Book Image

Raspberry Pi 3 Cookbook for Python Programmers - Third Edition

By : Steven Lawrence Fernandes, Tim Cox
Book Image

Raspberry Pi 3 Cookbook for Python Programmers - Third Edition

By: Steven Lawrence Fernandes, Tim Cox

Overview of this book

Raspberry Pi 3 Cookbook for Python Programmers – Third Edition begins by guiding you through setting up Raspberry Pi 3, performing tasks using Python 3.6, and introducing the first steps to interface with electronics. As you work through each chapter, you will build your skills and apply them as you progress. You will learn how to build text classifiers, predict sentiments in words, develop applications using the popular Tkinter library, and create games by controlling graphics on your screen. You will harness the power of a built in graphics processor using Pi3D to generate your own high-quality 3D graphics and environments. You will understand how to connect Raspberry Pi’s hardware pins directly to control electronics, from switching on LEDs and responding to push buttons to driving motors and servos. Get to grips with monitoring sensors to gather real-life data, using it to control other devices, and viewing the results over the internet. You will apply what you have learned by creating your own Pi-Rover or Pi-Hexipod robots. You will also learn about sentiment analysis, face recognition techniques, and building neural network modules for optical character recognition. Finally, you will learn to build movie recommendations system on Raspberry Pi 3.
Table of Contents (23 chapters)
Title Page
Copyright and Credits
Dedication
Packt Upsell
Contributors
Preface
Index

Analyzing the sentiment of a sentence


Sentiment analysis refers to procedures of finding whether a specified part of text is positive, negative, or neutral. This technique is frequently considered to find out how people think about a particular situation. It evaluates the sentiments of consumers in different forms, such as advertising campaigns, social media, and e-commerce customers.

How to do it...

  1. Create a new file and import the chosen packages:
import nltk.classify.util
from nltk.classify import NaiveBayesClassifier
from nltk.corpus import movie_reviews
  1. Describe a function to extract features:
def collect_features(word_list):
  word = []
  return dict ([(word, True) for word in word_list])
  1. Adopt movie reviews in NLTK as training data:
if __name__=='__main__':
  plus_filenum = movie_reviews.fileids('pos')
  minus_filenum = movie_reviews.fileids('neg')
  1. Divide the data into positive and negative reviews:
  feature_pluspts = [(collect_features(movie_reviews.words(fileids=[f])),
'Positive') for f...