Upgrade to Pro
— share decks privately, control downloads, hide ads and more …
Speaker Deck
Features
Speaker Deck
PRO
Sign in
Sign up for free
Search
Search
Sparse, Dense, and Attentional Representations ...
Search
Scatter Lab Inc.
August 28, 2020
Research
0
2.3k
Sparse, Dense, and Attentional Representations for Text Retrieval
Scatter Lab Inc.
August 28, 2020
Tweet
Share
More Decks by Scatter Lab Inc.
See All by Scatter Lab Inc.
zeta introduction
scatterlab
0
1.7k
SimCLR: A Simple Framework for Contrastive Learning of Visual Representations
scatterlab
0
4k
Adversarial Filters of Dataset Biases
scatterlab
0
2.2k
Weight Poisoning Attacks on Pre-trained Models
scatterlab
0
2.2k
Approximate Nearest Neighbor Negative Contrastive Learning for Dense Text Retrieval
scatterlab
0
2.5k
Beyond Accuracy: Behavioral Testing of NLP Models with CheckList
scatterlab
0
2.3k
Open-Retrieval Conversational Question Answering
scatterlab
0
2.3k
What Can Neural Networks Reason About?
scatterlab
0
2.2k
Exploring the Limits of Transfer Learning with Unified Text-to-Text Transformer
scatterlab
0
2.2k
Other Decks in Research
See All in Research
電通総研の生成AI・エージェントの取り組みエンジニアリング業務向けAI活用事例紹介
isidaitc
1
680
公立高校入試等に対する受入保留アルゴリズム(DA)導入の提言
shunyanoda
0
6k
SSII2025 [TS3] 医工連携における画像情報学研究
ssii
PRO
2
1.2k
SSII2025 [SS1] レンズレスカメラ
ssii
PRO
2
980
EarthSynth: Generating Informative Earth Observation with Diffusion Models
satai
3
110
データサイエンティストの採用に関するアンケート
datascientistsociety
PRO
0
1.1k
チャッドローン:LLMによる画像認識を用いた自律型ドローンシステムの開発と実験 / ec75-morisaki
yumulab
1
510
20250502_ABEJA_論文読み会_スライド
flatton
0
180
Vision And Languageモデルにおける異なるドメインでの継続事前学習が性能に与える影響の検証 / YANS2024
sansan_randd
1
110
20250624_熊本経済同友会6月例会講演
trafficbrain
1
420
プロシェアリング白書2025_PROSHARING_REPORT_2025
circulation
1
900
最適決定木を用いた処方的価格最適化
mickey_kubo
4
1.7k
Featured
See All Featured
Testing 201, or: Great Expectations
jmmastey
43
7.6k
ピンチをチャンスに:未来をつくるプロダクトロードマップ #pmconf2020
aki_iinuma
126
53k
Building an army of robots
kneath
306
45k
The Art of Programming - Codeland 2020
erikaheidi
54
13k
Agile that works and the tools we love
rasmusluckow
329
21k
実際に使うSQLの書き方 徹底解説 / pgcon21j-tutorial
soudai
PRO
181
54k
How to Create Impact in a Changing Tech Landscape [PerfNow 2023]
tammyeverts
53
2.9k
Responsive Adventures: Dirty Tricks From The Dark Corners of Front-End
