Exploration cycle finding a better dining experience: a framework of meal-plates

M
Matsushita LaboratoryMatsushita Laboratory
Exploration cycle
finding a better dining experience:
a framework of meal-plates
China Takahashia, Mitsunori Matsushitaa, Ryosuke Yamanishia
a Kansai University, Japan
27th International Conference on Knowledge-Based and Intelligent Information & Engineering Systems
Athens, Greece, 06-08 September 2023
INTRODUCTION
• Dining is not just for nutrition
• One of the “experiential content” that enriches our daily lives
• The appeal of this dining experience is not only influenced by the
deliciousness of the meal, but also by the presentation of the meal
• e.g., the eccentricity of ingredients, cooking methods, serving and plates
• These balances are important to enhance the appeal of the dining experience
• We focused on the “plates”
1
• Plates are not just containers for serving meal
• If you are only looking for the role of putting meals in, one deep and
large plate should be enough
• However, there are various plates in the world
• We use it in various situations and in various meals
The selection of plates is one of the important factors contributing
to the enhancement of the dining experience
BACKGROUND
2
Wouldn't you like to eat the right meal every day?
3
• The selection of plates changes depending on the meal ingredients and
cooking method
• It is necessary to select according to the meal
• The current situation is…
• The user recalls his/her own dining experience and selects a plate
imaginatively
• Unable to improve because new discoveries and knowledge cannot
be obtained
PROBLEM (1)
4
• In many plates, there are multiple choices of meals that can be served
• It is necessary to select according to the preference and inspiration of
the person serving meals
• The current situation is…
• Users do not know their own preferences
We provide a system for supporting user's exploration
to find a suitable combination of meals and plates
PROBLEM (2)
5
IDEA: MEALS–PLATES EXPLORATION CYCLE
6
• This cycle is developed based on the conventional flow of plate selection
a plate
meals
A Part of plate selection
A Part of meal selection
Expand
Focused
Focused
Expand
a meal
plates
IDEA: MEALS–PLATES EXPLORATION CYCLE
7
a plate
meals
A Part of plate selection
A Part of meal selection
Expand
Focused
Focused
Expand
a meal
plates
computational support
A Part of plate selection
Recommend by
computer
Expand
Selection by user
Focused
Selection by user
Focused
Recommend by
computer
Expand
a plate
meals
A Part of meal selection
plates
a meal
Expand phase
Current situation
• New discoveries and knowledge
cannot be obtained
Our support
• Computer recommends multiple
meals(plates) from a single
plate(meal)
IDEA: MEALS–PLATES EXPLORATION CYCLE
8
A Part of plate selection
Recommend by
computer
Expand
Selection by user
Selection by user
Recommend by
computer
Expand
a plate
meals
A Part of meal selection
plates
a meal
Focused phase
Focused
Focused
Current situation
• Users do not know their own
preferences
Our support
• User selects a single plate(meal)
from multiple plates(meals) using
refine search
IDEA: MEALS–PLATES EXPLORATION CYCLE
9
A Part of plate selection
Recommend by
computer
Expand
Selection by user
Selection by user
Recommend by
computer
Expand
a plate
meals
A Part of meal selection
plates
a meal
Focused phase
Focused
Focused
• Users do not know their own
preferences
• User selects a single plate(meal)
from multiple meals(plates) using
filtering search
Not to explore individual plates or meals,
but to explore the plates by linking information about
the appropriate meal to each plate
Point of this idea
IDEA: MEALS–PLATES EXPLORATION CYCLE
10
THE GOAL OF THIS RESEARCH
11
• The user cyclically learns and selects the plate that matches the
meal and the meal that matches the plate
• The goal is to allow the user organize their own preferences and
select plates in an exploratory manner while understanding the
compatibility of meals with plates by myself.
Changes in users
Expand phase
(Computer recommends multiple meals(plates) from a single plate(meal))
• We need to identify the conditions that a meal suitable for the plate
should satisfy
• (A): converting meal information and plate information to
machine-readable data
• (B): associating meal information and plate information
converted to machine-readable data in (A)
HOW THE IDEA WORKS
12
• Data source
• Recipes from a cooking site (Cookpad[1])
• Define the meal elements involved in selecting a plate
• Ingredients
• Cooking behavior
(じゃがいも, にんじん, 玉ねぎ … 炒める, 茹でる, 切る)
(potato, carrot, onion … fry, boil, cut)
(1,1,1,1,0,・・・,1)
Represented by a binary vector
[1] Cookpad Inc., 2015. Cookpad dataset, the informatics research data repository, the national institute of informatics (dataset), https://doi.org/10.32130/idr.5.1.
