SlideShare una empresa de Scribd logo
1 de 36
An Empirical Study on Simplification of
Business Process Modeling Languages
Marco Brambilla, Eric Umuhoza, Politecnico di Milano, Italy
Jordi Cabot, ICREA & UOC, Spain
Davide Ripamonti, Fluxedo, Italy
Agenda
• Motivation
• Problem setting
• Process
• Experience reporting
• Success story (?)
Context and Motivation
• Adaptation of modeling languages
 Standard languages are complex
 No perfect match of the domain to be modeled
• Other approaches towards simplification
 New DSLs
 Extending an existing base language
• Our approach
 Simplify existing language according to the user needs
Empirical experiment: BPM scenario
Michael zur Muehlen and Jan Recker "How much language is enough? "
How much is enough?
Objective: Personal Processes
From BPM to PPM
Study “how much is enough” for
• End users
• Collaborative planning and execution
• Social network based interactions
Meanwhile on the TODOlist planet…
Commercial Question
Any Space for intermediate solutions?
Our Study
Our ProcessEnd-userLanguagedesigner
User
Questionnaire
Language
Evaluation
Definition of
Language
Variants
Modeling of
Use Cases
Simplified
Language
Selection of
Reducible
Language Elements
General
Language
Beyond classical approaches of language quality
(e.g., Moody’s physics)
1. Semiotic Clarity
2. Perceptual Discriminability
3. Semantic Transparency
4. Complexity Management
5. Cognitive Integration
6. Visual Expressiveness
7. Dual Coding
8. Graphic Economy
9. Cognitive Fit
Not just about the Syntax
Before going to syntax, you need to address semantics!
• Identify possible reduction points
• Select variations of those points
• Cluster them (too many combinations!)
Selection of reducible elements
Syntax Variants
Elements to evaluate Syntax 1 Syntax 2 Syntax 3 Syntax 4
Start x x x x
End x x x x
Task x x x x
Params: global x x
Params: single local x
Params: multiple local x
Events x x x
Sequence x x x x
Parallel x x x
Condition x x x
Cycle x
Implementation details
Online model editor (PHP, HTML5, CSS3, JS JQuery)
• Maximum usability
• Configurable for syntax variants
• Tracking user activity
• Minimal model checking realitme
Validation
Experiment setup
• 3 application scenarios
• 4 syntax variants
• 24 users
• Multiple tests per user
Variants
Assigment
4 syntaxes
3 scenarios
Graeco-latin square:
• 2 cases per user
• No replication of sytax nor
scenario
}= 12 cases
Variants
Assigment
4 syntaxes
3 scenarios
Graeco-latin square:
• The real one
Procedure with users
1. Intro
2. Learning
3. Experiment
1. Learn syntax
2. Read scenario
3. Model scenario with syntax
4. Questionnaire
1. Demographics
2. Evaluation of experience
Results Analysis
• Average modeling time • Average # of used
concepts
~16 min
~21 min
~19 min
Language VariantsLanguage Variants
Duration(s)
#Elements
Modeling operations – average count
Results Analysis
Wait Until Parallel Condition Cycle Activity Sequence
#Elements
Common modeling errors
Results analysis
Explicit feedback on language variant complexity
Language Variants
#opinions
Easy Med Hard
Rule of “thumb” on Language Variants
Variant 1
Simpler, faster, less errors, limited power (no conditions)
Variant 2
Strong thanks to looping, a lot of errors
Variant 3
Good compromise. Limited by single local parameter
Variant 4
Harder, slower, more errors. Multiple local parameters not
appraciated
Rule of “thumb” on Single Elements
• Event Until
• Parallel
• Condition
• Cycle
• Global params
• Event Wait
• Local params single
• Local params multiple
Conclusions
• Simplification in mind
• Definition of a formalized selection process of
language constructs and variants
• Actual selection of a variant for our case study
Future Work
• Modeling through multiple expertise levels
– From expert to the crowd
END OF THE STORY
NOT THE
END OF THE STORY
A company has born
www.fluxedo.com
Key: reduce complexity. FROM THIS…
TO THIS…
Integrating people…
Integrazione servizi online.. and Online Services
Take home message
• Being a modeler is hard
• Modeling simplification seems really to lead to
extreme solutions, i.e. completely hide modeling
The challenge is not to show off modeling, is to hide it
An Empirical Study on Simplification of
Business Process Modeling Languages
marco.brambilla@polimi.it
@marcobrambi
@fluxedo_app
Thanks