smashingmag
251
21k
Why You Should Never Use an ORM
jnunemaker
PRO
58
9.4k
BBQ
matthewcrist
89
9.7k
The Invisible Side of Design
smashingmag
301
51k
The World Runs on Bad Software
bkeepers
PRO
69
11k
Transcript
4QBSTF %FOTFBOE"UUFOUJPOBM 3FQSFTFOUBUJPOGPS5FYU3FUSJFWBM ҳ࢚ળ .-4DJFOUJTU
ݾର ݾର • Introduction • Analyzing Dual Encoder Retrieval •
Rank Preservation over Dense Model (Projection) • Rank Preservation over Sparse Model • Rank Preservation over Attention Model • Experiment & Analysis
*OUSPEVDUJPO
6TJOH&ODPEFSTPWFS3FUSJFWBM5BTL *OUSPEVDUJPO • য ௪ܻী ೧ࢲ ҙ۲ ח ޙױਸ যڌѱ
Ҏۄյ ࣻ ਸө? • TF-IDF ١ Sparse Modelਸ ഝਊೞৈ 1ରੋ റࠁ ޙࢲٜਸ Ҏۄն • ௪ܻ৬ п റࠁ ޙࢲٜਸ Dense Encoderܳ క -> ࢎ࢚ೠ ߭ఠܳ ഝਊೞৈ ਸ ୶ Contextualized Sparse Representation with Rectified N-Gram Attention for Open-Domain Question Answering, Lee et al., ICLR 2019
#J&ODPEFSGPS3FUSJFWBM *OUSPEVDUJPO • Cross-Encoder vs Bi-Encoder (Dual Encoder) • Cross-Encoder:
௪ܻ৬ റࠁܳ ೠ ੑ۱ਵ۽ ޘযࢲ ֍যࢲ ࠙ܨೞח ߑध • Bi-Encoder: ௪ܻ৬ റࠁܳ пп ܲ ੋ؊۽ ࢎ࢚ೠ റ ਬࢎبܳ ҅ೞח ߑध Poly-encoders: architectures and pre-training strategies for fast and accurate multi-sentence scoring Humeau et al., ICLR 2020
&GGFDUJWFOFTTPG%FOTJUZ *OUSPEVDUJPO • ੌ߈ਵ۽ Denseೠ ݽ؛ Sparseೠ ݽ؛ࠁ ࢿמ ؘ֫…
• ӟ ޙী ೧ࢲח ߈٘द Ӓۧ ঋਸ ࣻب ח അ࢚ਸ ߊѼ • ৵ Ӓۡө? • ରਗ ই ޙ ܳ ࣻਊೞח מ۱(Capacity) ࠗ೧ࢲ? • ޙਸ ੌ߈ചೞח מ۱(Generality)о ࠗ೧ࢲ?
&GGFDUJWFOFTTPG%FOTJUZ *OUSPEVDUJPO • ࠄ ֤ޙ ೨ब • Sparse Model ࢿמਸ
࢚ഥೞ۰ݶ Dense Model ରਗ ӝо ழঠ ೠ • ਃೠ ରਗ ӝח ޙࢲ ӡ৬ যൃ ंী ೧ Ѿػ • ই۞ Sparse Model, Random Projection, Attention Model (Cross Enc)ਸ ࠺Үೡ ٸ • Random Projection ରਗীࢲب ࢚ ࣻೠ ࢿמਸ ࠁݴ, • Attention Model ҃ীח ਃ ରਗ ӝח ਵա ҅ ݆ ਃೞ
"OBMZ[JOH%VBM&ODPEFS3FUSJFWBM
• ௪ܻ৬ ޙࢲী ೠ 1-hot അ q,d৬ ܳ ਤೠ
Encoder ೣࣻ fо Ҋ о • ਬࢎب ӝ߈ਵ۽ ࣻܳ ݫӟҊ о: <q, d>, <f(q), f(d)> .BUIFNBUJDBM3FQGPS&ODPEFST "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM tਘu t٣ૉפu tחu tઁu tకযu tլu R j G R &ODPEFS -45. #&35 j tਘu tੌۄযझu t٣ૉפu uחu tu E j G E &ODPEFS -45. #&35 j R E G R G E
3BOL1SFTFSWBUJPOPWFS%FOTF.PEFM "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • d1, d2ী ೧ࢲ “ࣽਤܳ ࠁઓೞח” Encoder
ೣࣻ fח ਸ ݅ೣ • d1, d2ী ೧ࢲ “ε-ഛೠ” Encoder ೣࣻח ਸ ݅ೣ ⟨q, d1 ⟩ > ⟨q, d2 ⟩ ⇒ ⟨f(q), f(d1 )⟩ > ⟨f(q), f(d2 )⟩ |∥f(q) − f(d)∥2 − ∥q − d∥2 | ≤ ϵ ⋅ ∥q − d∥2
3BOL1SFTFSWBUJPOPWFS%FOTF.PEFM "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • যڃ ੋ؊о যൃ ࢿ࠙ ӝ ߈࠺۹ೞח
য়ରਯਸ оݶ Ӓ ੋ؊ח ࣽਤܳ ࠁೠ.
