say I download 'n' number of tweets and remove words with length <= 2 from them and then label each tweet as 'Negative' or 'Non negative', so that this forms my training set.
but instead of having well defined attributes like how an Iris data-set has Sepal Length, Sepal Width, Petal Length and Petal Width, in my data-set simply every word becomes an attribute and different example tweets will have different number of attributes.
Can I use this data-set and consider my problem as a classification problem ? and try to predict whether a new tweet is Negative or Non-Negative?
or what would you suggest as the best way to predict whether a tweet is negative or not ?