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Problem: What & Where to eat? Mei Gao

Mei gao practicedemo_6

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Page 1: Mei gao practicedemo_6

Problem:What & Where to eat?

Mei Gao

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imfeelinghungryy.com

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Topic0japanese

Topic1mexican

Topic2brunch

Topic3bar/atmosphere

Topic4pizza

Topic 5compliment

sushi tacos breakfast great pizza great

roll mexican coffee beer crust best

pita salsa eggs happy hour wings love

tuna burrito bacon bar thin good

salmon chips pancakes drinks pepperoni like

Topic6indian

Topic7asian

Topic8fast food

Topic9sweets

Topic10bbq

Topic 11bad service

indian thai burger bagels cheese service

buffet pho fries cheese bbq didn’t

masala chinese potato best sauce never

naan soup onion rings smoothies chicken even

bianco curry dog Iove ribs back

LDA (Latent Dirichlet Allocation) 12 topics

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Good restaurant: average star>3.5 Bad restaurant: average star<=3.5

Classification : Weight for each topic

Classifier Linear SVM Logistic Regression

Random Forest

Accuracy in Cross Validation 73.67% 81.19% 77.7%

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Very deep learning for image ranking

Training

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Validation Normalized Distance-based Performance Measure (NDPM)

R_2

R_5

R_1

R_3

R_4

R_1

R_2

R_3

R_4

R_5

Recom Actual Ranking(ground truth)

Minimize NDPM score

Goal:Restaurant Recommendation

Image Recommendation

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Mei Gao

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Deep hierarchical abstraction Learning structure of images

Deep learning for image ranking

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Assessment of LDABOW (Bag of Words) LDA

Feature Dimension 10000 words in dictionary 15 topics

>99% dimension reduction

Computation Efficiency 2.5 hrs 15 min

>90% computation

time

(2000 samples)(10 fold cross validation)

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Topic0 Topic1 Topic2 Topic3 Topic4

Japanese Mexican brunch Bar/ pizzaAtmosphere

sushi tacos breakfast great pizza

roll mexican coffee beer crust

pita salsa eggs happyhour wings

tuna burrito bacon bar thin

salmon chips pancakes drinks pepperoni

Topic5 Topic6 Topic7 Topic8 Topic9

Indian Asian fastfood sweets bbq

Indian Thai burger bagels cheese

buffet Pho fries cheese bbq

masala Chinese potato best sauce

naan soup Onion ring smoothies chicken

bianco curry dog Iove ribs

LDA (Latent DiriChlet Allocation) 15 topics

Topic 10: ComplimentGreat, best, live, good, like

Topic 11: Service ( Bad)Service, didn’t, never, even, back

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3%

4%

10%

4%

5%

29%

20%

6%

3%

16%

Percentage

others Japanese Mexican Brunch barService compliment Asian fastfood bbq

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Evaluation of Recommendation Error Using Normalized Distance-based Performance Measure (NDPM)

R_2

R_5

R_1

R_3

R_4

R_1

R_2

R_3

R_4

R_5

Recom Actual Ranking(ground truth)

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Evaluation of Recommendation Error Using Normalized Distance-based Performance Measure (NDPM)

R_2

R_5

R_1

R_3

R_4

R_1

R_2

R_3

R_4

R_5

Recom Actual Ranking(ground truth)

Minimize NDPM score

Goal:

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