国产人妻人伦精品_欧美一区二区三区图_亚洲欧洲久久_日韩美女av在线免费观看

合肥生活安徽新聞合肥交通合肥房產(chǎn)生活服務(wù)合肥教育合肥招聘合肥旅游文化藝術(shù)合肥美食合肥地圖合肥社保合肥醫(yī)院企業(yè)服務(wù)合肥法律

代寫COMM3501、python設(shè)計(jì)程序代做

時(shí)間:2024-08-08  來源:合肥網(wǎng)hfw.cc  作者:hfw.cc 我要糾錯(cuò)



UNSW Business School
COMM3501 Quantitative Business Analytics

A4 Individual Assignment (40%)

Due date: Monday 5th August 2024, 12:00 PM (noon) week 11

1. Assignment overview
In this assessment, you will analyse a dataset with an emphasis on practical business analytics and
develop authentic outputs. The task aims to enhance your problem-solving skills in real-world
scenarios. It is also intended to develop your skills in research, critical thinking and problem
solving, your data analysis and programming skills, and your ability to communicate your ideas and
solutions concisely and coherently.

2. Assignment scenario
You are an analyst at a data analytics consulting firm. Your manager has tasked you with providing
a report to an American client. The client is a major U.S. wireless telecommunications company
which provides cellular telephone service. They require assistance in developing a statistical model
to predict customer churn, establish a target customer profile for implementing a proactive churn-
management program, and rolling the solution out to their customer-facing call centres.
These days, the telecommunications industry faces fierce competition in satisfying its customers.
Churn is a marketing term, referring to a current customer deciding to take their business
elsewhere  in the current context, switching from one mobile service provider to another. As with
many other sectors, churn is an important issue for the wireless telecommunications industry. For
this client, the role of the desired churn model is not only to accurately predict customer churn,
but also to understand customer behaviours.

3. Assignment details
3.1. Task details
Your main tasks will involve: data manipulation and cleaning; statistical modelling; writing a
technical report. Your client also wants a non-technical description of the characteristics of
customers that churned, to assist in the development of a risk-management strategy, i.e., a
proactive churn-management program.
In your report, your manager wants you to include: some details on your data manipulation,
cleaning, and descriptive analysis; a brief summary and comparison of the models you fitted; a

detailed description of your selected model/s and interpretation of the results; your main findings,
recommendations and conclusions.
The client is familiar with machine learning. All your modelling results should be included, mostly
in an appendix to the report.
In addition, among the 10,000 customers in the eval_data.csv evaluation dataset, you must
identify 3000 customers which you believe are most likely to churn.
See the submission details section and marking criteria section for more information.

3.2. Data Description
The data provides details of 30,000 customers in the training dataset, and 10,000 customers in the
evaluation dataset:
1. training_data.csv
2. eval_data.csv
The datasets can be downloaded from the Moodle website in the A4 Individual Project  C A4
Datasets section.
For each of the observations in the training dataset, there is information on 44 attributes
describing the customer care service details, customer demography and personal details, etc.
These are described below.
Similar, but not identical, datasets are provided here. You may also wish to have a look at the
following analysis based on the Kaggle datasets to give you an idea: Churn Prediction (weblink).
This analysis is just a brief example and is not based on your datasets. Different and more variables
may be of interest for your analysis. Extra readings are given in the Resources section.

3.2.1. training_data.csv (Training dataset)
This dataset provides insights about the customers and whether they are churned customers.
Variable Name Description
CustomerID A unique ID assigned to each customer/subscriber
Churn Is churned? (categorical:   no  ,  yes  )
MonthlyRevenue Mean monthly revenue for the company
MonthlyMinutes Mean monthly minutes of use
TotalRecurringCharge Mean total recurring charges (recurring billing)
OverageMinutes Mean overage minutes of use
RoamingCalls Mean number of roaming calls
DroppedCalls Mean number of dropped voice calls

