• 抓取之近似网页过滤


      抓取的网页内容中,有大部分会是相似的,抓取时就要过滤掉,开始考虑用VSM算法,后来发现不对,要比较太多东西了,然后就发现了simHash算法,这个算法的解释我就懒得copy了,simhash算法对于短数据的支持不好,但是,我本来就是很长的数据,用上!

      源码实现网上也有不少,但是貌似都是同样的,里面写得不清不楚的,虽然效果基本能达到,但是不清楚的东西,我用来做啥?

      仔细研究simhash算法的说明后,把里面字符串的hash算法换成的fvn-1算法,这个在http://www.isthe.com/chongo/tech/comp/fnv/里面有说明了,具体的那些固定数值,网站上都写了。原先代码里面有些处理,和算法不符的,也换掉了。

      首先搞起IKAnalyzer,切词并计算每个词的频率:

    package com.cnblogs.zxub.lucene.similarity;
    
    import java.io.IOException;
    import java.io.Reader;
    import java.io.StringReader;
    import java.util.HashMap;
    import java.util.Map;
    
    import org.apache.lucene.analysis.Analyzer;
    import org.apache.lucene.analysis.TokenStream;
    import org.apache.lucene.analysis.tokenattributes.CharTermAttribute;
    import org.wltea.analyzer.lucene.IKAnalyzer;
    
    public class WordsSpliter {
    
        public static Map<String, Integer> getSplitedWords(String str)
                throws IOException {
            // str = str.replaceAll("[0-9a-zA-Z]", "");
            Analyzer analyzer = new IKAnalyzer();
            Reader r = new StringReader(str);
            TokenStream ts = analyzer.tokenStream("searchValue", r);
            ts.addAttribute(CharTermAttribute.class);
    
            Map<String, Integer> result = new HashMap<String, Integer>();
            while (ts.incrementToken()) {
                CharTermAttribute ta = ts.getAttribute(CharTermAttribute.class);
                String word = ta.toString();
                if (!result.containsKey(word)) {
                    result.put(word, 0);
                }
                result.put(word, result.get(word) + 1);
            }
    
            return result;
        }
    }

       然后把SimHash的算法搞上:

    package com.cnblogs.zxub.lucene.similarity;
    
    import java.io.IOException;
    import java.math.BigInteger;
    import java.util.Map;
    import java.util.Set;
    
    public class SimHash {
    
        private static final int HASH_BITS = 64;
        private static final BigInteger FNV_64_INIT = new BigInteger(
                "14695981039346656037");
        private static final BigInteger FNV_64_PRIME = new BigInteger(
                "1099511628211");
        private static final BigInteger MASK_64 = BigInteger.ONE.shiftLeft(
                HASH_BITS).subtract(BigInteger.ONE);
    
        private String hash;
        private BigInteger signature;
    
        public SimHash(String content) throws IOException {
            super();
            this.analysis(content);
        }
    
        public String getHash() {
            return this.hash;
        }
    
        public BigInteger getSignature() {
            return this.signature;
        }
    
        private void analysis(String content) throws IOException {
            Map<String, Integer> wordInfos = WordsSpliter.getSplitedWords(content);
            int[] featureVector = new int[SimHash.HASH_BITS];
            Set<String> words = wordInfos.keySet();
            for (String word : words) {
                BigInteger wordhash = this.fnv1_64_hash(word);
                for (int i = 0; i < SimHash.HASH_BITS; i++) {
                    BigInteger bitmask = BigInteger.ONE.shiftLeft(SimHash.HASH_BITS
                            - i - 1);
                    if (wordhash.and(bitmask).signum() != 0) {
                        featureVector[i] += wordInfos.get(word);
                    } else {
                        featureVector[i] -= wordInfos.get(word);
                    }
                }
            }
    
            BigInteger signature = BigInteger.ZERO;
            StringBuffer hashBuffer = new StringBuffer();
            for (int i = 0; i < SimHash.HASH_BITS; i++) {
                if (featureVector[i] >= 0) {
                    signature = signature.add(BigInteger.ONE
                            .shiftLeft(SimHash.HASH_BITS - i - 1));
                    hashBuffer.append("1");
                } else {
                    hashBuffer.append("0");
                }
            }
            this.hash = hashBuffer.toString();
            this.signature = signature;
        }
    
        // fnv-1 hash算法,将字符串转换为64位hash值
        private BigInteger fnv1_64_hash(String str) {
            BigInteger hash = FNV_64_INIT;
            int len = str.length();
            for (int i = 0; i < len; i++) {
                hash = hash.multiply(FNV_64_PRIME);
                hash = hash.xor(BigInteger.valueOf(str.charAt(i)));
            }
            hash = hash.and(MASK_64);
            return hash;
        }
    
        public int getHammingDistance(BigInteger targetSignature) {
            BigInteger x = this.getSignature().xor(targetSignature);
            String s = x.toString(2);
            return s.replaceAll("0", "").length();
        }
    
        public int getHashDistance(String targetHash) {
            int distance;
            if (this.getHash().length() != targetHash.length()) {
                distance = -1;
            } else {
                distance = 0;
                for (int i = 0; i < this.getHash().length(); i++) {
                    if (this.getHash().charAt(i) != targetHash.charAt(i)) {
                        distance++;
                    }
                }
            }
            return distance;
        }
    }

      数据库里面存个签名就好了,至于距离运算,本打算全部拉出来计算,后来发现oracle的bitand函数,就用它了!异或之后,转二进制字符串,把0去掉,取长度,再count一下长度小于4的,得到的结果就是很相似的内容数目了。以后再把计算改成用缓存的去,先偷个懒。

      oracle函数部分贴上(注意Oracle的length函数永远不会返回0,最后要用个nvl函数,还有就是bitand在数值太大的时候,会溢出导致结果失误,所以要用utl_raw.bit_and,后面两个函数中字符串还不能用64位,改成128位搞定,估计还能小点,不弄了): 

    create or replace function bitxor(a in number,b in number) return number
    is
    begin
        return return a+b-2*to_number(utl_raw.bit_and(to_char(a),to_char(b)));
    end; create or replace function dec2bit(v_num number) return varchar is v_rtn varchar(128); v_n1 number; v_n2 number; begin v_n1 := v_num; loop v_n2 := mod(v_n1, 2); v_n1 := trunc(v_n1 / 2); v_rtn := to_char(v_n2) || v_rtn; exit when v_n1 = 0; end loop; return v_rtn; end; create or replace function hm_distance(a in number,b in number) return number is v_dis number; v_xor number; v_bit varchar(128); begin v_xor:=bitxor(a,b); v_bit:=dec2bit(v_xor); v_dis:=length(replace(v_bit,'0','')); return nvl(v_dis,0); end;

      跑一下 select hm_distance(1108937774045716955,1108937774045721051) from dual ,结果为1,o了。

      后面去用了下,发现fnv1居然正好撞到一个神奇的万金油,改成fnv1a就好了,代码就不改了。。。

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  • 原文地址:https://www.cnblogs.com/zxub/p/3918422.html
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