Content Based Recommender System recommends movies similar to the movie user likes and analyses the sentiments on the reviews given by the user for that movie.
Note: The application has been updated to a newer version. Get the source code of the newer version here
Check out the youtube video if the above preview is not visible: https://www.youtube.com/watch?v=muPDsWgMkpc
Check out the live demo: https://mrswsa.herokuapp.com/
The details of the movies(title, genre, runtime, rating, poster, etc) are fetched using an API by TMDB, https://www.themoviedb.org/documentation/api, and using the IMDB id of the movie in the API, I did web scraping to get the reviews given by the user in the IMDB site using beautifulsoup4
and performed sentiment analysis on those reviews.
Create an account in https://www.themoviedb.org/, click on the API
link from the left hand sidebar in your account settings and fill all the details to apply for API key. You will see the API key in your API
sidebar once your request is approved.
- Install all the libraries mentioned in the requirements.txt file.
- Clone this repository in your local system.
- Replace YOUR_API_KEY in the
main.py
file. - Open the command prompt from your project directory and run the command
python main.py
. - Go to your browser and type
http://127.0.0.1:5000/
in the address bar. - Hurray! That's it.
How does it decide which item is most similar to the item user likes? Here we use the similarity scores.
It is a numerical value ranges between zero to one which helps to determine how much two items are similar to each other on a scale of zero to one. This similarity score is obtained measuring the similarity between the text details of both of the items. So, similarity score is the measure of similarity between given text details of two items. This can be done by cosine-similarity.
Cosine similarity is a metric used to measure how similar the documents are irrespective of their size. Mathematically, it measures the cosine of the angle between two vectors projected in a multi-dimensional space. The cosine similarity is advantageous because even if the two similar documents are far apart by the Euclidean distance (due to the size of the document), chances are they may still be oriented closer together. The smaller the angle, higher the cosine similarity.
More about Cosine Similarity : Understanding the Math behind Cosine Similarity