BlockedCalls Mean number of blocked voice calls
UnansweredCalls Mean number of unanswered voice calls
CustomerCareCalls Mean number of customer care calls
ThreewayCalls Mean number of three-way calls
OutboundCalls Mean number of outbound voice calls
InboundCalls Mean number of inbound voice calls
DroppedBlockedCalls Mean number of dropped or blocked calls
CallForwardingCalls Mean number of call forwarding calls
CallWaitingCalls Mean number of call waiting calls
MonthsInService Months in Service
ActiveSubs Number of Active Subscriptions
ServiceArea Communications Service Area
Handsets Number of Handsets Issued
CurrentEquipmentDays Number of days of the current equipment
AgeHH1 Age of first Household member
AgeHH2 Age of second Household member
ChildrenInHH Presence of children in Household (yes or no)
HandsetRefurbished Handset is refurbished (yes or no)
HandsetWebCapable Handset is web capable (yes or no)
TruckOwner Subscriber owns a truck (yes or no)
RVOwner Subscriber owns a recreational vehicle (yes or no)
BuysViaMailOrder Subscriber Buys via mail order (yes or no)
RespondsToMailOffers Subscriber responds to mail offers (yes or no)
OptOutMailings Subscriber opted out mailings option (yes or no)
OwnsComputer Subscriber owns a computer (yes or no)
HasCreditCard Subscriber has a credit card (yes or no)
RetentionCalls Number of calls previously made to retention team
RetentionOffersAccepted Number of previous retention offers accepted
ReferralsMadeBySubscriber Number of referrals made by subscriber
IncomeGroup Income group
OwnsMotorcycle Subscriber owns a motorcycle (yes or no)
MadeCallToRetentionTeam Customer has made call to retention team (yes or no)
CreditRating Credit rating category
PrizmCode Living area
Occupation Occupation category
MaritalStatus Married (yes or no or unknown)

3.2.2. eval_data.csv (Evaluation dataset)
The evaluation dataset comprises 10,000 current customers. From these 10,000 customers, select
3000 which you believe are most likely to churn. This evaluation dataset has the same format as
the training dataset but doesn  t include the column Churn. The true values for the column Churn
will be released after the due date of the assignment.

3.3. Software
You may choose which software package or program to use, e.g., R or python. The code enabling
you to perform most of the computing can be found in the course learning activities.

3.4. Resources
- Extra information on the original dataset and on the context can be found here: link 1 and
link 2
- Data manipulation with R with the   dplyr   package (weblink)
- Tidy data in R (weblink)
- Exploratory Data Analysis with R (weblink)
- Data visualisation in R with ggplot2 for fancy plots (weblink)
- He and Garcia (2009), for strategies for dealing with imbalanced data in classification
problems
- Yadav and Roychoudhury (2018), for some strategies to deal with missing attribute values in
R (available on Moodle)
- If you are interested in using R Markdown, here is a guide for creating PDF documents
(weblink)
- For any code-related questions, google.com or stackoverflow.com are pretty helpful!

3.5. Marking criteria
You will be assessed against the following criteria:
1. Data manipulation, cleaning, and descriptive analysis
2. Modelling
3. Recommendations and discussion
4. Report writing
5. Predictive accuracy
The mark allocation and details for each marking criteria are given below and in the rubric. The
materials you submit should be your own. Familiarise yourself with the UNSW policies for
plagiarism before submitting.

3.5.1. Criteria **3
There are potentially multiple valid approaches to this task, so you must choose an approach that
is both justifiable and justified.
You may also wish to engage in extra research beyond the course content. Please feel free to do
so. Although the marks for each component of the assignment are capped, innovations are
encouraged.
Any assumptions must be clearly identified and justified, if used. Sufficient details, e.g.,
calculations and results, must be provided. Include an appendix to the report for non-essential but
useful results; however, the appendix will not be directly assessed. Ensure that the body of your
report is self-contained and addresses all marking criteria.

