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I need to do sentiment analysis on some csv files containing tweets. I'm using SentiWordNet to do the sentiment analysis.

I got the following piece of sample java code they provided on their site. I'm not sure how to use it. The path of the csv file that I want to analyze is C:\Users\MyName\Desktop\tweets.csv . The path of the SentiWordNet_3.0.0.txt is C:\Users\MyName\Desktop\SentiWordNet_3.0.0\home\swn\www\admin\dump\SentiWordNet_3.0.0_20130122.txt . I'm new to java, pls help, thanks! The link to the sample java code below is this.

import java.io.BufferedReader;
import java.io.File;
import java.io.FileReader;
import java.util.HashMap;
import java.util.Iterator;
import java.util.Set;
import java.util.Vector;

public class SWN3 {
    private String pathToSWN = "data"+File.separator+"SentiWordNet_3.0.0.txt";
    private HashMap<String, String> _dict;

    public SWN3(){

        _dict = new HashMap<String, String>();
        HashMap<String, Vector<Double>> _temp = new HashMap<String, Vector<Double>>();
        try{
            BufferedReader csv =  new BufferedReader(new FileReader(pathToSWN));
            String line = "";           
            while((line = csv.readLine()) != null)
            {
                String[] data = line.split("\t");
                Double score = Double.parseDouble(data[2])-Double.parseDouble(data[3]);
                String[] words = data[4].split(" ");
                for(String w:words)
                {
                    String[] w_n = w.split("#");
                    w_n[0] += "#"+data[0];
                    int index = Integer.parseInt(w_n[1])-1;
                    if(_temp.containsKey(w_n[0]))
                    {
                        Vector<Double> v = _temp.get(w_n[0]);
                        if(index>v.size())
                            for(int i = v.size();i<index; i++)
                                v.add(0.0);
                        v.add(index, score);
                        _temp.put(w_n[0], v);
                    }
                    else
                    {
                        Vector<Double> v = new Vector<Double>();
                        for(int i = 0;i<index; i++)
                            v.add(0.0);
                        v.add(index, score);
                        _temp.put(w_n[0], v);
                    }
                }
            }
            Set<String> temp = _temp.keySet();
            for (Iterator<String> iterator = temp.iterator(); iterator.hasNext();) {
                String word = (String) iterator.next();
                Vector<Double> v = _temp.get(word);
                double score = 0.0;
                double sum = 0.0;
                for(int i = 0; i < v.size(); i++)
                    score += ((double)1/(double)(i+1))*v.get(i);
                for(int i = 1; i<=v.size(); i++)
                    sum += (double)1/(double)i;
                score /= sum;
                String sent = "";               
                if(score>=0.75)
                    sent = "strong_positive";
                else
                if(score > 0.25 && score<=0.5)
                    sent = "positive";
                else
                if(score > 0 && score>=0.25)
                    sent = "weak_positive";
                else
                if(score < 0 && score>=-0.25)
                    sent = "weak_negative";
                else
                if(score < -0.25 && score>=-0.5)
                    sent = "negative";
                else
                if(score<=-0.75)
                    sent = "strong_negative";
                _dict.put(word, sent);
            }
        }
        catch(Exception e){e.printStackTrace();}        
    }

    public String extract(String word, String pos)
    {
        return _dict.get(word+"#"+pos);
    }
}

Newcode:

public class SWN3 {
        private String pathToSWN = "C:\\Users\\MyName\\Desktop\\SentiWordNet_3.0.0\\home\\swn\\www\\admin\\dump\\SentiWordNet_3.0.0.txt";
    private HashMap<String, String> _dict;

    public SWN3(){

        _dict = new HashMap<String, String>();
        HashMap<String, Vector<Double>> _temp = new HashMap<String, Vector<Double>>();
        try{
            BufferedReader csv =  new BufferedReader(new FileReader(pathToSWN));
            String line = "";           
            while((line = csv.readLine()) != null)
            {
                String[] data = line.split("\t");
                Double score = Double.parseDouble(data[2])-Double.parseDouble(data[3]);
                String[] words = data[4].split(" ");
                for(String w:words)
                {
                    String[] w_n = w.split("#");
                    w_n[0] += "#"+data[0];
                    int index = Integer.parseInt(w_n[1])-1;
                    if(_temp.containsKey(w_n[0]))
                    {
                        Vector<Double> v = _temp.get(w_n[0]);
                        if(index>v.size())
                            for(int i = v.size();i<index; i++)
                                v.add(0.0);
                        v.add(index, score);
                        _temp.put(w_n[0], v);
                    }
                    else
                    {
                        Vector<Double> v = new Vector<Double>();
                        for(int i = 0;i<index; i++)
                            v.add(0.0);
                        v.add(index, score);
                        _temp.put(w_n[0], v);
                    }
                }
            }
            Set<String> temp = _temp.keySet();
            for (Iterator<String> iterator = temp.iterator(); iterator.hasNext();) {
                String word = (String) iterator.next();
                Vector<Double> v = _temp.get(word);
                double score = 0.0;
                double sum = 0.0;
                for(int i = 0; i < v.size(); i++)
                    score += ((double)1/(double)(i+1))*v.get(i);
                for(int i = 1; i<=v.size(); i++)
                    sum += (double)1/(double)i;
                score /= sum;
                String sent = "";               
                if(score>=0.75)
                    sent = "strong_positive";
                else
                if(score > 0.25 && score<=0.5)
                    sent = "positive";
                else
                if(score > 0 && score>=0.25)
                    sent = "weak_positive";
                else
                if(score < 0 && score>=-0.25)
                    sent = "weak_negative";
                else
                if(score < -0.25 && score>=-0.5)
                    sent = "negative";
                else
                if(score<=-0.75)
                    sent = "strong_negative";
                _dict.put(word, sent);
            }
        }
        catch(Exception e){e.printStackTrace();}        
    }