3BOL1SFTFSWBUJPOPWFS%FOTF.PEFM "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • যڃ ੋ؊о যൃ ࢿ࠙ ӝ ߈࠺۹ೞח
য়ରਯਸ оݶ Ӓ ੋ؊ח ࣽਤܳ ࠁೠ. • औѱ ݈೧ࢲ যൃо ࣻ۾, ޙࢲ-௪ܻо ݆ਸࣻ۾ જ ੋ؊ܳ ٜ݅ӝ য۰
3BOL1SFTFSWBUJPOPWFS1SPKFDUJPO "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • Projection Method: Hyperplaneਵ۽ ߭ఠܳ ࢎ࢚೧ࢲ ୷ࣗदఃח
ӝߨ • Hyperplane ӝળ ন ҳрী ח, ҳрী ח۽ ӝࣿೣ
3BOL1SFTFSWBUJPOPWFS1SPKFDUJPO "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • Encoder f with contraction mapping •
ױੌ ೯۳۽ അغח ୷ࣗ ࢎ࢚ (ੋ؊) fо যࢲ (, f(x) = Ax) nѐ ޙࢲܳ ࢎ࢚ೡٸ • Rademacher Embedding, Gaussian Embedding: п ࢿ࠙ਸ ےؒೞѱ ࢶఖغਸ ٸ • જ Aܳ ٜ݅ӝ ਤೠ ୷ࣗ ߭ఠ ӝ kח ( ) ী ߈࠺۹ೞҊ ী ࠺۹ೣ ϵ2/2 − ϵ3/3 log(n)
3BOL1SFTFSWBUJPOPWFS1SPKFDUJPO "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • Encoder f with contraction mapping •
ױੌ ೯۳۽ അغח ୷ࣗ ࢎ࢚ (ੋ؊) fо যࢲ (, f(x) = Ax) nѐ ޙࢲܳ ࢎ࢚ೡٸ • Rademacher Embedding, Gaussian Embedding: п ࢿ࠙ਸ ےؒೞѱ ࢶఖغਸ ٸ • જ Aܳ ٜ݅ӝ ਤೠ ୷ࣗ ߭ఠ ӝ kח ( ) ী ߈࠺۹ೞҊ ী ࠺۹ೣ • औѱ ݈೧ࢲ, ୷ࣗػ ରਗ ӝо যוبח ழঠೞҊ, ח ޙࢲ ࣻী ೱਸ ߉ ϵ2/2 − ϵ3/3 log(n)
3BOL1SFTFSWBUJPOPWFS4QBSTF.PEFM "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • TF-IDF ݽ؛ਸ ࢤп೧ࠁӝ: ¯ qi = qi
⋅ IDFi tਘu t٣ૉפu tחu tઁu tకযu tլu R *%' q̅ tਘu t٣ૉפu j
3BOL1SFTFSWBUJPOPWFS4QBSTF.PEFM "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • TF-IDF ݽ؛ਸ ࢤп೧ࠁӝ: • TF-IDF ਬࢎبח
ഋక۽ ӝࣿؼ ࣻ • BM-25 ҃ীח =BM25(q,d) ഋక۽ ӝࣿؼ ࣻ ¯ qi = qi ⋅ IDFi ⟨¯ q, d⟩ ⟨¯ q, ¯ d⟩ tਘu t٣ૉפu tחu tઁu tకযu tլu R *%' q̅ tਘu t٣ૉפu j