3.5.2. Criteria 4
Communication of quantitative results in a concise and easy-to-understand manner is a skill that is
vital in practice. As such, marks will be given for report writing. To maximize your marks for this
component, you may wish to consider issues such as: table size/readability, figure
axes/formatting, text readability, grammar/spelling, page layout, and referencing of external
sources.
Include a brief introduction section in your report.
A maximum page limit of 8 pages is applicable to the main body of the report. This limit includes
tables and graphs, but excludes the cover page, table of contents, references, and any appendices.
There is no limit to the length of the appendix. Exceeding the page limit will attract a proportional
penalty to the overall assignment mark. Your report must be a self-contained document (i.e., not
multiple files), with all pages in portrait format.
Consider how the overall look, feel and readability of your document is affected by choices like
margin size, line and paragraph spacing, typeface/font, and text size. If in doubt, don  t stray too far
from the defaults in your word processor / typesetting program, or use something like the
following settings: margins of 2.54cm for each edge, 1.15 line spacing, Calibri size 11 text.

3.5.3. Criteria 5
Provide a comma-separated values (CSV) file following the format in the sample file provided on
Moodle (selected_customers_example_for_submission.csv), predicting the 3000
(out of 10,000) customers in the evaluation dataset which you believe are the most likely to churn.
See the submission section for details.
The accuracy of your predictions on the evaluation data will have a (minor) impact on your mark.
The marks you get for the accuracy criterion will be given by the following formula.
   No. churned customers identified, if No. churned customers identified <
5 +
5
?
(No. churned customers identified ? ), if No. churned customers identified    ,

where we will take as the maximum number of churned customers correctly identified by a
student in the class, and as the number of churned customers you would correctly identify on
average if your prediction algorithm were to just return a pure random sample of the 10,000
customers in the evaluation dataset. Therefore, if your prediction accuracy is below that expected
by random sampling, your mark for this component will scale from 0 to 5 based on how many
predictions were correct. If your prediction accuracy is above that expected by random sampling,
then your mark is scaled from 5 to 10 based on the accuracy.

4. Assignment submissions
Your final submission should include:
1) A technical report in .docx or .pdf format
2) Your sample of predicted churn customers in a CSV file named
selected_customers_yourStudentzID.csv *
3) Reproducible codes with brief instructions on how to use them, e.g., R script/s with
comments (this item will not be assessed).

Upload your final submission using the submission links on Moodle. Check your report displays
properly on-screen once it is submitted.

* If your zID were z1234567, you would call the file selected_customers_z1234567.csv

5. References
He, Haibo, and Edwardo A. Garcia. 2009.   Learning from imbalanced data.   IEEE Transactions on
Knowledge and Data Engineering 21 (9): 1263 C84. https://doi.org/10.1109/TKDE.2008.239.
Yadav, Madan Lal, and Basav Roychoudhury. 2018.   Handling missing values: A study of popular
imputation packages in R.   Knowledge-Based Systems 160 (April): 104 C18.
https://doi.org/10.1016/j.knosys. 2018.06.012.

請(qǐng)加QQ:99515681  郵箱:99515681@qq.com   WX:codinghelp





 

掃一掃在手機(jī)打開當(dāng)前頁
  • 上一篇:代做COMU2170、代寫Python/c++設(shè)計(jì)編程
  • 下一篇:ECON0024代寫、代做C++,Python編程設(shè)計(jì)
  • 無相關(guān)信息
    合肥生活資訊

    合肥圖文信息
    流體仿真外包多少錢_專業(yè)CFD分析代做_友商科技CAE仿真
    流體仿真外包多少錢_專業(yè)CFD分析代做_友商科
    CAE仿真分析代做公司 CFD流體仿真服務(wù) 管路流場仿真外包
    CAE仿真分析代做公司 CFD流體仿真服務(wù) 管路
    流體CFD仿真分析_代做咨詢服務(wù)_Fluent 仿真技術(shù)服務(wù)
    流體CFD仿真分析_代做咨詢服務(wù)_Fluent 仿真
    結(jié)構(gòu)仿真分析服務(wù)_CAE代做咨詢外包_剛強(qiáng)度疲勞振動(dòng)
    結(jié)構(gòu)仿真分析服務(wù)_CAE代做咨詢外包_剛強(qiáng)度疲
    流體cfd仿真分析服務(wù) 7類仿真分析代做服務(wù)40個(gè)行業(yè)
    流體cfd仿真分析服務(wù) 7類仿真分析代做服務(wù)4
    超全面的拼多多電商運(yùn)營技巧,多多開團(tuán)助手,多多出評(píng)軟件徽y1698861
    超全面的拼多多電商運(yùn)營技巧,多多開團(tuán)助手
    CAE有限元仿真分析團(tuán)隊(duì),2026仿真代做咨詢服務(wù)平臺(tái)
    CAE有限元仿真分析團(tuán)隊(duì),2026仿真代做咨詢服
    釘釘簽到打卡位置修改神器,2026怎么修改定位在范圍內(nèi)
    釘釘簽到打卡位置修改神器,2026怎么修改定
  • 短信驗(yàn)證碼 豆包網(wǎng)頁版入口 破天一劍 目錄網(wǎng) 排行網(wǎng)

