This article covers the sentiment analysis of any topic by parsing the tweets fetched from Twitter using Python.
What is sentiment analysis?
Sentiment Analysis is the process of ‘computationally’ determining whether a piece of writing is positive, negative or neutral. It’s also known as opinion mining, deriving the opinion or attitude of a speaker.
Why sentiment analysis?
- Business: In marketing field companies use it to develop their strategies, to understand customers’ feelings towards products or brand, how people respond to their campaigns or product launches and why consumers don’t buy some
- Politics: In political field, it is used to keep track of political view, to detect consistency and inconsistency between statements and actions at the government level. It can be used to predict election results as well!
- Public Actions: Sentiment analysis also is used to monitor and analyse social phenomena, for the spotting of potentially dangerous situations and determining the general mood of the blogosphere.
- Tweepy: tweepy is the python client for the official Twitter API.
Install it using following pip command:
pip install tweepy
- TextBlob: textblob is the python library for processing textual data.
Install it using following pip command:
pip install textblob
Also, we need to install some NLTK corpora using following command:
python -m textblob.download_corpora
(Corpora is nothing but a large and structured set of texts.)
In order to fetch tweets through Twitter API, one needs to register an App through their twitter account. Follow these steps for the same:
- Open this link and click the button: ‘Create New App’
- Fill the application details. You can leave the callback url field empty.
- Once the app is created, you will be redirected to the app page.
- Open the ‘Keys and Access Tokens’ tab.
- Copy ‘Consumer Key’, ‘Consumer Secret’, ‘Access token’ and ‘Access Token Secret’.
Here is how a sample output looks like when above program is run:
Positive tweets percentage: 22 % Negative tweets percentage: 15 % Positive tweets: RT @JohnGGalt: Amazing—after years of attacking Donald Trump the media managed to turn #InaugurationDay into all about themselves. #MakeAme… RT @vooda1: CNN Declines to Air White House Press Conference Live YES! THANK YOU @CNN FOR NOT LEGITIMI… RT @Muheeb_Shawwa: Donald J. Trump's speech sounded eerily familiar... POTUS plans new deal for UK as Theresa May to be first foreign leader to meet new president since inauguration .@realdonaldtrump #Syria #Mexico #Russia & now #Afghanistan. Another #DearDonaldTrump Letter worth a read @AJEnglish Negative tweets: RT @Slate: Donald Trump’s administration: “Government by the worst men.” RT @RVAwonk: Trump, Sean Spicer, et al. lie for a reason. Their lies are not just lies. Their lies are authoritarian propaganda. RT @KomptonMusic: Me: I hate corn Donald Trump: I hate corn too Me: https://t.co/GPgy8R8HB5 It's ridiculous that people are more annoyed at this than Donald Trump's sexism. RT @tony_broach: Chris Wallace on Fox news right now talking crap about Donald Trump news conference it seems he can't face the truth eithe… RT @fravel: With False Claims, Donald Trump Attacks Media on Crowd Turnout Aziz Ansari Just Hit Donald Trump Hard In An Epic Saturday NIght Live Monologue
We follow these 3 major steps in our program:
- Authorize twitter API client.
- Make a GET request to Twitter API to fetch tweets for a particular query.
- Parse the tweets. Classify each tweet as positive, negative or neutral.
Now, let us try to understand the above piece of code:
- First of all, we create a TwitterClient class. This class contains all the methods to interact with Twitter API and parsing tweets. We use __init__ function to handle the authentication of API client.
- In get_tweets function, we use:
fetched_tweets = self.api.search(q = query, count = count)
to call the Twitter API to fetch tweets.
- In get_tweet_sentiment we use textblob module.
analysis = TextBlob(self.clean_tweet(tweet))
TextBlob is actually a high level library built over top of NLTK library. First we call clean_tweet method to remove links, special characters, etc. from the tweet using some simple regex.
Then, as we pass tweet to create a TextBlob object, following processing is done over text by textblob library:
- Tokenize the tweet ,i.e split words from body of text.
- Remove stopwords from the tokens.(stopwords are the commonly used words which are irrelevant in text analysis like I, am, you, are, etc.)
- Do POS( part of speech) tagging of the tokens and select only significant features/tokens like adjectives, adverbs, etc.
- Pass the tokens to a sentiment classifier which classifies the tweet sentiment as positive, negative or neutral by assigning it a polarity between -1.0 to 1.0 .
Here is how sentiment classifier is created:
- TextBlob uses a Movies Reviews dataset in which reviews have already been labelled as positive or negative.
- Positive and negative features are extracted from each positive and negative review respectively.
- Training data now consists of labelled positive and negative features. This data is trained on a Naive Bayes Classifier.
Then, we use sentiment.polarity method of TextBlob class to get the polarity of tweet between -1 to 1.
Then, we classify polarity as:
if analysis.sentiment.polarity > 0: return 'positive' elif analysis.sentiment.polarity == 0: return 'neutral' else: return 'negative'
- Finally, parsed tweets are returned. Then, we can do various type of statistical analysis on the tweets. For example, in above program, we tried to find the percentage of positive, negative and neutral tweets about a query.
This article is contributed by Nikhil Kumar. If you like GeeksforGeeks and would like to contribute, you can also write an article using contribute.geeksforgeeks.org or mail your article to email@example.com. See your article appearing on the GeeksforGeeks main page and help other Geeks.
Please write comments if you find anything incorrect, or you want to share more information about the topic discussed above.
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