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The question may be vague but I will try to word it as best as possible.

So I came up with a crude algorithm to compute whether a sentence (part of a review snippet) is positive or negative or neutral (let's call this EQ for the sentence). So for 5 sentences I have some ratings for sentence based on [-100, 100]. The review has to be rated on [0, 5] basis

(0, 39.88) (1, 73.07) (2, 69.65) (3, 51.43) (4, 76.74)

The choice that I am struggling with is what method should I choose to now compute the overall rating for the review snippet.

I researched a little and tried two options

1) 50% Percentile: for above data point I got it as 70. So mapping it on 0-5 scale turns out 4.2. Results are good but the sad part is that percentile doesn't capture how the EQ varied in the snippet from one sentence to another (since it works on sorted data so the variation is lost). 2) Lagrange Polynomial: Here it came close to 69. But the prob with this approach is that I often calculate it for mid of the X-range (in this case 2) so as such this too doesn't capture the variation in EQ of the sentence (here end points do not matter, it would mostly give mid range value).

Any ideas, what method should I choose which can capture the EQ variation in the snippet and give an appropriate value which can be used to get overall sentiment.?

Probably something like excel draws trendline, prob that can be used ??

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closed as not a real question by bmargulies, casperOne Jul 17 '12 at 12:55

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center. If this question can be reworded to fit the rules in the help center, please edit the question.

You might consider reading some of the many papers written by people who've done careful scientific studies of this and worked out all the math. –  bmargulies Jul 24 '11 at 22:00
I think you're on the right track, and I also would like to second bmargulies' advice. –  wprl Aug 4 '11 at 19:24

1 Answer 1

If you are interested in untrained/unsupervised sentiment analysis, read this classic paper by Peter Turney which uses an unsupervised approach achieving an accuracy of around 75% - http://nparc.cisti-icist.nrc-cnrc.gc.ca/npsi/ctrl?action=rtdoc&an=8914166

Sentiment Analysis is fun!

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