    關(guān)于我們 | 打賞支持 | 廣告服務(wù) | 聯(lián)系我們 | 網(wǎng)站地圖 | 免責(zé)聲明 | 幫助中心 | 友情鏈接 |

    Copyright © 2025 hfw.cc Inc. All Rights Reserved. 合肥網(wǎng) 版權(quán)所有
    ICP備06013414號(hào)-3 公安備 42010502001045

    国产人妻人伦精品_欧美一区二区三区图_亚洲欧洲久久_日韩美女av在线免费观看
    蜜月aⅴ免费一区二区三区| 午夜精品短视频| 国产精品ⅴa在线观看h| 国产精品裸体一区二区三区| 一本大道熟女人妻中文字幕在线 | 亚洲a∨一区二区三区| 男女猛烈激情xx00免费视频| 国产成人综合一区| 亚洲综合第一页| 国产欧美123| 欧美激情一级精品国产| 国产自偷自偷免费一区| 国产成人啪精品视频免费网| 日韩视频在线播放| 97精品久久久| 一区二区精品在线| 国产精品女人网站| 日韩视频 中文字幕| 欧美精品123| 午夜免费电影一区在线观看| 亚洲国产精品一区二区第一页| 久久av一区二区三区漫画| 青青草综合在线| 手机在线观看国产精品| 日韩久久不卡| 午夜精品久久久久久久男人的天堂| 国产欧美va欧美va香蕉在线| 成人福利网站在线观看| 欧美一区二区三区艳史| 亚洲va男人天堂| 久久综合久久久| 欧美 日韩 国产精品| 九九视频直播综合网| 久久视频这里有精品| 成人免费观看a| 99久久伊人精品影院| 久久综合伊人77777麻豆| 国内精品国产三级国产在线专 | 亚洲午夜精品久久久中文影院av| 国产美女扒开尿口久久久| 色综合视频网站| 国产日本欧美视频| 亚洲最新在线| 久久免费视频在线| 人妻无码视频一区二区三区| 国产精品露脸自拍| 国产精品夜夜夜爽张柏芝 | 国产在线视频2019最新视频| 久久久久久国产精品美女| 国产欧美亚洲精品| 岛国视频一区免费观看| 久久久免费av| 日韩精品极品视频在线观看免费| 色妞久久福利网| 黄色片一级视频| 欧美成在线观看| 不卡一区二区三区视频| 少妇高潮流白浆| 国产精品三区四区| 97久久国产精品| 久久国产天堂福利天堂| 日本一区二区三区视频免费看 | 久久精品国产清自在天天线| 狠狠精品干练久久久无码中文字幕| xvideos亚洲| 韩国三级日本三级少妇99| 国产日韩欧美一二三区| 国产最新免费视频| 99久久综合狠狠综合久久止| 精品人妻少妇一区二区| 国产日韩欧美综合精品| 久久综合一区| 美女啪啪无遮挡免费久久网站| 午夜一区二区三区| 欧美在线观看视频| 亚洲AV无码成人精品一区| 日韩精品欧美在线| 精品国产区在线| 国产成人精品电影| 国内一区二区在线视频观看| 亚洲精品乱码久久久久久蜜桃91| 久久精品福利视频| 99www免费人成精品| 欧美日韩一区二区视频在线| 亚洲一区中文字幕在线观看| 久久久999国产精品| 91精品国产色综合| 国产日韩精品一区观看| 日韩精品一区二区三区不卡| 亚洲综合中文字幕在线| 