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Pyserini: TCT-ColBERTv2 for MS MARCO (V1) Collections

This guide provides instructions to reproduce the family of TCT-ColBERT-V2 dense retrieval models described in the following paper:

Sheng-Chieh Lin, Jheng-Hong Yang, and Jimmy Lin. In-Batch Negatives for Knowledge Distillation with Tightly-CoupledTeachers for Dense Retrieval. Proceedings of the 6th Workshop on Representation Learning for NLP (RepL4NLP-2021), pages 163-173, August 2021.

Note that we often observe minor differences in scores between different computing environments (e.g., Linux vs. macOS). However, the differences usually appear in the fifth digit after the decimal point, and do not appear to be a cause for concern from a reproducibility perspective. Thus, while the scoring script provides results to much higher precision, we have intentionally rounded to four digits after the decimal point.

MS MARCO Passage Ranking

Summary of results (figures from the paper are in parentheses):

Condition MRR@10 (paper) MAP Recall@1000
TCT_ColBERT-V2 (brute-force index) 0.3440 (0.344) 0.3509 0.9670
TCT_ColBERT-V2-HN (brute-force index) 0.3543 (0.354) 0.3608 0.9708
TCT_ColBERT-V2-HN+ (brute-force index) 0.3584 (0.359) 0.3644 0.9695
TCT_ColBERT-V2-HN+ (brute-force index) + BoW BM25 0.3682 (0.369) 0.3737 0.9707
TCT_ColBERT-V2-HN+ (brute-force index) + BM25 w/ doc2query-T5 0.3731 (0.375) 0.3789 0.9759

The slight differences between the reproduced scores and those reported in the paper can be attributed to TensorFlow implementations in the published paper vs. PyTorch implementations here in this reproduction guide.

TCT_ColBERT-V2

Dense retrieval with TCT-ColBERT (v2), brute-force index:

python -m pyserini.search.faiss \
  --index msmarco-v1-passage.tct_colbert-v2 \
  --topics msmarco-passage-dev-subset \
  --encoded-queries tct_colbert-v2-msmarco-passage-dev-subset \
  --output runs/run.msmarco-passage.tct_colbert-v2.tsv \
  --output-format msmarco \
  --batch-size 512 --threads 16

Note that to ensure maximum reproducibility, by default Pyserini uses pre-computed query representations that are automatically downloaded. As an alternative, replace with --encoder castorini/tct_colbert-v2-msmarco to perform "on-the-fly" query encoding, i.e., convert text queries into dense vectors as part of the dense retrieval process.

To evaluate:

python -m pyserini.eval.msmarco_passage_eval msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2.tsv

Results:

#####################
MRR @10: 0.3440
QueriesRanked: 6980
#####################

We can also use the official TREC evaluation tool trec_eval to compute other metrics than MRR@10. For that we first need to convert runs and qrels files to the TREC format:

python -m pyserini.eval.convert_msmarco_run_to_trec_run \
  --input runs/run.msmarco-passage.tct_colbert-v2.tsv \
  --output runs/run.msmarco-passage.tct_colbert-v2.trec

python -m pyserini.eval.trec_eval -c -mrecall.1000 -mmap msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2.trec

Results:

map                     all     0.3509
recall_1000             all     0.9670

TCT_ColBERT-V2-HN

Dense retrieval with TCT-ColBERT (v2) HN variant, brute-force index:

python -m pyserini.search.faiss \
  --index msmarco-v1-passage.tct_colbert-v2-hn \
  --topics msmarco-passage-dev-subset \
  --encoded-queries tct_colbert-v2-hn-msmarco-passage-dev-subset \
  --output runs/run.msmarco-passage.tct_colbert-v2-hn.tsv \
  --output-format msmarco \
  --batch-size 512 --threads 16

Note that to ensure maximum reproducibility, by default Pyserini uses pre-computed query representations that are automatically downloaded. As an alternative, replace with --encoder castorini/tct_colbert-v2-hn-msmarco to perform "on-the-fly" query encoding, i.e., convert text queries into dense vectors as part of the dense retrieval process.

