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I will be getting document written in Chinese language for which I have to tokenize and keep it in database table. I was trying the CJKBigramFilter of Lucene but all it does is unite the 2 character together for which the meaning is different then what is there in document. Suppose this is a line in the file "Hello My name is Pradeep" which in chinese tradition is "你好我的名字是普拉迪普". When I tokenize it, it gets converted to the 2 letter words below. 你好 - Hello 名字 - Name 好我 - Well I 字是 - Word is 我的 - My 拉迪 - Radi 是普 - Is the S & P 普拉 - Pula 的名 - In the name of 迪普 - Dipp. All I want is it to convert to same English translation. I am using Lucene for this...if you have any other favourable opne source please direct me to that. Thanks in Advance

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This post might be helpful stackoverflow.com/questions/7626912/… – Timo Westkämper Sep 18 '12 at 19:54
Well it is totally different in the sense that Stanford have their own setup for tokenizing chinese character which I cannot use as I am using Lucene. I jsut wanted to know that in Lucene how can i tokenize Chinese character as such describe above in my problem statment. – Pradeep Sep 18 '12 at 21:49

Though may be too late, you might try U-Tokenizer which is an online API, it is available for free. See http://tokenizer.tool.uniwits.com/

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Can you please add a bit more to your answer and explain how one could use the site. – Andro Selva Nov 18 '12 at 6:38
Please read tokenizer.tool.uniwits.com/qx-cmd-api.html for a guide. If you have detailed questions, I will try to answer specifically. – Afante Feb 2 '13 at 2:57

If you want a full blown NLP parser, checkout out http://nlp.stanford.edu

If you want a simple, one-off solution for Chinese, here is what I used.

First load a Chinese dictionary into a Trie (Prefix-Tree) to reduce memory footprint. I then walked through the sentences a character at a time observing wither substrings existed in the dictionary. If they did, I would parse it as a token. The algorithm could likely be improved greatly, but this has served me well. :)

public class ChineseWordTokenizer implements WordTokenizer {

    private static final int MAX_MISSES = 6;

    // example implementation: http://www.kennycason.com/posts/2012-03-20-java-trie-prefix-tree.html
    private StringTrie library;

    private boolean loadTraditional;

    public ChineseWordTokenizer() {

    public ChineseWordTokenizer(boolean loadTraditional) {
        this.loadTraditional = loadTraditional;

    public String[] parse(String sentence) {
        final List<String> words = new ArrayList<>();
        String word;
        for (int i = 0; i < sentence.length(); i++) {
            int len = 1;
            boolean loop = false;
            int misses = 0;
            int lastCorrectLen = 1;
            boolean somethingFound = false;
            do {
                word = sentence.substring(i, i + len);
                if (library.contains(word)) {
                    somethingFound = true;
                    lastCorrectLen = len;
                    loop = true;
                } else {
                    loop = misses < MAX_MISSES;
                if(i + len > sentence.length()) {;
                    loop = false;
            } while (loop);

            if(somethingFound) {
                word = sentence.substring(i, i + lastCorrectLen);
                if (StringUtils.isNotBlank(word)) {
                    i += lastCorrectLen - 1;
        return words.toArray(new String[words.size()]);

    private void loadLibrary() {
        library = new StringTrie();
        if(loadTraditional) {


Here is a Unit Test

public class TestChineseWordTokenizer {

    public void test() {
        long time = System.currentTimeMillis();
        WordTokenizer tokenizer = new ChineseWordTokenizer();
        System.out.println("load time: " + (System.currentTimeMillis() - time) + " ms");

        String[] words = tokenizer.tokenize("弹道导弹");
        assertEquals(1, words.length);

        words = tokenizer.tokenize("美国人的文化.dog");
        assertEquals(3, words.length);

        words = tokenizer.tokenize("我是美国人");
        assertEquals(3, words.length);

        words = tokenizer.tokenize("政府依照法律行使执法权,如果超出法律赋予的权限范围,就是“滥用职权”;如果没有完全行使执法权,就是“不作为”。两者都是政府的错误。");

        words = tokenizer.tokenize("国家都有自己的政府。政府是税收的主体,可以实现福利的合理利用。");

    private void print(String[] words) {
        System.out.print("[ ");
        for(String word : words) {
            System.out.print(word + " ");

And Here are the results

Load Complete: 102135 Entries
load time: 236 ms
[ 弹道导弹 ]
[ 美国人 的 文化 ]
[ 我 是 美国人 ]
[ 政府 依照 法律 行使 执法 权 如果 超出 法律 赋予 的 权限 范围 就是 滥用职权 如果 没有 完全 行使 执法 权 就是 不 作为 两者 都 是 政府 的 错误 ]
[ 国家 都 有 自己 的 政府 政府 是 税收 的 主体 可以 实现 福利 的 合理 利用 ]
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