国产精品日韩av| 久久精品国产理论片免费| 国产女主播一区二区| 欧美精品一区在线| 午夜精品视频在线观看一区二区| 欧美伦理91i| 北条麻妃久久精品| 国产av人人夜夜澡人人爽麻豆| 国产欧美日韩精品丝袜高跟鞋 | 日韩av资源在线| 亚洲在线视频一区二区| 久久在线精品视频| 久久精品国亚洲| 久久国产精品免费观看| 97国产精品免费视频| 国产欧美在线播放| 国产制服91一区二区三区制服| 日韩国产精品一区二区| 午夜伦理精品一区| 国产精品久久久久久久久久99| 天天综合五月天| 国产中文字幕在线免费观看| 99电影网电视剧在线观看| 中国丰满熟妇xxxx性| 国产精品一二三在线| 日本一区二区三不卡| 国产精品久久久久久久午夜| 欧美 日韩 国产一区| 日本一区二区三区在线视频| 激情五月开心婷婷| 欧美亚洲丝袜| 日韩欧美视频第二区| 亚洲精品永久www嫩草| 在线精品日韩| 中国丰满熟妇xxxx性| 欧美精品激情视频| 精品久久sese| 美女福利视频一区| 欧美日韩爱爱视频| 精品国产乱码久久久久久郑州公司| 国产精品久久久久久久7电影| 国产精品免费久久久久影院| 久久天天躁狠狠躁老女人| 久久天天躁狠狠躁夜夜爽蜜月| 久久久久久美女| 国产成人久久精品| 国产精品啪啪啪视频| 色琪琪综合男人的天堂aⅴ视频 | 久久五月情影视| 欧美成人四级hd版| 在线观看日韩羞羞视频| 亚洲一区二区三区在线免费观看 | 日本一区二区三区视频在线播放 | 国产日韩亚洲欧美| 99视频免费观看蜜桃视频| 91国内在线视频| 久久99精品久久久久久三级| 深夜成人在线观看| 国产精品第12页| 亚洲淫片在线视频| 欧美一区二区三区精美影视| 欧美做受777cos| 国产一区二区丝袜| 国产欧美精品aaaaaa片| 91干在线观看| 色黄久久久久久| 精品国产免费久久久久久尖叫| 亚洲一区二区三区在线观看视频| 欧美一级特黄aaaaaa在线看片| 欧美专区在线观看| 国产私拍一区| 久久免费视频2| 国产精品老女人视频| 一区二区免费电影| 欧美又大又粗又长| 成人黄色一区二区| 久久久久久久久久久av| 国产精品高清在线观看| 一级做a爰片久久| 日韩国产欧美亚洲| 国产乱淫av片杨贵妃| 久久久久国产精品熟女影院 | 日本免费不卡一区二区| 韩日午夜在线资源一区二区| 97精品在线观看| 国产精品私拍pans大尺度在线| 亚洲最大福利网| 精品欧美一区二区三区久久久| aaa级精品久久久国产片| 日韩色av导航| 亚洲影视九九影院在线观看| 欧美日韩一区二区在线免费观看| 国产另类第一区| 久久国产手机看片| 色综合91久久精品中文字幕| 日韩视频免费播放| 俄罗斯精品一区二区三区| 久久久精品久久久久| 亚洲中文字幕久久精品无码喷水| 欧美亚洲激情视频| 久久久久久a亚洲欧洲aⅴ| 九九精品视频在线观看| 日韩精品一区二区三区久久| 9a蜜桃久久久久久免费| 国产精品美乳在线观看| 日日碰狠狠丁香久燥| 国产噜噜噜噜噜久久久久久久久 | 国产午夜精品一区| 日韩在线欧美在线国产在线| 亚洲午夜精品国产|