3BOL1SFTFSWBUJPOPWFS4QBSTF.PEFM "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • ֤ী খࢲࢲ Normalized Margin Termਸ ೣ (ࣻ۾
ف ޙࢲр ରо դח ڷ) • TF-IDFܳ ୷ࣗ ࢎ࢚ ഋక۽ അೞח Aо ݶ (, ) • ࢎ࢚ য়ରਯ ী ࠺۹ೣ ¯ q = Aq, ¯ d = Ad 4exp(−k(δ2 − δ3)/4) δ(q, d1 , d2 ) = q ⋅ (d1 − d2 ) ∥q∥ ⋅ ∥d1 − d2 ∥
3BOL1SFTFSWBUJPOPWFS4QBSTF.PEFM "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • ֤ী খࢲࢲ Normalized Margin Termਸ ೣ (ࣻ۾
ف ޙࢲр ରо դח ڷ) • TF-IDFܳ ୷ࣗ ࢎ࢚ ഋక۽ അೞח Aо ݶ (, ) • ࢎ࢚ য়ରਯ ী ࠺۹ೣ • औѱ ݈೧ࢲ য়ରਯਸ ۰ݶ যוب ରਗ ӝо ࠁغযঠ ೣ ¯ q = Aq, ¯ d = Ad 4exp(−k(δ2 − δ3)/4) δ(q, d1 , d2 ) = q ⋅ (d1 − d2 ) ∥q∥ ⋅ ∥d1 − d2 ∥
3BOL1SFTFSWBUJPOPWFS"UUFOUJPO.PEFM "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • x = (x1, x2, …), y =
(y1, y2, …)ী ೧ࢲ cross-attentionਸ ഝਊೠ ղ җ э ӝࣿؽ
3BOL1SFTFSWBUJPOPWFS"UUFOUJPO.PEFM "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • x = (x1, x2, …), y =
(y1, y2, …)ী ೧ࢲ cross-attentionਸ ഝਊೠ ղ җ э ӝࣿؽ • औѱ ݈ೞݶ ࠁغযঠ ೞח ରਗ ӝח ௪ܻ ష ӡ ઁғী ࠺۹
3BOL1SFTFSWBUJPO 4VNNBSZ "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • যൃо ࣻ۾, ޙࢲ-௪ܻо ݆ਸࣻ۾ જ ੋ؊ܳ
ٜ݅ӝ য۰
3BOL1SFTFSWBUJPO 4VNNBSZ "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • যൃо ࣻ۾, ޙࢲ-௪ܻо ݆ਸࣻ۾ જ ੋ؊ܳ
ٜ݅ӝ য۰ • Ax ഋక۽ ରਗਸ ୷ࣗೡ ٸ, Ӓ ӝо যוبח ழঠೞҊ, ח ޙࢲ ࣻ ۽Ӓী ࠺۹ೣ
3BOL1SFTFSWBUJPO 4VNNBSZ "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • যൃо ࣻ۾, ޙࢲ-௪ܻо ݆ਸࣻ۾ જ ੋ؊ܳ
ٜ݅ӝ য۰ • Ax ഋక۽ ରਗਸ ୷ࣗೡ ٸ, Ӓ ӝо যוبח ழঠೞҊ, ח ޙࢲ ࣻ ۽Ӓী ࠺۹ೣ • TF-IDF ഋక Sparse ݽ؛ীࢲ য়ରਯਸ ۰ݶ যוب ରਗ ӝо ࠁغযঠ ೣ
3BOL1SFTFSWBUJPO 4VNNBSZ "OBMZ[JOH%VBM&ODPEFS3FUSJFWBM • যൃо ࣻ۾, ޙࢲ-௪ܻо ݆ਸࣻ۾ જ ੋ؊ܳ
