Currently I have a database consisted of about 600,000 records represents merchandise with their category information look like below:
{'title': 'Canon camera', 'category': 'Camera'},
{'title': 'Panasonic regrigerator', 'category': 'Refrigerator'},
{'title': 'Logo', 'category': 'Toys'},
....
But there are merchandises without category information.
{'title': 'Iphone6', 'category': ''},
So I'm thinking whether it is possible to train a text classifier based on my items' name by using scikit-learn to help me predict which the category should the merchandise be. I'm forming this problem as a multi-class text classification but there are also one~many pictures for each item so maybe deep learning/Keras can also be used?
I don't know what is the best way to solve this problem so any suggestion or advice is welcome, thank you for reading this.
P.S. the actual text is in Japanese