blob: e4eab9d4fc1c120a72d26d062da70882d8c5eed0 [file] [log] [blame]
drop dataverse fuzzyjoin if exists;
create dataverse fuzzyjoin;
use dataverse fuzzyjoin;
create type DBLPType as open {
id: int32,
dblpid: string,
title: string,
authors: string,
misc: string
}
create type CSXType as open {
id: int32,
csxid: string,
title: string,
authors: string,
misc: string
}
create dataset DBLP(DBLPType) partitioned by key id;
create dataset CSX(CSXType) partitioned by key id;
load dataset DBLP
using "edu.uci.ics.asterix.external.dataset.adapter.NCFileSystemAdapter"
(("path"="nc1://data/pub-small/dblp-small-id.txt"),("format"="delimited-text"),("delimiter"=":"));
load dataset CSX
using "edu.uci.ics.asterix.external.dataset.adapter.NCFileSystemAdapter"
(("path"="nc1://data/pub-small/csx-small-id.txt"),("format"="delimited-text"),("delimiter"=":"));
write output to nc1:'rttest/fuzzyjoin_dblp-csx-3_5.4.adm';
//
// -- - Stage 3 - --
//
for $paperCSX in dataset('CSX')
for $paperDBLPridpair in
for $paperDBLP in dataset('DBLP')
for $ridpair in
//
// -- - Stage 2 - --
//
for $paperDBLP in dataset('DBLP')
let $idDBLP := $paperDBLP.id
let $tokensUnrankedDBLP := counthashed-word-tokens($paperDBLP.title)
let $lenDBLP := len($tokensUnrankedDBLP)
let $tokensDBLP :=
for $tokenUnranked in $tokensUnrankedDBLP
for $tokenRanked at $i in
//
// -- - Stage 1 - --
//
for $paper in dataset('DBLP')
let $id := $paper.id
for $token in counthashed-word-tokens($paper.title)
/*+ hash */
group by $tokenGrouped := $token with $id
/*+ inmem 1 302 */
order by count($id), $tokenGrouped
return $tokenGrouped
where $tokenUnranked = /*+ bcast */ $tokenRanked
order by $i
return $i
for $prefixTokenDBLP in subset-collection(
$tokensDBLP,
0,
prefix-len-jaccard(len($tokensDBLP), .5f))
for $paperCSX in dataset('CSX')
let $idCSX := $paperCSX.id
let $tokensUnrankedCSX := counthashed-word-tokens($paperCSX.title)
let $lenCSX := len($tokensUnrankedCSX)
let $tokensCSX :=
for $tokenUnranked in $tokensUnrankedCSX
for $tokenRanked at $i in
//
// -- - Stage 1 - --
//
for $paper in dataset('DBLP')
let $id := $paper.id
for $token in counthashed-word-tokens($paper.title)
/*+ hash */
group by $tokenGrouped := $token with $id
/*+ inmem 1 302 */
order by count($id), $tokenGrouped
return $tokenGrouped
where $tokenUnranked = /*+ bcast */ $tokenRanked
order by $i
return $i
for $prefixTokenCSX in subset-collection(
$tokensCSX,
0,
prefix-len-jaccard(len($tokensCSX), .5f))
where $prefixTokenDBLP = $prefixTokenCSX
let $sim := similarity-jaccard-prefix(
$lenDBLP,
$tokensDBLP,
$lenCSX,
$tokensCSX,
$prefixTokenDBLP,
.5f)
where $sim >= .5f
/*+ hash*/
group by $idDBLP := $idDBLP, $idCSX := $idCSX with $sim
return {'idDBLP': $idDBLP, 'idCSX': $idCSX, 'sim': $sim[0]}
where $ridpair.idDBLP = $paperDBLP.id
return {'idDBLP': $paperDBLP.id, 'paperDBLP': $paperDBLP, 'idCSX': $ridpair.idCSX, 'sim': $ridpair.sim}
where $paperDBLPridpair.idCSX = $paperCSX.id
// order by $paperDBLPridpair.idDBLP, $paperDBLPridpair.idCSX
order by $paperDBLPridpair.paperDBLP.id, $paperDBLPridpair.idCSX
return {'dblp': $paperDBLPridpair.paperDBLP, 'csx': $paperCSX, 'sim': $paperDBLPridpair.sim}