    public Double extract(String word)
    {
        Double total = new Double(0);
        if(_dict.get(word+"#n") != null)
             total = _dict.get(word+"#n") + total;
        if(_dict.get(word+"#a") != null)
            total = _dict.get(word+"#a") + total;
        if(_dict.get(word+"#r") != null)
            total = _dict.get(word+"#r") + total;
        if(_dict.get(word+"#v") != null)
            total = _dict.get(word+"#v") + total;
        return total;
    }

    public String classifytweet(){
        String[] words = twit.split("\\s+"); 
        double totalScore = 0, averageScore;
        for(String word : words) {
            word = word.replaceAll("([^a-zA-Z\\s])", "");
            if (_sw.extract(word) == null)
                continue;
            totalScore += _sw.extract(word);
        }
        Double AverageScore = totalScore;

        if(averageScore>=0.75)
            return "very positive";
        else if(averageScore > 0.25 && averageScore<0.5)
            return  "positive";
        else if(averageScore>=0.5)
            return  "positive";
        else if(averageScore < 0 && averageScore>=-0.25)
            return "negative";
        else if(averageScore < -0.25 && averageScore>=-0.5)
            return "negative";
        else if(averageScore<=-0.75)
            return "very negative";
        return "neutral";
    }

    public static void main(String[] args) {
        // TODO Auto-generated method stub
    }
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2 Answers 2

up vote 4 down vote accepted

First of all start by deleting all the "garbage" at the first of the file (which includes description, instruction etc..)

One possible usage is to change SWN3 an make the method extract in it return a Double:

public Double extract(String word)
{
    Double total = new Double(0);
    if(_dict.get(word+"#n") != null)
         total = _dict.get(word+"#n") + total;
    if(_dict.get(word+"#a") != null)
        total = _dict.get(word+"#a") + total;
    if(_dict.get(word+"#r") != null)
        total = _dict.get(word+"#r") + total;
    if(_dict.get(word+"#v") != null)
        total = _dict.get(word+"#v") + total;
    return total;
}

Then, giving a String that you want to tag, you can split it so it'll have only words (with no signs and unknown chars) and using the result returned from extract method on each word, you can decide what is the average weight of the String:

String[] words = twit.split("\\s+"); 
double totalScore = 0, averageScore;
for(String word : words) {
    word = word.replaceAll("([^a-zA-Z\\s])", "");
    if (_sw.extract(word) == null)
        continue;
    totalScore += _sw.extract(word);
}
verageScore = totalScore;

if(averageScore>=0.75)
    return "very positive";
else if(averageScore > 0.25 && averageScore<0.5)
    return  "positive";
else if(averageScore>=0.5)
    return  "positive";
else if(averageScore < 0 && averageScore>=-0.25)
    return "negative";
else if(averageScore < -0.25 && averageScore>=-0.5)
    return "negative";
else if(averageScore<=-0.75)
    return "very negative";
return "neutral";

I found this way easier and it works fine for me.


UPDATE:

I changed _dict to _dict = new HashMap<String, Double>(); So it will have a String key and a Double value.

So I replaced _dict.put(word, sent); wish _dict.put(word, score);

share|improve this answer
    
Hi thanks for the reply, I'm still not clear on some parts. What does this mean? if(_dict.get(word+"#r") != null) #n,#a,#r,#v ? Thanks! –  Belgarion Mar 27 '13 at 7:04
1  
If you look at the first column of the file, you'll notice these letters (which stands for noun, verb..) so you should cover all the cases. –  Maroun Maroun Mar 27 '13 at 7:10
1  
Ah I see. I still need a bit more help, where to I put my link to my tweet.csv file? C:\Users\MyName\Desktop\tweets.csv I pasted my updated code above, pls feel free to edit it, thanks! –  Belgarion Mar 27 '13 at 7:41
    
Sorry for asking so much, Haha.. I'm new, would really appreciate it! =) –  Belgarion Mar 27 '13 at 7:59
    
@Belgarion I don't understand your question, can you please explain it one more time? And feel free to ask whatever you want :) –  Maroun Maroun Mar 27 '13 at 10:13

for that you should write the main function, in that provide the path of csv, extract words from it. and then call extract function by sending the word and its pos.

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