To evaluate:

python -m pyserini.eval.msmarco_passage_eval msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2-hn.tsv

Results:

#####################
MRR @10: 0.3543
QueriesRanked: 6980
#####################

And TREC evaluation:

python -m pyserini.eval.convert_msmarco_run_to_trec_run \
  --input runs/run.msmarco-passage.tct_colbert-v2-hn.tsv \
  --output runs/run.msmarco-passage.tct_colbert-v2-hn.trec

python -m pyserini.eval.trec_eval -c -mrecall.1000 -mmap msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2-hn.trec

Results:

map                     all     0.3608
recall_1000             all     0.9708

TCT_ColBERT-V2-HN+

Dense retrieval with TCT-ColBERT (v2) HN+ variant, brute-force index:

python -m pyserini.search.faiss \
  --index msmarco-v1-passage.tct_colbert-v2-hnp \
  --topics msmarco-passage-dev-subset \
  --encoded-queries tct_colbert-v2-hnp-msmarco-passage-dev-subset \
  --output runs/run.msmarco-passage.tct_colbert-v2-hnp.tsv \
  --output-format msmarco \
  --batch-size 512 --threads 16

Note that to ensure maximum reproducibility, by default Pyserini uses pre-computed query representations that are automatically downloaded. As an alternative, replace with --encoder castorini/tct_colbert-v2-hnp-msmarco to perform "on-the-fly" query encoding, i.e., convert text queries into dense vectors as part of the dense retrieval process.

To evaluate:

python -m pyserini.eval.msmarco_passage_eval msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2-hnp.tsv

Results:

#####################
MRR @10: 0.3584
QueriesRanked: 6980
#####################

And TREC evaluation:

python -m pyserini.eval.convert_msmarco_run_to_trec_run \
  --input runs/run.msmarco-passage.tct_colbert-v2-hnp.tsv \
  --output runs/run.msmarco-passage.tct_colbert-v2-hnp.trec

python -m pyserini.eval.trec_eval -c -mrecall.1000 -mmap msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2-hnp.trec

Results:

map                     all     0.3644
recall_1000             all     0.9695

Hybrid Dense-Sparse Retrieval with TCT_ColBERT-V2-HN+

Hybrid retrieval with dense-sparse representations (without document expansion):

  • dense retrieval with TCT-ColBERT, brute force index.
  • sparse retrieval with BM25 (i.e., default bag-of-words) index.
python -m pyserini.search.hybrid \
  dense  --index msmarco-v1-passage.tct_colbert-v2-hnp \
         --encoded-queries tct_colbert-v2-hnp-msmarco-passage-dev-subset \
  sparse --index msmarco-v1-passage \
  fusion --alpha 0.06 \
  run    --topics msmarco-passage-dev-subset \
         --output-format msmarco \
         --output runs/run.msmarco-passage.tct_colbert-v2-hnp.bm25.tsv \
         --batch-size 512 --threads 16

To evaluate:

python -m pyserini.eval.msmarco_passage_eval msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2-hnp.bm25.tsv

Results:

#####################
MRR @10: 0.3682
QueriesRanked: 6980
#####################

And TREC evaluation:

python -m pyserini.eval.convert_msmarco_run_to_trec_run \
  --input runs/run.msmarco-passage.tct_colbert-v2-hnp.bm25.tsv \
  --output runs/run.msmarco-passage.tct_colbert-v2-hnp.bm25.trec

python -m pyserini.eval.trec_eval -c -mrecall.1000 -mmap msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2-hnp.bm25.trec

Results:

map                   	all	0.3737
recall_1000           	all	0.9707

Follow the same instructions above to perform on-the-fly query encoding.

Hybrid retrieval with dense-sparse representations (with document expansion):

  • dense retrieval with TCT-ColBERT, brute force index.
  • sparse retrieval with doc2query-T5 expanded index.
python -m pyserini.search.hybrid \
  dense  --index msmarco-v1-passage.tct_colbert-v2-hnp \
         --encoded-queries tct_colbert-v2-hnp-msmarco-passage-dev-subset \
  sparse --index msmarco-v1-passage.d2q-t5 \
  fusion --alpha 0.1 \
  run    --topics msmarco-passage-dev-subset \
         --output runs/run.msmarco-passage.tct_colbert-v2-hnp.doc2queryT5.tsv \
         --output-format msmarco \
         --batch-size 512 --threads 16

