• Stars
    star
    1
  • Language
    Python
  • Created over 3 years ago
  • Updated over 3 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Toxic comments are detected and filtered using the naive Bayes classification

More Repositories

1

pass-the-butter

In this project we want to implement some search algorithms like: IDS, Bidirectional BFS and A*
Python
2
star
2

AI_Project_3

Python
1
star
3

Decision_Tree_Regression_JS

JavaScript
1
star
4

mario

Java
1
star
5

K-NN_JS

JavaScript
1
star
6

Support-Vector-Machine_JS

JavaScript
1
star
7

Multiple_Linear_Regression_JS

JavaScript
1
star
8

DS-in-TS

TypeScript
1
star
9

Natours-Backend

HTML
1
star
10

LU-Factorization

Python
1
star
11

Genetic-algorithm

Implementation of different stages of genetic algorithm
Python
1
star
12

react-project

JavaScript
1
star
13

os-final-project

C
1
star
14

Polynomial_Linear_Regression_JS

JavaScript
1
star
15

Simple_Linear_Regression_JS

JavaScript
1
star
16

Pig-Game

In this game, User Interface (UI) contains user/player that can do three things, they are as follows: Roll the dice, Hold and Reset
JavaScript
1
star
17

online-clothing-shop

JavaScript
1
star
18

Logistic_Regression_JS

JavaScript
1
star
19

Naive_Bayes_JS

JavaScript
1
star
20

Guess-My-Number

This simple project shows how to manipulate the DOM.
JavaScript
1
star
21

js-screenshot_node-version

JavaScript
1
star
22

Modal-Window

This mini project shows how to manipulate css classes:)
JavaScript
1
star
23

Random_Forest_Regression_JS

JavaScript
1
star
24

Natours-Design

CSS
1
star
25

monsters-rolodex

Familiarity with React basic concepts such as: class component, function component, state, props , ...
JavaScript
1
star
26

Cat_vs_No-Cat

The goal is to train a classifier that the input is an image represented by a feature vector, x, and predicts whether the corresponding label y is 1 or 0. In this case, whether this is a cat image (1) or a non-cat image (0).
Jupyter Notebook
1
star
27

Neural-networks-optimization-methods

Until now, I've always used Gradient Descent to update the parameters and minimize the cost. In this notebook, i will learn more advanced optimization methods that can speed up learning and perhaps even get me to a better final value for the cost function. Having a good optimization algorithm can be the difference between waiting days vs. just a few hours to get a good result.
Jupyter Notebook
1
star
28

2-layer-neural-network

It's time to build my first neural network, which will have a hidden layer. You will see a big difference between this model and the one i implemented using logistic regression(cat vs not-cat)
Jupyter Notebook
1
star
29

Deep_neural_network

I have previously trained a 2-layer Neural Network (with a single hidden layer). In this project, i will build a deep neural network, with as many layers as i want!
Jupyter Notebook
1
star