ٜ݅ӝ য۰ • Ax ഋక۽ ରਗਸ ୷ࣗೡ ٸ, Ӓ ӝо যוبח ழঠೞҊ, ח ޙࢲ ࣻ ۽Ӓী ࠺۹ೣ • TF-IDF ഋక Sparse ݽ؛ীࢲ য়ରਯਸ ۰ݶ যוب ରਗ ӝо ࠁغযঠ ೣ • Cross-Attentionਸ ഝਊೡ ٸ ਃೠ ରਗ ӝח ௪ܻ ష ӡ ઁғী ࠺۹ೣ
&YQFSJNFOU
&YQFSJNFOU*$5PWFS8JLJQFEJB &YQFSJNFOU • ߑߨ: Inverse Cloze Test • ޙױਸ
ৈ۞ ࠗ࠙ਵ۽ ա׃ • ೞա ࠗ࠙ਸ Query۽, աݠ ࠗ࠙ਸ Document۽ • ࠄ ֤ޙীࢲח Wikipediaܳ ഝਊೞৈ 1M ݅ఀ ௪ܻܳ ࢤࢿೣ • Rankingҗ Retrieval ل Recallਸ ஏೣ • ઑҵ: • Cross-Attention, Sum-of-max • Dual-Encoder BERT • Multi-Vecter BERT • Sparse Model (BM25)
&YQFSJNFOU*$5PWFS8JLJQFEJB &YQFSJNFOU • प Ѿҗ • ߬٬ ӝо ਸࣻ۾ ࢿמ
ڄযݴ, Retrievalীࢲ ف٘۞ѱ աఋթ • Retrieval ҃ח BM25৬ Multi-Vectorо ࢤпࠁ ੜೞח ಞ
&YQFSJNFOU0QFO%PNBJO2" &YQFSJNFOU • ߑߨ: Natural Questions Dataset • पઁ Wikipedia
ղਊਸ ޛযࠁח हਵ۽ ҳࢿ • 87,925ѐ۽ ള۲दఃҊ 3,610ѐী ೧ࢲ पೣ • ઑҵ: • Cross-Attention, Sum-of-max • Dual-Encoder BERT, Hybrid Dual-Encoder Bert (Sparse৬ Dense ࢶഋ) • Multi-Vecter BERT • Sparse Model (BM25)
&YQFSJNFOU0QFO%PNBJO2" &YQFSJNFOU • प Ѿҗ • ৈ ߬٬ ӝо
ݽ؛ ࢿמ ڄয • पઁ ࢎۈ ޙ ҃, BM25ח ੜ ೞ ޅೣ = ੌ߈ച מ۱ ࠗ • ই۞ ICTী ࠺೧ ߬٬ ӝࠁ ߑߨۿ ରо ഻ঁ ਃೠ Ѫਸ ࠅ ࣻ
&YQFSJNFOU4IPSU"OTXFS&YBDU.BUDI &YQFSJNFOU • ߑߨ: Natural Questions Dataset • Experiment 2৬
زੌೞغ, ߸ ഛ ੌೞח ҃ܳ ஏ • ઑҵ: • DE-BERT, Hybrid-BERT, Multi-BERT (Best Dense) • Sparse Model (BM25) • प Ѿҗ: • Hybrid ݽ؛ ࢿמ જਵݴ 200ѐ షਸ ࠌਸ ٸ જ
4VNNBSZ*OUVJUJPO &YQFSJNFOU • Summary • ߬٬ӝо ਸࣻ۾ ࢿמ ڄযݴ, ੌ߈ചо
ਃҳغ ঋח ؘఠ (ICT) ীࢲ ف٘۞ • Sparse ݽ؛ ҃ ੌ߈ചо ਃҳغח ؘఠ (Open-Domain QA)ীࢲח ࢿמ ڄয • Hybrid ݽ؛ ਵ۽ ֫ ࢿמਸ ࠁৈષ = নଃ ਸ ஂೡ ࣻ ח ഋక • Intuition • അ BM25 ߑߨࠁ ߬٬ ࢲо જਸ Ѫਵ۽ ࢚ؽ. • ܻ ؘఠח ੌ߈ചܳ ݆ ਃҳೞӝ ٸޙী Hybridܳ ॳח Ѫ ٙ ঋਸ ٠