Más contenido relacionado

Más de Marco Brambilla

Community analysis using graph representation learning on social networks
Community analysis using graph representation learning on social networksCommunity analysis using graph representation learning on social networks
Community analysis using graph representation learning on social networks
Marco Brambilla
 
Data Cleaning for social media knowledge extraction
Data Cleaning for social media knowledge extractionData Cleaning for social media knowledge extraction
Data Cleaning for social media knowledge extraction
Marco Brambilla
 
Driving Style and Behavior Analysis based on Trip Segmentation over GPS Info...
Driving Style and Behavior Analysis based on Trip Segmentation over GPS  Info...Driving Style and Behavior Analysis based on Trip Segmentation over GPS  Info...
Driving Style and Behavior Analysis based on Trip Segmentation over GPS Info...
Marco Brambilla
 
Myths and challenges in knowledge extraction and analysis from human-generate...
Myths and challenges in knowledge extraction and analysis from human-generate...Myths and challenges in knowledge extraction and analysis from human-generate...
Myths and challenges in knowledge extraction and analysis from human-generate...
Marco Brambilla
 
Web Science. An introduction
Web Science. An introductionWeb Science. An introduction
Web Science. An introduction
Marco Brambilla
 
On the Quest for Changing Knowledge. Capturing emerging entities from social ...
On the Quest for Changing Knowledge. Capturing emerging entities from social ...On the Quest for Changing Knowledge. Capturing emerging entities from social ...
On the Quest for Changing Knowledge. Capturing emerging entities from social ...
Marco Brambilla
 
Model driven software engineering in practice book - Chapter 9 - Model to tex...
Model driven software engineering in practice book - Chapter 9 - Model to tex...Model driven software engineering in practice book - Chapter 9 - Model to tex...
Model driven software engineering in practice book - Chapter 9 - Model to tex...
Marco Brambilla
 
Model driven software engineering in practice book - chapter 7 - Developing y...
Model driven software engineering in practice book - chapter 7 - Developing y...Model driven software engineering in practice book - chapter 7 - Developing y...
Model driven software engineering in practice book - chapter 7 - Developing y...
Marco Brambilla
 
IFML - Internet of Things and Internet of People: The Role of User Interactio...
IFML - Internet of Things and Internet of People: The Role of User Interactio...IFML - Internet of Things and Internet of People: The Role of User Interactio...
IFML - Internet of Things and Internet of People: The Role of User Interactio...
Marco Brambilla
 
Model-Driven Software Engineering in Practice - Chapter 5 - Integration of Mo...
Model-Driven Software Engineering in Practice - Chapter 5 - Integration of Mo...Model-Driven Software Engineering in Practice - Chapter 5 - Integration of Mo...
Model-Driven Software Engineering in Practice - Chapter 5 - Integration of Mo...
Marco Brambilla
 

Más de Marco Brambilla (20)

Analyzing rich club behavior in open source projects
Analyzing rich club behavior in open source projectsAnalyzing rich club behavior in open source projects
Analyzing rich club behavior in open source projects
 
Analysis of On-line Debate on Long-Running Political Phenomena. The Brexit C...
Analysis of On-line Debate on Long-Running Political Phenomena.The Brexit C...Analysis of On-line Debate on Long-Running Political Phenomena.The Brexit C...
Analysis of On-line Debate on Long-Running Political Phenomena. The Brexit C...
 
Community analysis using graph representation learning on social networks
Community analysis using graph representation learning on social networksCommunity analysis using graph representation learning on social networks
Community analysis using graph representation learning on social networks
 
Available Data Science M.Sc. Thesis Proposals
Available Data Science M.Sc. Thesis Proposals Available Data Science M.Sc. Thesis Proposals
Available Data Science M.Sc. Thesis Proposals
 
Data Cleaning for social media knowledge extraction
Data Cleaning for social media knowledge extractionData Cleaning for social media knowledge extraction
Data Cleaning for social media knowledge extraction
 
Iterative knowledge extraction from social networks. The Web Conference 2018
Iterative knowledge extraction from social networks. The Web Conference 2018Iterative knowledge extraction from social networks. The Web Conference 2018
Iterative knowledge extraction from social networks. The Web Conference 2018
 
Driving Style and Behavior Analysis based on Trip Segmentation over GPS Info...
Driving Style and Behavior Analysis based on Trip Segmentation over GPS  Info...Driving Style and Behavior Analysis based on Trip Segmentation over GPS  Info...
Driving Style and Behavior Analysis based on Trip Segmentation over GPS Info...
 
