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사람들과 자연스러운 대화를 나누는
인공지능 ‘핑퐁’ 만들기
스캐터랩(ScatterLab)
Machine Learning Engineer
김준성
스캐터랩(ScatterLab)
CEO
김종윤
1. 🤖 

2. & 

3. Query Centric Model : 

4. Reaction Model: !

5. Reply Retrieval Model: ! 

6. Query Retrieval Model: QA ?

7. Pingpong Bot & Builder : 

8. Future Works: ?
핑퐁과
일상대화 기술은 무엇인가?
스캐터랩(ScatterLab)
CEO
김종윤
#0. ?
= “ ?”
= “ ”
20 .
10% .
. .
= “ ?”
= “ ”
#0. ?
( : “ ?”) ( : “ ”)
,
#0. ?
Button UI NLI
NLIGUI
#1. ?
Natural Language Interface =
( , 2017 5 3 )
SKT ‘ ’
45%
1) Nass, Clifford, and Li Gong. "Speech interfaces from an evolutionary perspective." Communications of the ACM 43.9 (2000): 36-43.
1.
• AI 1)
AI .
• AI
, “ ”
.
.
• ,
AI (human-likeness)
.
#1. ?
(Jiang J, et al. (2015))
Microsoft Cortana
30%
2.
• AI
,
(CPS, Conversation-turns per session)
1).
• AI
,
.
#1. ?
1) Chen, Chun-Yen, et al. "Gunrock: Building A Human-Like Social Bot By Leveraging Large Scale Real User Data."
3.
• AI ,
AI .
• AI
.
#1. ?
,
• . AI
. .
•
.

#1. ?
Vision
Make machines social
Vision
Make machines social
“ ”
Mission Statement
Open-Domain Conversational AI:
Technical Section
스캐터랩(ScatterLab)
Machine Learning Engineer
김준성
Source: Optional source placeholder. Delete if not used.
(Junseong Kim)
fb.com/codertimo
ScatterLab Machine Learning Engineer
Machine Learning Team ( )
Naver Clova AI Research Intern
Atlas Guide NLP/Machine Learning Engineer
General Domain Dialog System/Chatbot (Chitchat)
General Sentence Embedding (BERT, ELMo)
And Diverse Natural Language Processing Tasks…
Neural Machine Translation
codertimo/BERT-pytorch 2.4k+ stars
Research Domain
Experience
2017, 2014 Intel ISEF Computer Science Finalist
2016, 2014 Intel KSEF Computer Science Grand Award
Working Experience
Dataset
100 + Utterance(2.2TB)
& :
Utterance Variance

Context Aware Utterance

Massive Dialog System

…
NLP/Dialog System 😍
Goal
Engineer Main Goal
100 !

?
Query Centric Model
!
Query
?!?!
Query Centric Model
Query Matching
Sentence Representation Cosine-Similarity Script Retrieval
Response = argmax(cos(Queryembed, Scriptembedi
))
Query Centric Model
?
Query Space
!
Query Matching
Sentence Representation Cosine-Similarity Script Retrieval
Response = argmax(cos(Queryembed, Scriptembedi
))
Query Centric Model
? 👋
😭
😘
??😰
Query Space
Query Matching
Sentence Representation Cosine-Similarity Script Retrieval
Response = argmax(cos(Queryembed, Scriptembedi
))
Query Centric Model
?
!
👋
😭
😘
??😰
Query Space
Query Matching
Sentence Representation Cosine-Similarity Script Retrieval
Response = argmax(cos(Queryembed, Scriptembedi
))
Query Centric Model
?
!
👋
😭
😘
??😰
Query Space
Query Matching
Sentence Representation Cosine-Similarity Script Retrieval
Response = argmax(cos(Queryembed, Scriptembedi
))
Query Centric Model
https://youtu.be/rhHQMA80TcE
Query Retrieval Model: Pingpong-POC
Query Centric Model
Query Retrieval Model: Pingpong-POC
• Rule Based Filtering
• , , Rule Based Filtering
• Human Filtering
• -> Query-Reply Pair
Query Centric Model
Query Retrieval Model: Pingpong-POC
Q-> !
Reply select:
Q’:
Query Centric Model
Query Retrieval Model: Pingpong-POC
•
• → ( )
• Blackbox → (B2B) control → customization
• Query Search Variance →
Ex ) -> ?
Ex ) ! -> ><>< , ->
Ex ) -> XX XX
Ex ) : ! -> !
Query Centric Model
Search Space Q' N
Query Space Query Variance
Query -> Information -> (1:1 )
Reply Centric Model
Query Space
Reply Space ? 🤔
?

