Data Science Asked by nikitok56 on October 1, 2021
I’d like to perform sentiment analysis on stock comment using scikit and nltk. I already have about 100 comments on different stocks like “this stock will rock” which I marked as positive (1) or “this is doomed stock” which I marked as negative(0). So I’d like to train classifier which can tell whether new comments I add are negative or positive. So my question is how to perform it. I’ve already searched the Net but all I found was movie review sentiment analysis which is quite remote from the topic.
What you're doing right now is a traditional classification using supervised learning. This is a great method for predicting outcomes, but I suspect there are much better ways to complete this sentiment analysis project you're working on.
Without knowing what the goal of your analysis is, I would suggest you look at the NLTK package. A lot of work has been done to idenify how positive or negative a collection of words is, and you could piggyback on the work of some really smart people.
If you're having trouble starting, you can look at NLTK's how-to tutorial, some Kaggle kernels, or find some articles online.
Good luck!
Answered by Stephen Witkowski on October 1, 2021
Get help from others!
Recent Questions
Recent Answers
© 2024 TransWikia.com. All rights reserved. Sites we Love: PCI Database, UKBizDB, Menu Kuliner, Sharing RPP