Myths and challenges in knowledge extraction and analysis from human-generate...
Myths and challenges in knowledge extraction and analysis from human-generate...Myths and challenges in knowledge extraction and analysis from human-generate...
Myths and challenges in knowledge extraction and analysis from human-generate...
 
Harvesting Knowledge from Social Networks: Extracting Typed Relationships amo...
Harvesting Knowledge from Social Networks: Extracting Typed Relationships amo...Harvesting Knowledge from Social Networks: Extracting Typed Relationships amo...
Harvesting Knowledge from Social Networks: Extracting Typed Relationships amo...
 
Model-driven Development of User Interfaces for IoT via Domain-specific Comp...
Model-driven Development of  User Interfaces for IoT via Domain-specific Comp...Model-driven Development of  User Interfaces for IoT via Domain-specific Comp...
Model-driven Development of User Interfaces for IoT via Domain-specific Comp...
 
A Model-Based Method for Seamless Web and Mobile Experience. Splash 2016 conf.
A Model-Based Method for  Seamless Web and Mobile Experience. Splash 2016 conf.A Model-Based Method for  Seamless Web and Mobile Experience. Splash 2016 conf.
A Model-Based Method for Seamless Web and Mobile Experience. Splash 2016 conf.
 
Big Data and Stream Data Analysis at Politecnico di Milano
Big Data and Stream Data Analysis at Politecnico di MilanoBig Data and Stream Data Analysis at Politecnico di Milano
Big Data and Stream Data Analysis at Politecnico di Milano
 
Web Science. An introduction
Web Science. An introductionWeb Science. An introduction
Web Science. An introduction
 
On the Quest for Changing Knowledge. Capturing emerging entities from social ...
On the Quest for Changing Knowledge. Capturing emerging entities from social ...On the Quest for Changing Knowledge. Capturing emerging entities from social ...
On the Quest for Changing Knowledge. Capturing emerging entities from social ...
 
Studying Multicultural Diversity of Cities and Neighborhoods through Social M...
Studying Multicultural Diversity of Cities and Neighborhoods through Social M...Studying Multicultural Diversity of Cities and Neighborhoods through Social M...
Studying Multicultural Diversity of Cities and Neighborhoods through Social M...
 
Model driven software engineering in practice book - Chapter 9 - Model to tex...
Model driven software engineering in practice book - Chapter 9 - Model to tex...Model driven software engineering in practice book - Chapter 9 - Model to tex...
Model driven software engineering in practice book - Chapter 9 - Model to tex...
 
Model driven software engineering in practice book - chapter 7 - Developing y...
Model driven software engineering in practice book - chapter 7 - Developing y...Model driven software engineering in practice book - chapter 7 - Developing y...
Model driven software engineering in practice book - chapter 7 - Developing y...
 
Automatic code generation for cross platform, multi-device mobile apps. An in...
Automatic code generation for cross platform, multi-device mobile apps. An in...Automatic code generation for cross platform, multi-device mobile apps. An in...
Automatic code generation for cross platform, multi-device mobile apps. An in...
 
IFML - Internet of Things and Internet of People: The Role of User Interactio...
IFML - Internet of Things and Internet of People: The Role of User Interactio...IFML - Internet of Things and Internet of People: The Role of User Interactio...
IFML - Internet of Things and Internet of People: The Role of User Interactio...
 
Model-Driven Software Engineering in Practice - Chapter 5 - Integration of Mo...
Model-Driven Software Engineering in Practice - Chapter 5 - Integration of Mo...Model-Driven Software Engineering in Practice - Chapter 5 - Integration of Mo...
Model-Driven Software Engineering in Practice - Chapter 5 - Integration of Mo...
 

Último

Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsBiogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Sérgio Sacani
 
Digital Dentistry.Digital Dentistryvv.pptx
Digital Dentistry.Digital Dentistryvv.pptxDigital Dentistry.Digital Dentistryvv.pptx
Digital Dentistry.Digital Dentistryvv.pptx
MohamedFarag457087
 
LUNULARIA -features, morphology, anatomy ,reproduction etc.
LUNULARIA -features, morphology, anatomy ,reproduction etc.LUNULARIA -features, morphology, anatomy ,reproduction etc.
LUNULARIA -features, morphology, anatomy ,reproduction etc.
Silpa
 
Reboulia: features, anatomy, morphology etc.
Reboulia: features, anatomy, morphology etc.Reboulia: features, anatomy, morphology etc.
Reboulia: features, anatomy, morphology etc.
Silpa
 
