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PyCon Korea 2019
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…
34
- - ViewerEnd
• : 

CTR(%) 

• 

• MAB(Multi Armed Bandit) 

• User Clustering
-
!35
MAB(Multi Armed Bandit)
• MAB = Exploration( ) and Exploitation( ) Trade-off

• 10%( ) Feedback (impression,
click)
* ε-greedy MAB .
!36
• Feedback CTR(%) . 

• CTR(%) = # of clicks / # of impressions
Exploration
0.4% 4.0% 2.9% 7.3% 2.7% 8.7% 6.7% 1.0% 1.9% 8.1% 6.3%
3.6% 6.7% 8.0% 3.1% 3.6% 2.0% 4.4% 3.1% 7.3% 8.2% 2.7%
4.4% 8.1% 0.6% 5.9% 9.2% 7.3% 8.3% 8.6% 4.2% 9.9% 6.9%
* ε-greedy MAB .
!37
MAB(Multi Armed Bandit)
• CTR 90% ( ) 

• CTR
0.4% 4.0% 2.9% 7.3% 2.7% 8.7% 6.7% 1.0% 1.9% 8.1% 6.3%
3.6% 6.7% 8.0% 3.1% 3.6% 2.0% 4.4% 3.1% 7.3% 8.2% 2.7%
4.4% 8.1% 0.6% 5.9% 9.2% 7.3% 8.3% 8.6% 4.2% 9.9% 6.9%
Exploitation8.0% 8.2%
* ε-greedy MAB .
!38
MAB(Multi Armed Bandit)
0.4% 4.0% 2.9% 7.3% 2.7% 8.7% 6.7% 1.0% 1.9% 8.1% 6.3%
3.6% 6.7% 8.0% 3.1% 3.6% 2.0% 4.4% 3.1% 7.3% 8.2% 2.7%
4.4% 8.1% 0.6% 5.9% 9.2% 7.3% 8.3% 8.6% 4.2% 9.9% 6.9%
Exploitation
(10%) (90%)
&
?
:
?
: .
!39
MAB(Multi Armed Bandit)
0.4% 4.0% 2.9% 7.3% 2.7% 8.7% 6.7% 1.0% 1.9% 8.1% 6.3%
3.6% 6.7% 8.0% 3.1% 3.6% 2.0% 4.4% 3.1% 7.3% 8.2% 2.7%
4.4% 8.1% 0.6% 5.9% 9.2% 7.3% 8.3% 8.6% 4.2% 9.9% 6.9%
Exploitation
Exploration(10%) Exploitation(90%)
• MAB ?

