For
practical Labs for Machine Learning, students may use softwares like
MABLAB/Octave or Python. For later exercises, students can create/use their own
datasets or utilize datasets from online repositories like UCI Machine Learning
Repository (http://archive.ics.uci.edu/ml/).
1. Perform
elementary mathematical operations in Octave/MATLAB like addition,
multiplication, division and exponentiation.
2. Perform
elementary logical operations in Octave/MATLAB (like OR, AND, Checking for
Equality, NOT, XOR).
3. Create,
initialize and display simple variables and simple strings and use simple
formatting for variable.
4. Create/Define
single dimension / multi-dimension arrays, and arrays with specific values like
array of all ones, all zeros, array with random values within a range, or a
diagonal matrix.
5. Use
command to compute the size of a matrix, size/length of a particular
row/column, load data from a text file, store matrix data to a text file,
finding out variables and their features in the current scope.
6. Perform
basic operations on matrices (like addition, subtraction, multiplication) and
display specific rows or columns of the matrix.
7. Perform
other matrix operations like converting matrix data to absolute values, taking
the negative of matrix values, additing/removing rows/columns from a matrix,
finding the maximum or minimum values in a matrix or in a row/column, and
finding the sum of some/all elements in a matrix.
8. Create
various type of plots/charts like histograms, plot based on sine/cosine
function based on data from a matrix. Further label different axes in a plot
and data in a plot.
9. Generate
different subplots from a given plot and color plot data.
10. Use
conditional statements and different type of loops based on simple example/s.
11. Perform
vectorized implementation of simple matrix operation like finding the transpose
of a matrix, adding, subtracting or multiplying two matrices.
12. Implement
Linear Regression problem. For example, based on a dataset comprising of
existing set of prices and area/size of the houses, predict the estimated price
of a given house.
13. Based
on multiple features/variables perform Linear Regression. For example, based on
a number of additional features like number of bedrooms, servant room, number
of balconies, number of houses of years a house has been built – predict the
price of a house.
14. Implement
a classification/ logistic regression problem. For example based on different
features of students data, classify, whether a student is suitable for a
particular activity. Based on the available dataset, a student can also
implement another classification problem like checking whether an email is spam
or not.
15. Use
some function for regularization of dataset based on problem 14.
16. Use
some function for neural networks, like Stochastic Gradient Descent or
backpropagation algorithm to predict the value of a variable based on the
dataset of problem 14.
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