University | Nanyang Technological University (NTU) |
Subject | BC2406 Analytics I: Visual and Predictive Techniques |
Machine Learning Detection of Misinformation
Misinformation is false or inaccurate information, regardless of the intent. The 2024 World Economic Forum Global Risks Report [1] ranked misinformation and disinformation as the most severe risk in the short term, with AI-generated misinformation and disinformation highlighted.
The Singapore government has taken measures such as the Protection from Online Falsehoods and Manipulation Act (POFMA) to protect both the public and Singapore’s interests against misinformation[2].
To investigate the usefulness of Machine Learning models to detect misinformation, a data sample (misinformation2.csv) is provided[3]. The last column “is_misinformation” (0: No; 1: Yes) is the target Y variable.
1. Explore the data (without models) and report 3 notable findings.
2. Is additional data preparation or data cleaning required before using models?
Explain. [Note: You will perform these actions (if any) before using models.]
3. Using 70-30 train-test, execute (a) Logistic Regression and (b) CART to compare testset errors. Display the results in a table:
Model | Model Complexity | False Positive Rate | False
Negative Rate |
Overall Error |
Logistic
Regression |
State the number of X variables. | |||
CART | State number of terminal nodes. |
4. Conduct additional analysis to enhance quality of work and state your findings.
[1] https://www.weforum.org/publications/global-risks-report-2024/
[2] https://www.gov.sg/explainers/singapore-fight-against-misinformation
[3] Data Dictionary/Definitions are not provided. You may make reasonable assumptions about the data.
5. Write an executive summary that reports the most important findings in less than 300 words.
Hire a Professional Essay & Assignment Writer for completing your Academic Assessments
Native Singapore Writers Team
- 100% Plagiarism-Free Essay
- Highest Satisfaction Rate
- Free Revision
- On-Time Delivery
Many students find Machine Learning assessments challenging, especially when it involves analysing misinformation datasets, comparing models like Logistic Regression and CART, or writing an executive summary with technical accuracy. If you’re struggling with data exploration, model evaluation, or Python implementation, Singapore Assignment Help is here to assist. Our experts deliver Machine Learning assignment help that is 100% plagiarism-free, AI-free, and aligned with university marking standards. From report writing to data analysis, we ensure your work is clear, well-researched, and submission-ready. Get trusted support today with computer science assignment help SG and score top grades with ease.
Looking for Plagiarism free Answers for your college/ university Assignments.
- CVE2151 Transportation Engineering Assignment – Highway and Traffic Engineering
- Law of property Assignment Part 1 Short Questions
- BPM113 Construction Technology Tutor-Marked Assignment Two July 2025 Presentation
- Visual Arts Management Assignment 1 Coursework – Singapore Art Science Museum
- BUS366 Lean Six Sigma End-of-Course Assessment – July Semester 2025
- ELG101 Discovering Language Tutor-Marked Assignments 01-02 July 2025 Presentation
- PSY376 SUSS ECA: Psychology of Trauma July Semester 2025
- HRM331 Talent Management: End-of-Course Assessment – July Semester 2025
- SOC371 Science, Technology, and Society Tutor‐Marked Assignment (TMA-02) July 2025 Semester
- ANL252 Python for Data Analytics End-of-Course Assessment – July Semester 2025