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THE FOCUS OF THIS QUESTION IS TO ANSWER QUESTION 4 based on the analysis , developments
and outputs of (tasks 1,2,3A and 3B)
Technical Assessment
Introduction:
Hello! Welcome to the Open Cities Lab (OCL) data technical assessment. This assignment is intended to help you demonstrate your skills and for us to get a sense of how you think about and approach data-driven problem solving and decision-making.
At OCL, there is as much a focus on the empathetic, real-world usage of data as the leveraging of cutting-edge, hyper-accurate methods and models. Accordingly, we are as interested in how you frame and contextualize the problem as we are in your ability to use advanced data science and machine learning algorithms. So, please dont hold back in letting us know why you did what you did at each step, any challenges you identify, concerns that you have in the problem statements, potential biases in the source data, and how you would augment the data provided with other sources if you had the chance. All the best!
Source Data:
You have been provided (link) with several datasets containing information indexed with StatsSAs Small Area Layer (SAL) codes, as well as complementary geospatial data.
Task 1: Preprocessing, Data Exploration and Visualization
Clean up any data files that contain extraneous information.
Handle missing values if any.
Encode categorical variables if necessary.
Normalize or standardize numerical features if required.
Perform an exploratory data analysis to understand the structure and properties of the datasets.
Visualize important features and relationships in the data using appropriate plots and charts.
Task 2: Feature Selection/Engineering
Select which features you consider to be most relevant to the prediction tasks in 3a and 3b. Please make a note of these before running.
Engineer new features if you think they can improve model performance and briefly describe your reasoning.
Task 3a: Supervised Model Building
Create a target variable that represents a high probability of well earning females being present in a SAL.
Split the dataset into a training set and a test set.
Build a machine learning model to predict the target without using the features used to construct it. You can choose any model you think is appropriate (e.g., logistic regression, decision tree, random forest, gradient boosting, etc.).
Task 3b: Unsupervised Model Building
Create a 2-dimensional (2D) topology that represents individual SALs in terms of two indicators, representing relative Urbanization and Socio-Economic Standing respectively. Briefly describe your logic in creating these indicators and how they are defined.
Identify and visualize interesting clusters / segments within this 2D space and map these geospatially by joining this data to the polygons provided and colouring by cluster / segment ID. Briefly discuss why these clusters are interesting (or not).
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QUESTION : FROM THE ABOVE EVALUATE AND ANSWER THE FOLLOWING :->
Task 4: Model Evaluations
Evaluate both your models performances using appropriate metrics (e.g., accuracy, precision, recall, F1-score, AUC-ROC, Silhouette Coefficient, etc.).
Discuss why you chose these metrics and what they tell you about your models performance.

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