(A-1) CONVERTING MEAL INFORMATION
13
• Data source
• E-commerce websites (Rakuten Ichiba Shopping Site[2])
• Define the plate elements involved in selecting a meal
• Size(the long side, the short side and height)→ measured value
• Shape (e.g., circles, corners, and flowers)→ binary
• Material (e.g., Japanese ceramics, lacquerware, and glass) → binary
(A-2) CONVERTING PLATE INFORMATION
14
[2] Rakuten Inc., 2014. Rakuten dataset, the informatics research data repository, the national institute of informatics, https://doi.org/10.32130/idr.2.0.
• How do you associate these two data?
• Associate by “meal name”, which is a common item of two data
• Cooking websites include recipe names and category names
• Product descriptions on E-commerce websites include descriptions of
examples of meals used
Pasta, curry, and Tenshinhan
(B) ASSOCIATING MEAL AND PLATE INFORMATION
15
• However, cooking websites and E-commerce websites do not have uniform
granularity of meal names
• meal names appeared in cooking websites are too fine
• e.g., Vegetable curry, indian curry, chicken curry…
• meal names appeared in the e-commerce website are too coarse
• e.g., curry
• Understanding the names of meal described in product descriptions on EC sites
• Obtained 117 new meal names not included in the meal category names on the cooking
site using CRF(Conditional Random Field)
• Hierarchical organization of meal names on recipe and e-commerce sites
(B) ASSOCIATING MEAL AND PLATE INFORMATION
16
• (A): converting meal information and plate information to machine-readable
data
• (B): associating meal information and plate information converted to machine-
readable data in (A)
• The following data are linked by the above (A) and (B)
• Ingredients
• Cooking behavior
meal information plate information
Meal name • Size 23
• Shape
• Material
LINKED RESULTS
17
Category: Curry
• Ingredients
• How to cook
Category: Stew
• Ingredients
• How to cook
Meal A
Meal B
This plate is perfect for serving pasta
Plate B
• Size
• Material
This plate is perfect for serving curry !
• Size
• Material
Plate A
18
• Shape
• Shape
EXAMPLE OF LINKED RESULTS
Category: Curry
• Ingredients
• How to cook
Category: Stew
• Ingredients
• How to cook
This plate is perfect for serving curry !
• Size
• Material
Meal A
Meal B
Plate A
This plate is perfect for serving pasta
Plate B
• Size
• Material
Corresponds plate information to meal information
by meal name (e.g., curry)
19
• Shape
• Shape
EXAMPLE OF LINKED RESULTS
Category: Curry
• Ingredients
• How to cook
Category: Stew
• Ingredients
• How to cook
Meal A
Meal B
This plate is perfect for serving curry !
• Size
• Material
Plate A
Applicable locations in the cycle
If the ingredients or how to cook of MealA and MealB
are similar, it is possible to serve MealB on PlateA
even if the category is not curry
20
• Shape
Category: Curry
• Ingredients
• How to cook
This plate is perfect for serving curry !
• Size
• Material
Meal A
Plate A
This plate is perfect for serving pasta
Plate B
• Size
• Material
Applicable locations in the cycle
If PlateA and PlateB are similar in size, shape and material,
it is possible to serve MealB on PlateA even if curry is not
mentioned in the product description
21
• Shape
• Shape
Focused phase
(User selects a single plate(meal) from multiple meals(plates) using filtering
search)
• Meal-focused phase
• Narrow down using conventional recipe recommendation technology
• e.g., meal similarity [3], ingredients [4], and preferences [5]
• Plate-focused phase
• Narrow down using the plate appearance characteristics
• e.g., color, pattern, shape, and size
HOW THE IDEA WORKS
22
[3] Wang, L., Li, Q., Li, N., Dong, G., Yang, Y., 2008. Substructure smilarity measurement in chinese recipes, in: Proc. 17th Int. Conf. on World Wide Web, pp. 979–988.
[4] Zhang, Q., Hu, R., Namee, B., Delany, S., 2008. Back to the future: Knowledge light case base cookery, in: Proc. 9th ECCBR, pp. 239––248
[5] Geleijnse, G.,Wang, L., Li, Q., 2010. Promoting tasty meals to support healthful eating, in:Wellness Informatics (WI)Workshop at CHI 2010.