• TS-MAB
ε-greedy
UCB(Upper Confidence Bound)
Lin-UCB
Thompson Sampling
NeuralBandit
LinRel (Linear Associative Reinforcement Learning) 
!40
MAB(Multi Armed Bandit)
ε-Greedy MAB ε=0.10
41
10M Impressions
10%(ε)
1M Impressions( )
1 2 3 4 4 5
6 7 8 9 … 100
ε-Greedy MAB ε=0.10
42
10M Impressions
10%(ε)
1M Impressions( )
1.1% 2.0% 8.2% 0.01% 4.6% 1.2%
5.2% 0.1% 0.2% 1.0% … 2.2%
(100 ) 10k Impression
ε-Greedy MAB ε=0.10
43
10M Impressions
10%(ε)
1M Impressions( )
1.1% 2.0% 8.2% 0.01% 4.6% 1.2%
5.2% 0.1% 0.2% 1.0% … 2.2%
(100 ) 10k Impression
CTR = 1.5%
Best
arm
( )
3
8.2%
7
5.2%
4
4.6%
50
3.0%
ε-Greedy MAB ε=0.10
44
10M Impressions
10%(ε)
1M Impressions( )
1.1% 2.0% 8.2% 0.01% 4.6% 1.2%
5.2% 0.1% 0.2% 1.0% … 2.2%
Best
arm
( )
3
8.2%
7
5.2%
4
4.6%
50
3.0%
90%(1-ε)
9M Impressions
(100 ) 10k Impression
CTR = 1.5%
CTR = 5.1%
CTR 4.74%
ε-Greedy MAB ε=0.10
45
10M Impressions
10%(ε)
1M Impressions( )
1.1% 2.0% 8.2% 0.01% 4.6% 1.2%
5.2% 1.5% 0.2% 1.0% … 2.2%
Best
arm
( )
3
8.2%
7
5.2%
4
4.6%
90%(1-ε)
9M Impressions
(100 ) 10k Impression
CTR = 1.5%
CTR = 5.1%
CTR 4.74%
10k Impression
CTR
Impressions CTR (3σ)
ε-Greedy MAB ε=0.10
46
10M Impressions
10%(ε)
1M Impressions( )
1.1% 2.0% 8.2% 0.01% 4.6% 1.2%
5.2% 1.5% 0.2%
10 Impressions
CTR
Impressions CTR
ε-Greedy MAB ε=0.10
47
10M Impressions
10%(ε)
1M Impressions( )
1.1% 2.0% 8.2% 0.01% 4.6% 1.2%
5.2% 1.5% 0.2% 1.0% … 2.2%
Best
arm
( )
3
8.2%
7
5.2%
4
4.6%
90%(1-ε)
9M Impressions
(100 ) 10k Impression
CTR = 1.5%
CTR = 5.1%
CTR 4.74%
CTR
Impressions 99.7%(3σ)
ε-Greedy MAB ε=0.10
48
10M Impressions
10%(ε)
1M Impressions( )
1.1% 2.0% 8.2% 0.01% 4.6% 1.2%
5.2% 1.5% 0.2% 1.0% … 2.2%
Best
arm
( )
3
8.2%
7
5.2%
4
4.6%
50
3.0%
90%(1-ε)
9M Impressions
(100 ) 10k Impression
CTR = 1.5%
CTR = 5.1%
CTR 4.74%
CTR
Impressions 99.7%(3σ)
CTR 3.0%
3.0%
3.0% 3.0% 3.0%
3.0%3.0%
ε-Greedy MAB ε=0.10
49
10M Impressions
10%(ε)
1.1% 2.0%
5.2% 1.5% 0.2% 1.0% … 2.2%
Best
arm
( )
90%(1-ε)
(100 ) 10k Impression
CTR = 1.5%
CTR = 5.1%
CTR 4.74%
CTR
Impressions 99.7%(3σ)
3.0% 3.0%3.0%
Optimal Arm
Impressions (regret )
Thompson Sampling MAB ?
Thompson Sampling MAB
• (arm) CTR Beta(a,b) . ( a=click, b=unclick )
51
1
10%
Impressions : 10 50 100 200 1k 10k
2
25%
Impressions : 10 50 100 200 1k 10k
Thompson Sampling MAB
• (arm) CTR Beta(a,b) ( a=click, b=unclick )
52
1
10%
( ) CTR 15%
1 (10%<15%) 100 Impressions trial
.
Impression ->
Impressions : 10 50 100 200 1k 10k
Thompson Sampling MAB
• (arm) CTR Beta(a,b) ( a=click, b=unclick )
53
2
25%
2 CTR 25%>15%
( )
.
Impressions : 10 50 100 200 1k 10k
• 1K Impressions
54


CTR
• 10K Impressions
55


CTR
• 50K Impressions
56


CTR
• 100K Impressions
57


CTR
• 500K Impressions
58


CTR
• 1M Impressions
59


CTR
• 1M Impressions
60


CTR
CTR (Arm)
• 1M Impressions
61


CTR
CTR
( )
.
.
• 1M Impressions
62


CTR
CTR
( )
.
.
TS-MAB
& Trade-off
Regret( ) .
User Clustering
• CTR .
CTR : 7.6%
A : 25% (30 )
B : 2.1% ( )
C : 7.1% ( )
CTR
!63
User Clustering
• X CTR 

