model prediction error.
1
Is this a good method? Do you expect to obtain the true prediction error? Explain your
answer.
3. [5 Marks] Suppose that we observe X1, . . . , Xn ∼ F. We model F as a normal distribution
with mean µ and standard deviation of σ. For this problem, determine the hypothesis class
H = {f(x, θ); θ ∈ Θ}.
and state explicitly what is θ and Θ.
4. [15 Marks] Let H be a class of binary classifiers over a set Z. Let D be an unknown distribution
over X , and let g be a target hypothesis in H. F Show that the expected value of LossT (g)
over the choice of T equals LossD(g), namely,
ET LossD(g) = LossD(g).
5. [15 Marks (see details below)] Consider the following dataset.
Now, suppose that we would like to consider two models.
Model1 : y = β1x1 + ε,
and
Model2 : y = β0 + β1x1 + ε,
where ε ∼ N(0, 1). That is, we consider two linear models with and without the intercept.
(a) [5 Marks)] Fit these models tot the data and write the corresponding coefficients. Namely,
fill the following table:
Model β0 β1
Model1 0
Model2
(b) [5 Marks)] Consider the squared error loss, the absolute error loss, and the L1.5 loss. Find
the average loss for each model. Namely, fill the following table:
Model squared error loss absolute error loss L1.5 loss
Model1
Model2
(c) [5 Marks)] Draw a conclusion from the obtained results.
6. [30 Marks (see details below)] Consider the Hitters data-set (given in Hitters.csv). Our
objective is to predict a hitter’s salary via linear models.
(a) [5 Marks)] Load the data-set and replace all categorical values with numbers. (You can
use the LabelEncoder object in Python).
2
(b) [5 Marks)] Generally, it is better to use OneHotEncoder when dealing with categorical
variables. Justify the usage of LabelEncoder in (a).
(c) [20 Marks)] Fit linear regression and report 10-Fold Cross-Validation mean squared error. (2)
Suppose that a = 1, b = 2, and c = 3, and write a Crude Monte Carlo algorithm for the
estimation of ` using N = 10000 sample size. Deliver the 95% confidence interval. Compare
the obtained estimation with the true value ` as given in (2).
3
软件开发、广告设计客服
QQ:99515681
邮箱:99515681@qq.com
工作时间:8:00-23:00
微信:codinghelp
热点项目
更多
代做 program、代写 c++设计程...
2024-12-23
comp2012j 代写、代做 java 设...
2024-12-23
代做 data 编程、代写 python/...
2024-12-23
代做en.553.413-613 applied s...
2024-12-23
代做steady-state analvsis代做...
2024-12-23
代写photo essay of a deciduo...
2024-12-23
代写gpa analyzer调试c/c++语言
2024-12-23
代做comp 330 (fall 2024): as...
2024-12-23
代写pstat 160a fall 2024 - a...
2024-12-23
代做pstat 160a: stochastic p...
2024-12-23
代做7ssgn110 environmental d...
2024-12-23
代做compsci 4039 programming...
2024-12-23
代做lab exercise 8: dictiona...
2024-12-23
热点标签
mktg2509
csci 2600
38170
lng302
csse3010
phas3226
77938
arch1162
engn4536/engn6536
acx5903
comp151101
phl245
cse12
comp9312
stat3016/6016
phas0038
comp2140
6qqmb312
xjco3011
rest0005
ematm0051
5qqmn219
lubs5062m
eee8155
cege0100
eap033
artd1109
mat246
etc3430
ecmm462
mis102
inft6800
ddes9903
comp6521
comp9517
comp3331/9331
comp4337
comp6008
comp9414
bu.231.790.81
man00150m
csb352h
math1041
eengm4100
isys1002
08
6057cem
mktg3504
mthm036
mtrx1701
mth3241
eeee3086
cmp-7038b
cmp-7000a
ints4010
econ2151
infs5710
fins5516
fin3309
fins5510
gsoe9340
math2007
math2036
soee5010
mark3088
infs3605
elec9714
comp2271
ma214
comp2211
infs3604
600426
sit254
acct3091
bbt405
msin0116
com107/com113
mark5826
sit120
comp9021
eco2101
eeen40700
cs253
ece3114
ecmm447
chns3000
math377
itd102
comp9444
comp(2041|9044)
econ0060
econ7230
mgt001371
ecs-323
cs6250
mgdi60012
mdia2012
comm221001
comm5000
ma1008
engl642
econ241
com333
math367
mis201
nbs-7041x
meek16104
econ2003
comm1190
mbas902
comp-1027
dpst1091
comp7315
eppd1033
m06
ee3025
msci231
bb113/bbs1063
fc709
comp3425
comp9417
econ42915
cb9101
math1102e
chme0017
fc307
mkt60104
5522usst
litr1-uc6201.200
ee1102
cosc2803
math39512
omp9727
int2067/int5051
bsb151
mgt253
fc021
babs2202
mis2002s
phya21
18-213
cege0012
mdia1002
math38032
mech5125
07
cisc102
mgx3110
cs240
11175
fin3020s
eco3420
ictten622
comp9727
cpt111
de114102d
mgm320h5s
bafi1019
math21112
efim20036
mn-3503
fins5568
110.807
bcpm000028
info6030
bma0092
bcpm0054
math20212
ce335
cs365
cenv6141
ftec5580
math2010
ec3450
comm1170
ecmt1010
csci-ua.0480-003
econ12-200
ib3960
ectb60h3f
cs247—assignment
tk3163
ics3u
ib3j80
comp20008
comp9334
eppd1063
acct2343
cct109
isys1055/3412
math350-real
math2014
eec180
stat141b
econ2101
msinm014/msing014/msing014b
fit2004
comp643
bu1002
cm2030
联系我们
- QQ: 9951568
© 2021
www.rj363.com
软件定制开发网!