Answered step by step
Verified Expert Solution
Link Copied!

Question

1 Approved Answer

Answer the following in the provided document titled machine _ learning.ipynb. 1 . For each of the following examples describe at least one possible input

Answer the following in the provided document titled machine_learning.ipynb.
1. For each of the following examples describe at least one possible input and
output. Justify your answers:
1.1. A self-driving car
1.2. Netflix recommendation system
1.3. Signature recognition
1.4. Medical diagnosis
2. For each of the following case studies, determine whether it is appropriate
to utilise regression or classification machine learning algorithms. Justify
your answers:
2.1. Classifying emails as promotional or social based on their content and
metadata.
2.2. Forecasting the stock price of a company based on historical data and
market trends.
2.3. Sorting images of animals into different species based on their visual
features.
2.4. Predicting the likelihood of a patient having a particular disease based
on medical history and diagnostic test results.
3. For each of the following real-world problems, determine whether it is
appropriate to utilise a supervised or unsupervised machine learning
algorithm. Justify your answers:
3.1. Detecting anomalies in a manufacturing process using sensor data
without prior knowledge of specific anomaly patterns. 3.2. Predicting customer lifetime value based on historical transaction data
and customer demographics.
3.3. Segmenting customer demographics based on their purchase history,
browsing behaviour, and preferences.
3.4. Analysing social media posts to categorise them into different themes.
4. For each of the following real-world problems, determine whether it is
appropriate or inappropriate to utilise semi-supervised machine learning
algorithms. Justify your answers:
4.1. Predicting fraudulent financial transactions using a dataset where
most transactions are labelled as fraudulent or legitimate.
4.2. Analysing customer satisfaction surveys where only a small portion of
the data is labelled with satisfaction ratings.
4.3. Identifying spam emails in a dataset where the majority of emails are
labelled.
4.4. Predicting the probability of default for credit card applicants based on
their complete financial and credit-related informationMachine Learning
Compulsory task
For each of the following examples describe at least one possible input and output. Justify your answers:
1.1 A self-driving car
1.2 Netflix recommendation system
1.3 Signature recognition
1.4 Medical diagnosis
Answer here
For each of the following case studies, determine whether it is appropriate to utilise regression or classification machine learning algorithms. Justify your
answers:
2.1 Classifying emails as promotion or social based on their content and metadata.
2.2 Forecasting the stock price of a company based on historical data and market trends.
2.3 Sorting images of animals into different species based on their visual features.
2.4 Predicting the likelihood of a patient having a particular disease based on medical history and diagnostic test results.
Answer here
2.1
2.2
*2.3
*2.4
For each of the following real-world problems, determine whether it is appropriate to utilise a supervised or unsupervised machine learning algorithm. Justify
your answers:
3.1 Detecting anomalies in a manufacturing process using sensor data without prior knowledge of specific anomaly patterns.
3.2 Predicting customer lifetime value based on historical transaction data and customer demographics.
3.3 Segmenting customer demographics based on their purchase history, browsing behaviour, and preferences.
3.4 Analysing social media posts to categorise them into different themes.
Answer here
3.1
3.2
3.3
3.4
For each of the following real-world problems, determine whether it is appropriate to utilise semi-supervised machine learning algorithms. Justify your
answers:
4.1 Predicting fraudulent financial transactions using a dataset where most transactions are labelled as fraudulent or legitimate.
4.2 Analysing customer satisfaction surveys where only a small portion of the data is labelled with satisfaction ratings. ?**4.3ld intifying spam emails in a
dataset where the majority of emails are labelled.
4.4 Predicting the probability of default for credit card applicants based on their complete financial and credit-related information.
Answer here
4.1
4.2
4.3
4.4
image text in transcribed

Step by Step Solution

There are 3 Steps involved in it

Step: 1

blur-text-image

Get Instant Access with AI-Powered Solutions

See step-by-step solutions with expert insights and AI powered tools for academic success

Step: 2

blur-text-image

Step: 3

blur-text-image

Ace Your Homework with AI

Get the answers you need in no time with our AI-driven, step-by-step assistance

Get Started

Students also viewed these Databases questions