solr中facet及facet.pivot理解(整合两篇文章保留参考)

Facet['fæsɪt]很难翻译,只能靠例子来理解了。Solr作者Yonik Seeley也给出更为直接的名字:导航(Guided Navigation)、参数化查询(Paramatic Search)。

image

上面是比较直接的Faceted Search例子,品牌、产品特征、卖家,均是 Facet 。而Apple、Lenovo等品牌,就是 Facet values 或者说 Constraints ,而Facet values所带的统计值就是 Facet count/Constraint count 。

2 、Facet 使用

q = 超级本 
facet = true 
facet.field = 产品特性 
facet.field = 品牌 
facet.field = 卖家

http://…/select?q=超级本&facet=true&wt=json

&facet.field=品牌&facet.field=产品特性&facet.field=卖家

也可以提交查询条件,设置fq(filter query)。

q = 电脑 
facet = true 
fq = 价格:[8000 TO *] 
facet.mincount = 1 // fq将不符合的字段过滤后,会显示count为0 
facet.field = 产品特性 
facet.field = 品牌 
facet.field = 卖家

http://…/select?q=超级本&facet=true&wt=json

&fq=价格:[8000 TO *]&facet.mincount=1

&facet.field=品牌&facet.field=产品特性&facet.field=卖家

"facet_counts": {
"facet_fields": {
  "品牌": [
    "Apple", 4,
    "Lenovo", 39
      …]
  "产品特性": [
    "显卡", 42,
    "酷睿", 38
      …]
 
  …}}

如果用户选择了Apple这个分类,查询条件中需要添加另外一个fq查询条件,并移除Apple所在的facet.field。

http://…/select?q=超级本&facet=true&wt=json

&fq=价格:[8000 TO *]&fq=品牌:Apple&facet.mincount=1

&facet.field= 品牌 &facet.field=产品特性&facet.field=卖家

3 、Facet 参数

facet.prefix  –   限制constaints的前缀

facet.mincount=0 –  限制constants count的最小返回值,默认为0

facet.sort=count –  排序的方式,根据count或者index

facet.offset=0  –   表示在当前排序情况下的偏移,可以做分页

facet.limit=100 –  constraints返回的数目

facet.missing=false –  是否返回没有值的field

facet.date –  Deprecated, use facet.range

facet.query

指定一个查询字符串作为Facet Constraint

facet.query = rank:[* TO 20]

facet.query = rank:[21 TO *]

"facet_counts": {
"facet_fields": {
  "品牌": [
    "Apple", 4,
    "Lenovo", 10
      …]
  "产品特性": [
    "显卡", 11,
    "酷睿", 20
      …]
 
  …}}

facet.range

http://…/select?&facet=true

&facet.range=price

&facet.range.start=5000

&facet.range.end=8000

&facet.range.gap=1000

<result numFound="27" ... />
 ...
 <lst name="facet_counts"> <lst name="facet_queries"> <int name="rank:[* TO 20]">2</int> <int name="rank:[21 TO *]">15</int> </lst> ...

WARNING:  range范围是左闭右开,[start, end)

facet.pivot

这个是Solr 4.0的新特性,pivot和facet一样难理解,还是用例子来讲吧。

Syntax:  facet.pivot=field1,field2,field3...

e.g.  facet.pivot=comment_user, grade

#docs

#docs grade:好

#docs 等级:中

#docs 等级:差

comment_user:1

10

8

1

1

comment_user:2

20

18

2

0

comment_user:3

15

12

2

1

comment_user:4

18

15

2

1

"facet_counts":{
"facet_pivot":{ "comment_user, grade ":[{ "field":"comment_user", "value":"1", "count":10, "pivot":[{ "field":"grade", "value":"", "count":8}, { "field":"grade", "value":"", "count":1}, { "field":"grade", "value":"", "count":1}] }, { "field":" comment_user ", "value":"2", "count":20, "pivot":[{ …

没有pivot机制的话,要做到上面那点可能需要多次查询:

http://...q= comment&fq= grade:好&facet=true&facet.field=comment_user

http://...q=comment&fq=grade:中&facet=true&facet.field=comment_user

http://...q=comment&fq=grade:差&facet=true&facet.field=comment_user

Facet.pivot -  Computes a Matrix of Constraint Counts across multiple Facet Fields. by Yonik Seeley.

上面那个解释很不错,只能理解不能翻译。

 

facet.pivot自己的理解,就是按照多个维度进行分组查询,以下是自己的实战代码,按照newsType,property两个维度统计:

public List<ReportNewsTypeDTO> queryNewsType( ReportQuery reportQuery) { HttpSolrServer solrServer = SolrServer.getInstance().getServer(); SolrQuery sQuery = new SolrQuery(); List<ReportNewsTypeDTO> list = new ArrayList<ReportNewsTypeDTO>(); try { String para = this.initReportQueryPara(reportQuery, 0); sQuery.setFacet(true); sQuery.add("facet.pivot", "newsType,property");//根据这两维度来分组查询 sQuery.setQuery(para); QueryResponse response = solrServer.query(sQuery,SolrRequest.METHOD.POST); NamedList<List<PivotField>> namedList = response.getFacetPivot(); System.out.println(namedList);//底下为啥要这样判断,把这个值打印出来,你就明白了 if(namedList != null){ List<PivotField> pivotList = null; for(int i=0;i<namedList.size();i++){ pivotList = namedList.getVal(i); if(pivotList != null){ ReportNewsTypeDTO dto = null; for(PivotField pivot:pivotList){ dto = new ReportNewsTypeDTO(); dto.setNewsTypeId((Integer)pivot.getValue()); dto.setNewsTypeName(News.newsTypeMap.get((Integer)pivot.getValue())); int pos = 0; int neg = 0; List<PivotField> fieldList = pivot.getPivot(); if(fieldList != null){ for(PivotField field:fieldList){ int proValue = (Integer) field.getValue(); int count = field.getCount(); if(proValue == 1){ pos = count; }else{ neg = count; } } } dto.setPositiveCount(pos); dto.setNegativeCount(neg); list.add(dto); } } } } return list; } catch (SolrServerException e) { log.error("查询solr失败", e); e.printStackTrace(); } finally{ solrServer.shutdown(); solrServer = null; } return list; }
namedList打印结果:
{newsType,property=
[
newsType:8 [4260] [property:1 [3698] null, property:0 [562] null], newsType:1 [1507] [property:1 [1389] null, property:0 [118] null], newsType:2 [1054] [property:1 [909] null, property:0 [145] null], newsType:6 [715] [property:1 [581] null, property:0 [134] null], newsType:4 [675] [property:1 [466] null, property:0 [209] null], newsType:3 [486] [property:1 [397] null, property:0 [89] null], newsType:7 [458] [property:1 [395] null, property:0 [63] null], newsType:5 [289] [property:1 [263] null, property:0 [26] null], newsType:9 [143] [property:1 [138] null, property:0 [5] null] ] } 这下应该明白了。写到这里,突然想到一个,所有的分组查询统计,不管是一个维度两个维度都可以使用face.pivot来统计,不错的东东。

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转载自www.cnblogs.com/cuihongyu3503319/p/10765999.html
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