• CTR
200 8,000
User Clustering
• 

• 8
8
8,000 64,000
CTR
Clustering ?
CB(image,Text)
Feature User Feature
[0.628, 0.88, 0.376, 0.065, 0.849]
[0.508, 0.268, 0.193, 0.125, 0.425]
[0.431, 0.077, 0.012, 0.07, 0.037]
[0.915, 0.294, 0.713, 0.851, 0.423]
[0.508, 0.268, 0.193, 0.125, 0.425]
[0.607, 0.639, 0.554, 0.092, 0.297]
[0.587, 0.319, 0.094, 0.173, 0.177]
[0.409, 0.458, 0.48, 0.319, 0.783]
[0.479, 0.434, 0.618, 0.297, 0.752]
[0.467, 0.206, 0.905, 0.7, 0.568]
, , ,
, ,
, , ,
!66
1
2
3
4
5
6
Clustering ?
14 CB(image,Text)
Feature User Feature
[0.628, 0.88, 0.376, 0.065, 0.849]
[0.508, 0.268, 0.193, 0.125, 0.425]
[0.431, 0.077, 0.012, 0.07, 0.037]
[0.915, 0.294, 0.713, 0.851, 0.423]
[0.508, 0.268, 0.193, 0.125, 0.425]
[0.607, 0.639, 0.554, 0.092, 0.297]
[0.587, 0.319, 0.094, 0.173, 0.177]
[0.409, 0.458, 0.48, 0.319, 0.783]
[0.479, 0.434, 0.618, 0.297, 0.752]
[0.467, 0.206, 0.905, 0.7, 0.568]
, , ,
, ,
, , ,
8 (#0~#7)
?
-
• 

• #1, #5, #6, #7 

• #0, #2 #3
-
• 

• #1, #5, #6, #7 

• #0, #2 #3
/
#1
, ,
#3
, ,
/
#3
, ,
Tag
Tag
/
.
?
77
#2
#1
#3
User Clustering
Targeting
CTR
1 : CTR 9.1%
2 : CTR 8.8%
3 : CTR 8.0%
4 : CTR 7.8%
5 : CTR 7.1%
6 : CTR 6.8%
7 : CTR 6.7%
…
MAB
Ranking
?
78
#2
#3
User Clustering
Targeting
Ranker
MAB
Ranking
Targeter
+ MAB
-ViewerEnd
• : 

CTR(%) 

• 

• (Item Feature)

• MAB(Multi Armed Bandit)
!80
?
81
#2
#3
User Clustering
Targeting
Ranker
MAB
Ranking
Targeter
?
82
(Item)
Targeter
Feature
Targeting
Ranker
MAB
Ranking
-ViewerEnd
(CF)
(Text)
(Image)
!83
1 2 3
- Item Features
/ Image 

(1) Image Feature
, Text 

(2) Text Feature
Feedback


(3) CF-Feature
!84
?
!85
?
!86
?
!87
1 3 41 1 92 1
1 3 41 1 92 1
1 3 41 1 92 1
Image
Text( )
CF( )
!88
1 3 41 1 92 1Image Style
Image
Text( )
CF( )
Image Style
Style transfer network
!89
1 3 41 1 92 1
Image Style
Text( )
CF( )
Image Object Detection Task
Image Object
Pre-trained VGG19 Model
!90
1 3 41 1 92 1
Image Style
Image
CF( )
,
Keyword
Word2Vec
!91
1 3 41 1 92 1
Image Style
Image
Text( )
CF( )
Matrix Factorization(ALS)
with implicit feedback
(Feedback) Item-User
!92
1 3 41 1 92 1
!93
1 3 41 1 92 1
1 3 41 1 92 1
1 3 41 1 92 1
1 3 41 1 92 1
“ ”
(%)
!94
0.4% 4.0% 2.9% 7.3% 2.7% 8.7% 6.7% 1.0% 1.9% 8.1%
0.4% 4.0% 2.9% 7.3% 2.7% 8.7% 6.7% 1.0% 1.9% 8.1%
0.4% 4.4% 2.9% 7.3% 2.3% 8.7% 0.2% 1.0% 1.9% 8.1%
0.4% 6.0% 2.9% 7.3% 2.7% 5.6% 6.7% 1.0% 1.9% 8.1%
MAB
(%)
!95
0.4% 4.0% 2.9% 7.3% 2.7% 8.7% 6.7% 1.0% 1.9% 8.1%
0.4% 4.0% 2.9% 7.3% 2.7% 8.7% 6.7% 1.0% 1.9% 8.1%
0.4% 4.4% 2.9% 7.3% 2.3% 8.7% 0.2% 1.0% 1.9% 8.1%
0.4% 6.0% 2.9% 7.3% 2.7% 5.6% 6.7% 1.0% 1.9% 8.1%
!96
?
97
(Item)
Targeting
CTR
1 : CTR 9.1%
2 : CTR 8.8%
3 : CTR 8.0%
4 : CTR 7.8%
5 : CTR 7.1%
6 : CTR 6.8%
7 : CTR 6.7%
…
MAB
Ranking
+ MAB
!98
!99
100
1 2 3 4 5 6
…
89 90
(Clicks)
Impression
101
1 2 3 4 5 6
…
89 90
(Use Coin)
Impression
102
User Cluster +
+
MAB
MAB
RankerTargeter
=
=
103
+
MAB
Conditional Bandit
Exponential Smoothing
Seen Decay
Soft User Clustering
Retention Model
Unbiased Most Popular
Feature Matching
Targeter
=
=
Ranker
104
• MAB

