This is in the context of doing sentiment analysis using LingPipe machine learning tool. I have to classify if a sentence in a big paragraph has a positive/negative sentiment. I know of the following approach in LingPipe
Classify if the complete paragraph based on its polarity - negative or positive.
Here, I yet don't know the polarity at the sentence level. We are still at the paragraph level. How do I determine the polarity at the sentence level of a paragraph, of whether a sentence in a paragraph is a positive/negative sentence? I know that LingPipe is capable of classifying if a sentence is subjective/objective. So using this approach,,,,
,,,, should I
First train LingPipe on a large set of sentences that are subjective/objective.
- Use the trained model to extract all subjective sentences out of a test paragraph.
- Train a LingPipe classifier based on the extracted subjective sentences for polarity by manually labeling them as positive/negative.
Now used the trained polarity model and feed a test subjective sentence (that is done by passing a sentence through the trained subjective/objective) model, and then determine if the statement is positive/negative?
Does the above approach work? In the above proposed approach, we know that LingPipe is capable of accepting a large textual content (paragraph) for polarity classification. Will it do a good job if we just pass a single subjective sentence for polarity classification? I am confused!