• The selection of plates is one of the important factors contributing to
the enhancement of the dining experience
• we provide a system for supporting user's exploration to find a suitable
combination of meals and plates
Using Suggested Cycle,
• Users can organize their own preferences and select plates in an
exploratory manner while understanding the compatibility of meals
with plates
CONCLUSION
23
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Exploration cycle finding a better dining experience: a framework of meal-plates

  • 1. Exploration cycle finding a better dining experience: a framework of meal-plates China Takahashia, Mitsunori Matsushitaa, Ryosuke Yamanishia a Kansai University, Japan 27th International Conference on Knowledge-Based and Intelligent Information & Engineering Systems Athens, Greece, 06-08 September 2023
  • 2. INTRODUCTION • Dining is not just for nutrition • One of the “experiential content” that enriches our daily lives • The appeal of this dining experience is not only influenced by the deliciousness of the meal, but also by the presentation of the meal • e.g., the eccentricity of ingredients, cooking methods, serving and plates • These balances are important to enhance the appeal of the dining experience • We focused on the “plates” 1
  • 3. • Plates are not just containers for serving meal • If you are only looking for the role of putting meals in, one deep and large plate should be enough • However, there are various plates in the world • We use it in various situations and in various meals The selection of plates is one of the important factors contributing to the enhancement of the dining experience BACKGROUND 2
  • 4. Wouldn't you like to eat the right meal every day? 3
  • 5. • The selection of plates changes depending on the meal ingredients and cooking method • It is necessary to select according to the meal • The current situation is… • The user recalls his/her own dining experience and selects a plate imaginatively • Unable to improve because new discoveries and knowledge cannot be obtained PROBLEM (1) 4
  • 6. • In many plates, there are multiple choices of meals that can be served • It is necessary to select according to the preference and inspiration of the person serving meals • The current situation is… • Users do not know their own preferences We provide a system for supporting user's exploration to find a suitable combination of meals and plates PROBLEM (2) 5
  • 7. IDEA: MEALS–PLATES EXPLORATION CYCLE 6 • This cycle is developed based on the conventional flow of plate selection a plate meals A Part of plate selection A Part of meal selection Expand Focused Focused Expand a meal plates
  • 8. IDEA: MEALS–PLATES EXPLORATION CYCLE 7 a plate meals A Part of plate selection A Part of meal selection Expand Focused Focused Expand a meal plates computational support
  • 9. A Part of plate selection Recommend by computer Expand Selection by user Focused Selection by user Focused Recommend by computer Expand a plate meals A Part of meal selection plates a meal Expand phase Current situation • New discoveries and knowledge cannot be obtained Our support • Computer recommends multiple meals(plates) from a single plate(meal) IDEA: MEALS–PLATES EXPLORATION CYCLE 8
  • 10. A Part of plate selection Recommend by computer Expand Selection by user Selection by user Recommend by computer Expand a plate meals A Part of meal selection plates a meal Focused phase Focused Focused Current situation • Users do not know their own preferences Our support • User selects a single plate(meal) from multiple plates(meals) using refine search IDEA: MEALS–PLATES EXPLORATION CYCLE 9
  • 11. A Part of plate selection Recommend by computer Expand Selection by user Selection by user Recommend by computer Expand a plate meals A Part of meal selection plates a meal Focused phase Focused Focused • Users do not know their own preferences • User selects a single plate(meal) from multiple meals(plates) using filtering search Not to explore individual plates or meals, but to explore the plates by linking information about the appropriate meal to each plate Point of this idea IDEA: MEALS–PLATES EXPLORATION CYCLE 10
  • 12. THE GOAL OF THIS RESEARCH 11 • The user cyclically learns and selects the plate that matches the meal and the meal that matches the plate • The goal is to allow the user organize their own preferences and select plates in an exploratory manner while understanding the compatibility of meals with plates by myself. Changes in users
  • 13. Expand phase (Computer recommends multiple meals(plates) from a single plate(meal)) • We need to identify the conditions that a meal suitable for the plate should satisfy • (A): converting meal information and plate information to machine-readable data • (B): associating meal information and plate information converted to machine-readable data in (A) HOW THE IDEA WORKS 12
  • 14. • Data source • Recipes from a cooking site (Cookpad[1]) • Define the meal elements involved in selecting a plate • Ingredients • Cooking behavior (じゃがいも, にんじん, 玉ねぎ … 炒める, 茹でる, 切る) (potato, carrot, onion … fry, boil, cut) (1,1,1,1,0,・・・,1) Represented by a binary vector [1] Cookpad Inc., 2015. Cookpad dataset, the informatics research data repository, the national institute of informatics (dataset), https://doi.org/10.32130/idr.5.1. (A-1) CONVERTING MEAL INFORMATION 13
  • 15. • Data source • E-commerce websites (Rakuten Ichiba Shopping Site[2]) • Define the plate elements involved in selecting a meal • Size(the long side, the short side and height)→ measured value • Shape (e.g., circles, corners, and flowers)→ binary • Material (e.g., Japanese ceramics, lacquerware, and glass) → binary (A-2) CONVERTING PLATE INFORMATION 14 [2] Rakuten Inc., 2014. Rakuten dataset, the informatics research data repository, the national institute of informatics, https://doi.org/10.32130/idr.2.0.