THE ROLE OF BIOTECHNOLOGY IN THE ECONOMIC UPLIFT.pptx
THE ROLE OF BIOTECHNOLOGY IN THE ECONOMIC UPLIFT.pptxTHE ROLE OF BIOTECHNOLOGY IN THE ECONOMIC UPLIFT.pptx
THE ROLE OF BIOTECHNOLOGY IN THE ECONOMIC UPLIFT.pptx
ANSARKHAN96
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY
1301aanya
 

Último (20)

TransientOffsetin14CAftertheCarringtonEventRecordedbyPolarTreeRings
TransientOffsetin14CAftertheCarringtonEventRecordedbyPolarTreeRingsTransientOffsetin14CAftertheCarringtonEventRecordedbyPolarTreeRings
TransientOffsetin14CAftertheCarringtonEventRecordedbyPolarTreeRings
 
Selaginella: features, morphology ,anatomy and reproduction.
Selaginella: features, morphology ,anatomy and reproduction.Selaginella: features, morphology ,anatomy and reproduction.
Selaginella: features, morphology ,anatomy and reproduction.
 
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsBiogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
 
GBSN - Biochemistry (Unit 2) Basic concept of organic chemistry
GBSN - Biochemistry (Unit 2) Basic concept of organic chemistry GBSN - Biochemistry (Unit 2) Basic concept of organic chemistry
GBSN - Biochemistry (Unit 2) Basic concept of organic chemistry
 
Grade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsGrade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its Functions
 
Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.
 
Digital Dentistry.Digital Dentistryvv.pptx
Digital Dentistry.Digital Dentistryvv.pptxDigital Dentistry.Digital Dentistryvv.pptx
Digital Dentistry.Digital Dentistryvv.pptx
 
Thyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate ProfessorThyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate Professor
 
Climate Change Impacts on Terrestrial and Aquatic Ecosystems.pptx
Climate Change Impacts on Terrestrial and Aquatic Ecosystems.pptxClimate Change Impacts on Terrestrial and Aquatic Ecosystems.pptx
Climate Change Impacts on Terrestrial and Aquatic Ecosystems.pptx
 
Atp synthase , Atp synthase complex 1 to 4.
Atp synthase , Atp synthase complex 1 to 4.Atp synthase , Atp synthase complex 1 to 4.
Atp synthase , Atp synthase complex 1 to 4.
 
LUNULARIA -features, morphology, anatomy ,reproduction etc.
LUNULARIA -features, morphology, anatomy ,reproduction etc.LUNULARIA -features, morphology, anatomy ,reproduction etc.
LUNULARIA -features, morphology, anatomy ,reproduction etc.
 
Reboulia: features, anatomy, morphology etc.
Reboulia: features, anatomy, morphology etc.Reboulia: features, anatomy, morphology etc.
Reboulia: features, anatomy, morphology etc.
 
THE ROLE OF BIOTECHNOLOGY IN THE ECONOMIC UPLIFT.pptx
THE ROLE OF BIOTECHNOLOGY IN THE ECONOMIC UPLIFT.pptxTHE ROLE OF BIOTECHNOLOGY IN THE ECONOMIC UPLIFT.pptx
THE ROLE OF BIOTECHNOLOGY IN THE ECONOMIC UPLIFT.pptx
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY
 
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
 
CURRENT SCENARIO OF POULTRY PRODUCTION IN INDIA
CURRENT SCENARIO OF POULTRY PRODUCTION IN INDIACURRENT SCENARIO OF POULTRY PRODUCTION IN INDIA
CURRENT SCENARIO OF POULTRY PRODUCTION IN INDIA
 
Molecular markers- RFLP, RAPD, AFLP, SNP etc.
Molecular markers- RFLP, RAPD, AFLP, SNP etc.Molecular markers- RFLP, RAPD, AFLP, SNP etc.
Molecular markers- RFLP, RAPD, AFLP, SNP etc.
 
Use of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptxUse of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptx
 
Dr. E. Muralinath_ Blood indices_clinical aspects
Dr. E. Muralinath_ Blood indices_clinical  aspectsDr. E. Muralinath_ Blood indices_clinical  aspects
Dr. E. Muralinath_ Blood indices_clinical aspects
 
Role of AI in seed science Predictive modelling and Beyond.pptx
Role of AI in seed science  Predictive modelling and  Beyond.pptxRole of AI in seed science  Predictive modelling and  Beyond.pptx
Role of AI in seed science Predictive modelling and Beyond.pptx
 

An Empirical Study on Simplification of Business Process Modeling Languages (BPMN). Presentation at SLE2015 & SPLASH2015 Pittsburg, PA