- Bandit Algorithm = Thompson Sampling(

- Reward = Click (with Unclick )

- Play Arms = Cluster Most Popular 

- None Stationary = Exponential Decaying

• 2 

- = # of clicks / # of impressions 

- = # of use_coins / # of impressions
1. MAB
105
• MAB

- Bandit Algorithm = Thompson Sampling

- Reward = Click (with Unclick )

- Play Arms = Cluster Most Popular 

- None Stationary = Exponential Decaying

• 2 

- = # of clicks / # of impressions 

- = # of use_coins / # of impressions
1. MAB
Use Coin( )
MAB Reward Use Coin, Click + User Coin
by @brandon.lim
106
1. MAB ?
(Beta) (Alpha) -20% —>
? ?
MAB ?
-20%
2. Conditional Bandit
107
1 2 3 4 5 6
…
89 90
by @troye.kwon
2. Conditional Bandit
108
1 2 3 4 5 6
…
89 90
Impressions
Reward=Click( )
α=click, β=unclick
MAB
by @troye.kwon
2. Conditional Bandit
109
1 2 3 4 5 6
…
89
Impressions
Reward=Click( )
α=click, β=unclick
MAB
Reward=Use Coin( )
α=use-coin, β=click
MAB
by @troye.kwon
2. Conditional Bandit ?
110
(Beta) (alpha)
? ?
- MAB .
3. Retention Model
• : . 

, 

“ ” . 

• 

• MAB
111
by @jinny.k
+
MAB
Targeter Ranker
3. Retention Model ?
112
by @jinny.k
(CTR) (CVR)
? (CTR) ?
4. Seen decay
• : Negative Feedback 

• click impression Ranker 

• : (alpha) (Beta)
113
-> CTR
114
• 

• Hard Clustering(k-Means) —> Soft Clustering (pLSI)

• Feature Matching 

• Targetting Genre/Tag Matching 

• MAB non-stationary Exponential Smoothing
• Targeting Unbiased Most Popular 

• MAB Hyper parameter Turning
(%)
!115
Soft Clustering (pLSI) Feature Matching
Conditional Bandit Retention Model
Exponential Smoothing
MABUnbiased Most Popular
?
?
!116
!117
?
118
?
119
?
120
?
121
?
122
0.1%
123
= 3.96%
= 6.70%
= 2.63%
= 0.07%
-> 4.56
124
= 3.96%
= 6.70%
= 2.63%
= 0.07%
4.56
-> 4.56
125
= 3.96%
= 6.70%
= 2.63%
= 0.07%
4.56
AB
(<0.001)
Feedback (>4.56days)
/
,
?
.
127
Base : Editor’s ( X) 1.9%
Alpha : 1 4.8%
Beta : 2 5.5%
Gamma : 3 6.5%
CTR
1 2 3 4
…
.
128
Base : Editor’s ( X) 1.9%
Alpha : 1 4.8%
Beta : 2 5.5%
Gamma : 3 6.5%
CTR
+ 242% + 42%
1 2 3 4
…
CTR
.
?
/ ?
?
/ ? ->
? ->
133
YOU
?
.
!134
|

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