  • 16. • How do you associate these two data? • Associate by “meal name”, which is a common item of two data • Cooking websites include recipe names and category names • Product descriptions on E-commerce websites include descriptions of examples of meals used Pasta, curry, and Tenshinhan (B) ASSOCIATING MEAL AND PLATE INFORMATION 15
  • 17. • However, cooking websites and E-commerce websites do not have uniform granularity of meal names • meal names appeared in cooking websites are too fine • e.g., Vegetable curry, indian curry, chicken curry… • meal names appeared in the e-commerce website are too coarse • e.g., curry • Understanding the names of meal described in product descriptions on EC sites • Obtained 117 new meal names not included in the meal category names on the cooking site using CRF(Conditional Random Field) • Hierarchical organization of meal names on recipe and e-commerce sites (B) ASSOCIATING MEAL AND PLATE INFORMATION 16
  • 18. • (A): converting meal information and plate information to machine-readable data • (B): associating meal information and plate information converted to machine- readable data in (A) • The following data are linked by the above (A) and (B) • Ingredients • Cooking behavior meal information plate information Meal name • Size 23 • Shape • Material LINKED RESULTS 17
  • 19. Category: Curry • Ingredients • How to cook Category: Stew • Ingredients • How to cook Meal A Meal B This plate is perfect for serving pasta Plate B • Size • Material This plate is perfect for serving curry ! • Size • Material Plate A 18 • Shape • Shape EXAMPLE OF LINKED RESULTS
  • 20. Category: Curry • Ingredients • How to cook Category: Stew • Ingredients • How to cook This plate is perfect for serving curry ! • Size • Material Meal A Meal B Plate A This plate is perfect for serving pasta Plate B • Size • Material Corresponds plate information to meal information by meal name (e.g., curry) 19 • Shape • Shape EXAMPLE OF LINKED RESULTS
  • 21. Category: Curry • Ingredients • How to cook Category: Stew • Ingredients • How to cook Meal A Meal B This plate is perfect for serving curry ! • Size • Material Plate A Applicable locations in the cycle If the ingredients or how to cook of MealA and MealB are similar, it is possible to serve MealB on PlateA even if the category is not curry 20 • Shape
  • 22. Category: Curry • Ingredients • How to cook This plate is perfect for serving curry ! • Size • Material Meal A Plate A This plate is perfect for serving pasta Plate B • Size • Material Applicable locations in the cycle If PlateA and PlateB are similar in size, shape and material, it is possible to serve MealB on PlateA even if curry is not mentioned in the product description 21 • Shape • Shape
  • 23. Focused phase (User selects a single plate(meal) from multiple meals(plates) using filtering search) • Meal-focused phase • Narrow down using conventional recipe recommendation technology • e.g., meal similarity [3], ingredients [4], and preferences [5] • Plate-focused phase • Narrow down using the plate appearance characteristics • e.g., color, pattern, shape, and size HOW THE IDEA WORKS 22 [3] Wang, L., Li, Q., Li, N., Dong, G., Yang, Y., 2008. Substructure smilarity measurement in chinese recipes, in: Proc. 17th Int. Conf. on World Wide Web, pp. 979–988. [4] Zhang, Q., Hu, R., Namee, B., Delany, S., 2008. Back to the future: Knowledge light case base cookery, in: Proc. 9th ECCBR, pp. 239––248 [5] Geleijnse, G.,Wang, L., Li, Q., 2010. Promoting tasty meals to support healthful eating, in:Wellness Informatics (WI)Workshop at CHI 2010.
  • 24. • The selection of plates is one of the important factors contributing to the enhancement of the dining experience • we provide a system for supporting user's exploration to find a suitable combination of meals and plates Using Suggested Cycle, • Users can organize their own preferences and select plates in an exploratory manner while understanding the compatibility of meals with plates CONCLUSION 23