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MS MARCO Anserini Index
Description
This is an index of the MS MARCO passage (v1) dataset with Anserini. It can be used for passage retrieval using lexical methods.
Usage
>>> from pyterrier_anserini import AnseriniIndex
>>> index = AnseriniIndex.from_hf('macavaney/msmarco-passage.anserini')
>>> bm25 = index.bm25(include_fields=['contents'])
>>> bm25.search('terrier breeds')
qid query docno score rank contents
0 1 terrier breeds 5785957 11.9588 0 The Jack Russell Terrier and the Russell ...
1 1 terrier breeds 7455374 11.9343 1 FCI, ANKC, and IKC recognize the shorts a...
2 1 terrier breeds 1406578 11.8640 2 Norfolk terrier (English breed of small t...
3 1 terrier breeds 3984886 11.7518 3 Terrier Group is the name of a breed Grou...
4 1 terrier breeds 7728131 11.5660 4 The Yorkshire Terrier didn't begin as the...
...
Benchmarks
TREC DL 2019
Code
from ir_measures import nDCG, RR, MAP, R
import pyterrier as pt
from pyterrier_anserini import AnseriniIndex
index = AnseriniIndex.from_hf('macavaney/msmarco-passage.anserini')
dataset = pt.get_dataset('irds:msmarco-passage/trec-dl-2019/judged')
pt.Experiment(
[index.bm25(), index.qld(), index.tfidf()],
dataset.get_topics(),
dataset.get_qrels(),
[nDCG@10, nDCG, RR(rel=2), MAP(rel=2), R(rel=2)@1000],
['BM25', 'QLD', 'TF-IDF'],
round=4,
)
name | nDCG@10 | nDCG | RR(rel=2) | AP(rel=2) | R(rel=2)@1000 | |
---|---|---|---|---|---|---|
0 | BM25 | 0.5121 | 0.61 | 0.715 | 0.3069 | 0.7529 |
1 | QLD | 0.4689 | 0.5995 | 0.606 | 0.3014 | 0.7662 |
2 | TF-IDF | 0.3742 | 0.5083 | 0.5203 | 0.2012 | 0.7016 |
TREC DL 2020
Code
from ir_measures import nDCG, RR, MAP, R
import pyterrier as pt
from pyterrier_anserini import AnseriniIndex
index = AnseriniIndex.from_hf('macavaney/msmarco-passage.anserini')
dataset = pt.get_dataset('irds:msmarco-passage/trec-dl-2020/judged')
pt.Experiment(
[index.bm25(), index.qld(), index.tfidf()],
dataset.get_topics(),
dataset.get_qrels(),
[nDCG@10, nDCG, RR(rel=2), MAP(rel=2), R(rel=2)@1000],
['BM25', 'QLD', 'TF-IDF'],
round=4,
)
name | nDCG@10 | nDCG | RR(rel=2) | AP(rel=2) | R(rel=2)@1000 | |
---|---|---|---|---|---|---|
0 | BM25 | 0.4769 | 0.5832 | 0.672 | 0.2827 | 0.7865 |
1 | QLD | 0.4584 | 0.5872 | 0.6238 | 0.2811 | 0.8179 |
2 | TF-IDF | 0.4029 | 0.5039 | 0.5526 | 0.2107 | 0.7323 |
MS MARCO Dev (small)
Code
from ir_measures import RR, R
import pyterrier as pt
from pyterrier_anserini import AnseriniIndex
index = AnseriniIndex.from_hf('macavaney/msmarco-passage.anserini')
dataset = pt.get_dataset('irds:msmarco-passage/dev/small')
pt.Experiment(
[index.bm25(), index.qld(), index.tfidf()],
dataset.get_topics(),
dataset.get_qrels(),
[RR@10, R@1000],
['BM25', 'QLD', 'TF-IDF'],
round=4,
)
name | RR@10 | R@1000 | |
---|---|---|---|
0 | BM25 | 0.1844 | 0.8567 |
1 | QLD | 0.1664 | 0.8508 |
2 | TF-IDF | 0.1368 | 0.8288 |
Reproduction
>>> import pyterrier as pt
>>> import pyterrier_anserini
>>> idx = pyterrier_anserini.AnseriniIndex('msmarco-passage.anserini')
>>> idx.indexer().index(pt.get_dataset('irds:msmarco-passage').get_corpus_iter())
Metadata
{
"type": "sparse_index",
"format": "anserini",
"package_hint": "pyterrier-anserini"
}
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