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  • Lucene系列-facet--转

    https://blog.csdn.net/whuqin/article/details/42524825

    1.facet的直观认识

    facet:面、切面、方面。个人理解就是维度,在满足query的前提下,观察结果在各维度上的分布(一个维度下各子类的数目)。

    如jd上搜“手机”,得到4009个商品。其中品牌、网络、价格就是商品的维度(facet),点击某个品牌或者网络,获取更细分的结果。

     

    点击品牌小米,获得小米手机的结果,显示27个。

     

    点击移动4G,获得移动4G、小米手机,显示4个。

     

    2.facet特性

    facet counting:返回一个facet下某子类的结果数。如上面的品牌维度下小米子类中满足查询"手机"的结果有27个。
    facet associations:一个文档与某子类的关联度,如一本书30%讲lucene,70%讲solor,这个百分比就是书与分类的关联度(匹配度、信心度)。
    multiple facet requests:支持多facet查询(多维度查询)。如查询品牌为小米、网络为移动4G的手机。
    3.实例

    一个facet简单使用例子,依赖于lucene-facet-4.10.0。讲述了从搜手机到品牌、到网络向下browser的过程。

    public class SimpleFacetsExample {
    private final Directory indexDir = new RAMDirectory();
    private final Directory taxoDir = new RAMDirectory();
    private final FacetsConfig config = new FacetsConfig();

    /** Empty constructor */
    public SimpleFacetsExample() {
    config.setHierarchical("Publish Date", true);
    }

    /** Build the example index. */
    private void index() throws IOException {
    IndexWriter indexWriter = new IndexWriter(indexDir, new IndexWriterConfig(Version.LUCENE_4_10_0,
    new WhitespaceAnalyzer()));
    // Writes facet ords to a separate directory from the main index
    DirectoryTaxonomyWriter taxoWriter = new DirectoryTaxonomyWriter(taxoDir);

    Document doc = new Document();
    doc.add(new TextField("device", "手机", Field.Store.YES));
    doc.add(new TextField("name", "米1", Field.Store.YES));
    doc.add(new FacetField("brand", "小米"));
    doc.add(new FacetField("network", "移动4G"));
    indexWriter.addDocument(config.build(taxoWriter, doc));

    doc = new Document();
    doc.add(new TextField("device", "手机", Field.Store.YES));
    doc.add(new TextField("name", "米4", Field.Store.YES));
    doc.add(new FacetField("brand", "小米"));
    doc.add(new FacetField("network", "联通4G"));
    indexWriter.addDocument(config.build(taxoWriter, doc));

    doc = new Document();
    doc.add(new TextField("device", "手机", Field.Store.YES));
    doc.add(new TextField("name", "荣耀6", Field.Store.YES));
    doc.add(new FacetField("brand", "华为"));
    doc.add(new FacetField("network", "移动4G"));
    indexWriter.addDocument(config.build(taxoWriter, doc));

    doc = new Document();
    doc.add(new TextField("device", "电视", Field.Store.YES));
    doc.add(new TextField("name", "小米电视2", Field.Store.YES));
    doc.add(new FacetField("brand", "小米"));
    indexWriter.addDocument(config.build(taxoWriter, doc));

    taxoWriter.close();
    indexWriter.close();
    }

    private void facetsWithSearch() throws IOException {
    DirectoryReader indexReader = DirectoryReader.open(indexDir);
    IndexSearcher searcher = new IndexSearcher(indexReader);
    TaxonomyReader taxoReader = new DirectoryTaxonomyReader(taxoDir);

    FacetsCollector fc = new FacetsCollector();
    //1.查询手机
    System.out.println("-----手机-----");
    TermQuery query = new TermQuery(new Term("device", "手机"));
    FacetsCollector.search(searcher, query, 10, fc);
    Facets facets = new FastTaxonomyFacetCounts(taxoReader, config, fc);
    List<FacetResult> results = facets.getAllDims(10);
    //手机总共有3个,品牌维度:小米2个,华为1个;网络维度:移动4G 2个,联通4G 1个
    for (FacetResult tmp : results) {
    System.out.println(tmp);
    }
    //2.drill down,品牌选小米
    System.out.println("-----小米手机-----");
    DrillDownQuery drillDownQuery = new DrillDownQuery(config, query);
    drillDownQuery.add("brand", "小米");
    FacetsCollector fc1 = new FacetsCollector();//要new新collector,否则会累加
    FacetsCollector.search(searcher, drillDownQuery, 10, fc1);
    facets = new FastTaxonomyFacetCounts(taxoReader, config, fc1);
    results = facets.getAllDims(10);
    //获得小米手机的分布,总数2个,网络:移动4G 1个,联通4G 1个
    for (FacetResult tmp : results) {
    System.out.println(tmp);
    }

    //3.drill down,小米移动4G手机
    System.out.println("-----移动4G小米手机-----");
    drillDownQuery.add("network", "移动4G");
    FacetsCollector fc2 = new FacetsCollector();
    FacetsCollector.search(searcher, drillDownQuery, 10, fc2);
    facets = new FastTaxonomyFacetCounts(taxoReader, config, fc2);
    results = facets.getAllDims(10);
    for (FacetResult tmp : results) {
    System.out.println(tmp);
    }

    //4.drill sideways,横向浏览
    //如果已经进入了小米手机,但是还想看到其他牌子(华为)的手机数目,就用到了sideways
    System.out.println("-----小米手机drill sideways-----");
    DrillSideways ds = new DrillSideways(searcher, config, taxoReader);
    DrillDownQuery drillDownQuery1 = new DrillDownQuery(config, query);
    drillDownQuery1.add("brand", "小米");
    DrillSidewaysResult result = ds.search(drillDownQuery1, 10);
    results = result.facets.getAllDims(10);
    for (FacetResult tmp : results) {
    System.out.println(tmp);
    }

    indexReader.close();
    taxoReader.close();
    }

    /** Runs the search and drill-down examples and prints the results. */
    public static void main(String[] args) throws Exception {
    SimpleFacetsExample example = new SimpleFacetsExample();
    example.index();
    example.facetsWithSearch();
    }
    }
    输出:


    -----手机-----
    //总数3个,2个子类
    dim=brand path=[] value=3 childCount=2
    小米 (2)
    华为 (1)

    dim=network path=[] value=3 childCount=2
    移动4G (2)
    联通4G (1)

    -----小米手机-----
    //普通向下浏览,丢失了同一维度,其他子类的统计
    dim=brand path=[] value=2 childCount=1
    小米 (2)

    dim=network path=[] value=2 childCount=2
    移动4G (1)
    联通4G (1)

    -----移动4G小米手机-----
    dim=brand path=[] value=1 childCount=1
    小米 (1)

    dim=network path=[] value=1 childCount=1
    移动4G (1)

    -----小米手机drill sideways-----
    //drill sideways, 保留了该drill维度的其他子类统计
    dim=brand path=[] value=3 childCount=2
    小米 (2)
    华为 (1)
    //小米手机中的网络分布
    dim=network path=[] value=2 childCount=2
    移动4G (1)
    联通4G (1)

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  • 原文地址:https://www.cnblogs.com/davidwang456/p/10001465.html
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