Query ?
Reply Centric Model
Reply Space
Reaction
?
?
…
Answer to Query
,….
Context Aware Reply
?
KB & Background Aware Reply
30
Reply Centric Model
Reply Space
Coverage ! (
Context+Query -> Reply Distribution Deep Learning
+ NLU, NLG
Reaction
Coverage,
Query Coverage
: { | }
🧐 🤩 😡 🤗 😘
: Reaction
Reply Edit Distance Clustering

1200 Reaction Class
Reaction
!!!!
…??
..
.
..
?
..
?!?!
?? ??
Coverage,
Reaction
!!!!
…??
..
.
..
?
..
?!?!
?? ??
( Class)
?!?!
( Class)
Coverage,
Reaction Dataset Labeling
Reply Edit Distance Clustering

1200 Reaction Class
Reaction
Coverage,
1000 + Reaction Training Pair 👏
Query Variance
Reaction
Coverage,
Classification Model Retrieval Model
Queryinput
Query Encoder
Ensemble
XGBoost Reranking
Reaction Class Select Among 1K class
!!
…
Reaction
Coverage,
Response ResponseReaction Class
Response
Reaction
https://youtu.be/Cabc5JOPqEk
https://goo.gl/yANLGz
Pros:
1. . .
2. ,
Reaction
Coverage,
Cons:
1.
2. ,
Reply Retrieval Model
,
(Q)
,
Main
Reply Retrieval Model
Next Utterance Prediction Model
https://arxiv.org/abs/1705.02364
Supervised Learning of Universal Sentence Representations from Natural Language Inference Data
Query Reply
Query Reply Continuous Utterance Next Utterance Classification
Response = argmax(Model(Equery, Ereplyi
))
Reply Retrieval Model
Next Utterance Prediction Model
Query-Reply 50 Pair (single )
Query, Reply Sentence Encoder concat FNN Binary Classification
Pair Next Utterance Prediction (BERT Next Sentence Prediction)
N:1 Negative Sampling Random ( N Negative )
Reply Retrieval Model
Next Utterance Prediction Model
Reply Set
Reply Retrieval Model
Next Utterance Prediction Model: Unbalanced
Reaction 😰
Reranking Logic ( )
?
Q
0.79
? 0.92
Insight: ..🤖
…
Reply Retrieval Model
Next Utterance Prediction Model: Unbalanced RMM Prediction Result
🤩
!
Reply Retrieval Model
Next Utterance Prediction Model
Pros:
1. Reaction ( { , } → ! )
2. (?)
3. Q
Cons
1. (R) Space .
1. Reply set
2. Reply Q , Q .
Q Reply retrieval model Cons .
,
Reply Retrieval Model .
Query Retrieval Model
Motivation
1:1
Query Retrieval Model
Using Next-Utterance Task Pretrained Encoding
LM+Next Sentence Prediction context
Next Utterance Sub-Task Encoder Embedding ?
Query Reply
???!🤩
Query Retrieval Model
Dataset
😰
Query Retrieval Model
Dataset
Query Retrieval Model
Dataset
“ ”
50000
Query Retrieval Model
Using Next-Utterance Task Pretrained Encoding
Query Query
Transfer Learning
Dataset Fine-Tuning
https://docs.google.com/spreadsheets/d/1LWsrffq93u5U55-O7Yij8Lhl15Dlbr8mlucabTUB9jo/edit#gid=1973099187
Query Retrieval Model
Result: SOTA of Chatbot Builder
!! SOTA!!
RAW &Test Dataset
Query Retrieval Model
Result: SOTA of Chatbot Builder
Query Retrieval Model
Pros and Cons
Cons:
1. Q variation
Pros:
1.
2.
3. , , Dialogflow , SOTA
https://landing.pingpong.us/
Pingping Builder
Chatbot Builder For Open-Domain Chatbot
Pingping Bot
Prebuilt Bot & App
^^https://m.me/ai.pingpong
Pingping Bot
Prebuilt Bot & App
Pingping Bot
Prebuilt Bot & App


COMMING SOOOOON😘
Pingpong Family
Future Works
NER, Tokenizer, Typo-Correction, Semantic Parsing
Question and Answering : external KB, user KB
Persona Reply Style Transfer
Reply Generation
Context Aware Reply
End-to-End Dialog System
Hyper-Personalization
SOTA Language Modeling
😭
😭
Context Aware BERT for Open-Domain Dialog System
감사합니다

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