To evaluate:

python -m pyserini.eval.msmarco_passage_eval msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2-hnp.doc2queryT5.tsv

Results:

#####################
MRR @10: 0.3731
QueriesRanked: 6980
#####################

And TREC evaluation:

python -m pyserini.eval.convert_msmarco_run_to_trec_run \
  --input runs/run.msmarco-passage.tct_colbert-v2-hnp.doc2queryT5.tsv \
  --output runs/run.msmarco-passage.tct_colbert-v2-hnp.doc2queryT5.trec

python -m pyserini.eval.trec_eval -c -mrecall.1000 -mmap msmarco-passage-dev-subset \
  runs/run.msmarco-passage.tct_colbert-v2-hnp.doc2queryT5.trec

Results:

map                   	all	0.3789
recall_1000           	all	0.9759

Follow the same instructions above to perform on-the-fly query encoding.

MS MARCO Document Ranking

We can also perform retrieval with the models trained on the MS MARCO passage corpus (above), but applied to the MS MARCO document corpus in a zero-shot manner.

# MS MARCO doc queries (dev set)
python -m pyserini.search.faiss \
  --index msmarco-v1-doc-segmented.tct_colbert-v2-hnp \
  --topics msmarco-doc-dev \
  --encoder castorini/tct_colbert-v2-hnp-msmarco \
  --output runs/run.msmarco-doc.passage.tct_colbert-v2-hnp-maxp.txt \
  --output-format msmarco \
  --hits 1000 \
  --max-passage \
  --max-passage-hits 100 \
  --batch-size 512 --threads 16

# TREC 2019 DL queries
python -m pyserini.search.faiss \
  --index msmarco-v1-doc-segmented.tct_colbert-v2-hnp \
  --topics dl19-doc \
  --encoder castorini/tct_colbert-v2-hnp-msmarco \
  --output runs/run.dl19-doc.passage.tct_colbert-v2-hnp-maxp.txt \
  --hits 1000 \
  --max-passage \
  --max-passage-hits 100 \
  --batch-size 512 --threads 16

# TREC 2020 DL queries
python -m pyserini.search.faiss \
  --index msmarco-v1-doc-segmented.tct_colbert-v2-hnp \
  --topics dl20 \
  --encoder castorini/tct_colbert-v2-hnp-msmarco \
  --output runs/run.dl20-doc.passage.tct_colbert-v2-hnp-maxp.txt \
  --hits 1000 \
  --max-passage \
  --max-passage-hits 100 \
  --batch-size 512 --threads 16

Evaluation on MS MARCO doc queries (dev set):

python -m pyserini.eval.msmarco_doc_eval \
  --judgments msmarco-doc-dev \
  --run runs/run.msmarco-doc.passage.tct_colbert-v2-hnp-maxp.txt

Results:

#####################
MRR @100: 0.3512
QueriesRanked: 5193
#####################

And TREC evaluation:

python -m pyserini.eval.convert_msmarco_run_to_trec_run \
  --input runs/run.msmarco-doc.passage.tct_colbert-v2-hnp-maxp.txt \
  --output runs/run.msmarco-doc.passage.tct_colbert-v2-hnp-maxp.trec

python -m pyserini.eval.trec_eval -c -m recall.100 -m map -m ndcg_cut.10 \
  msmarco-doc-dev runs/run.msmarco-doc.passage.tct_colbert-v2-hnp-maxp.trec

Results:

map                     all     0.3512
recall_100              all     0.8910
ndcg_cut_10             all     0.4128

Evaluation on TREC 2019 DL queries:

python -m pyserini.eval.trec_eval -c -mrecall.100 -mmap -mndcg_cut.10 dl19-doc \
  runs/run.dl19-doc.passage.tct_colbert-v2-hnp-maxp.txt

Results:

Results:
map                     all     0.2684
recall_100              all     0.3854
ndcg_cut_10             all     0.6593

Evaluation on TREC 2020 DL queries:

python -m pyserini.eval.trec_eval -c -mrecall.100 -mmap -mndcg_cut.10 dl20-doc \
  runs/run.dl20-doc.passage.tct_colbert-v2-hnp-maxp.txt

Results:

Results:
map                     all     0.3914
recall_100              all     0.5964
ndcg_cut_10             all     0.6094

Reproduction Log*