
Hate Speech Detection Using Machine Learning Project
Published 4/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English
| Duration: 0h 35m
Complete Hate Speech Detection Using Machine Learning Project
What you'll learn
Understand the importance of feature selection in hate speech detection.
Fine-tune the decision tree classifier model by adjusting hyperparameters to improve performance.
Understand the importance of feature selection in hate speech detection.
Implement a decision tree classifier model using popular Python libraries such as scikit-learn.
Requirements
Basic knowledge of Python programming and machine learning concepts.
Familiarity with popular Python libraries such as pandas, numpy, and scikit-learn.
Description
Course Title: Hate Speech Detection Using Machine Learning Project with Decision Tree ClassifierCourse Description:Welcome to the "Hate Speech Detection Using Machine Learning Project with Decision Tree Classifier" course! In this practical project-based course, you'll learn how to build a hate speech detection system using machine learning techniques, with a focus on the decision tree classifier algorithm. Hate speech detection is a critical task in natural language processing (NLP) aimed at identifying and mitigating harmful language in online platforms and social media.What You Will Learn:Introduction to Hate Speech Detection:Understand the importance of hate speech detection in combating online harassment and fostering safer online communities.Learn about the challenges and ethical considerations associated with hate speech detection.Data Collection and Preprocessing:Collect and preprocess text data from various sources, including social media platforms and online forums.Clean and tokenize the text data to prepare it for analysis.Feature Engineering:Extract relevant features from the text data, such as word frequencies, n-grams, and sentiment scores.Understand the importance of feature selection in hate speech detection.Building the Decision Tree Classifier Model:Learn how decision trees work and how they are used for classification tasks.Implement a decision tree classifier model using popular Python libraries such as scikit-learn.Model Training and Evaluation:Split the dataset into training and testing sets and train the decision tree classifier model.Evaluate the model's performance using appropriate evaluation metrics, such as accuracy, precision, recall, and F1-score.Fine-Tuning the Model:Fine-tune the decision tree classifier model by adjusting hyperparameters to improve performance.Explore techniques for handling class imbalance and optimizing model performance.Interpreting Model Results:Interpret the decisions made by the decision tree classifier model and understand how it classifies hate speech.Real-World Applications and Ethical Considerations
Overview
Section 1: Introduction To Hate Speech Detection Using Machine Learning Project
Lecture 1 Introduction To Course
Lecture 2 Introduction To Machine Learning
Section 2: Hate Speech Detection Using Machine Learning Project
Lecture 3 Hate Speech Detection Class 1 : Import Packages
Lecture 4 Hate Speech Detection Class 2 : Import Dataset
Lecture 5 Hate Speech Detection Class 3 : Map Columns
Lecture 6 Hate Speech Detection Class 4 : Split Columns
Section 3: Hate Speech Detection Using Machine Learning Project
Lecture 7 Hate Speech Detection Class 5 : Clean Dataset
Lecture 8 Hate Speech Detection Class 6 : Train Dataset
Lecture 9 Hate Speech Detection Class 7 : Output & Conclusion
Data enthusiasts interested in natural language processing and text classification.,Social media analysts and community managers aiming to combat hate speech and online harassment.

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