代做ITS70304 Principles of AI ASSIGNMENT 2代做留学生Python程序

SCHOOL OF COMPUTER SCIENCE

MASTER OF APPLIED COMPUTING (MAC)

ASSIGNMENT 2 (Weightage 15%)

SEPTEMBER 2024 SEMESTER (Block 2)

MODULE NAME

: Principles of AI

MODULE CODE

: ITS70304

Scenario and Task Description

In industries where competition is high and profit margins are low, satisfied and loyal customers can distinguish organizations from their competitors, providing a competitive edge and the potential for greater profits. Research frequently demonstrates that organizations benefit from satisfied and loyal customers, but the factors that contribute to satisfaction and loyalty are not always clear in ways that can be translated to action for practitioners. Prior airline industry studies have revealed that customer satisfaction leads to higher profits and encourages loyalty behaviors. For example, satisfied airline customers are more likely to recommend an airline and repurchase tickets (Kim and Lee, 2011), which contributes to an airline's profitability and increased market share (Buttle, 1996; Dagger et al., 2007; Devlin and Dong, 1994). Additionally, loyal consumers are more willing to forgive a service failure and are more resilient to rising prices (Mattila, 2001). 

Global Aviation Analytics Market show an increasing trends by year of 2027.

 

Data analytics for an airline passenger satisfaction study typically involves gathering, processing, analyzing, and interpreting data related to the experience of passengers across different dimensions. This process helps airlines understand key drivers of satisfaction, identify areas for improvement, and optimize services

Practical Skills

Perform. exploratory data analysis and build a predictive model that answers the question: “Passenger satisfied or not satisfied with the airline services” based on the factors identified in the airlinesatisfaction.csv dataset. Write a python program to answer the following.

However, before the prediction can be made this dataset needs to be pre-processed before it can be fed into AI prediction model. Pre-process the airlinesatisfaction.csv dataset with Python programming on Google Colab. Each question below required your code.

1. A.I. systems are trained on patterns in certain examples, and because all possible examples cannot be covered, the systems are easily confused when presented with a new scenario. Airline schedules are easily changing every day due to weather condition, technology difficulties and many more reasons. How can AI handle this mistake? (1 mark)

2. Loading dataset into a Pandas DataFrame. and list the libraries you may need to use. Find the following information: (3 marks)

a. Number of rows and columns

b. Find the basic statistics of all columns and listing the basic information of the columns- find out the data type for each column

3. Identify how many attributes contains missing values. Handle the missing values. Find number of missing values from each attribute and handle them. You may use imputation. Explain your method. (2 marks)

4. Identify 2 main variables that can show high relationship with the target variable in detecting the passenger satisfaction? Plot a heatmap to explore the relationship between them. (3 marks)

5. The target variable (satisfaction) has 3 values (satisfied, neutral, dissatisfied). Change the values into binary classification. Show your code and count how many of them from both new values. (3 marks)

6. Create a single train/test split of the data. Set aside 80% for training, and 20% for testing. Create a  

Neural Network Modelling and fit it to your training data. Measure the accuracy of the resulting Neural Network model using your test data. (3 marks)


To demonstrate a broad and coherent theoretical and technical knowledge comprehension, add comments where necessary throughout the program. Please make sure you copy paste the respective code in your pdf file and explain each of them.


Marking Rubrics (lecturer’s use only)

Attach as second page in the report.

The purpose of this learning assignment is based on the following module learning outcome (MLO):

MLO2 — Perform. a knowledge on Data Privacy and Ethical Consideration.

Type of activity: Practical

Question

Weight

Outstanding

(80 – 100)

Mastering

(65 – 79)

Developing

(0 – 64)

Practical Skills

Demonstrates comprehensive exploration and analysis of AI applications, in a highly logical and extensive manner and able to pre-process the dataset for AI application in the airlines satisfaction prediction modelling. The Python program/code is applied correctly and the solution is clearly elaborated and presented in a step by step manner. The similarity is less than 2%.

Demonstrates enough interpretation/evaluation to develop a coherent exploration and analysis of AI applications and able to pre-process the dataset for AI application in the airlines satisfaction prediction modelling. The Python program/code is applied correctly and the solution is NOT clearly elaborated and presented in a step by step manner. The similarity is between 2% to 4%.

Demonstrates enough interpretation/evaluation to develop a coherent exploration and analysis of AI applications and unable to pre-process the dataset for AI application in the airlines satisfaction prediction modelling. The Python program/code is applied incorrectly and the solution is NOT clearly elaborated and presented in a step by step manner. The similarity is greater than or equal to 5%.

Q1

_____/1

Q2

_____/3

Q3

_____/2

Q4

_____/3

Q5

_____/3

Q6

_____/3

Submission Requirements

1. Font type : Times New Roman

2. Font size : 12

3. Line spacing : 1.5

4. Alignment : Justify Text

5. Document type : .pdf, .ipynb

6. Number of pages : 5 – 12 pages (do not exceed the page limit)

7. Your full report should consist of the following:

a) Cover page (Name, ID, Date, Signature, Score)

b) Marking Rubrics & Declaration (attach as second page in the report)

c) Report of your answer script.

d) Appendixes (line spacing = 1.0)

· List of references (APA format)

· Python script.

· Report of similarity score (percentage of similarity score from each source needs to be shown)

8. Start each question on a separate page.

9. All figures and tables are labelled properly.

10. File naming conventions: StudentName_Assignment1



热门主题

课程名

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
EMail: 99515681@qq.com
QQ: 99515681
留学生作业帮-留学生的知心伴侣!
工作时间:08:00-21:00
python代写
微信客服:codinghelp
站长地图