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Humans + Machines: Using artificial intelligence to power your people
February 18 - 19, 2016 | Penthouse, TwentyFour Seven McKinley
Machine Learning and the
Smart City
Erika Fille T. Legara, Ph.D. | @eflegara
www.erikalegara.net
Scientist,Complex Systems
Institute of High Performance Computing
• Complexity science
• Data analytics maturity
• Modeling framework
• Machine learning methods in urban planning
– Commuter behaviour research
– Land-use and transport planning research
– Integrated transport model
Outline
COMPLEXITY SCIENCE
looking into the
SCIENCE of CITIES,
Computational Social Science,
Computational Biology & Ageing, and
Complex Networks.
http://www.a-star.edu.sg/ihpc/Research/Computing-Science-CS/Complex-Systems-Group-CxSy-Group/Overview.aspx
Bus	Arrivals
Waiting	time ½	x	headway2	 =	
the	area	of	each	
triangle
time
headway
headway
EWT
SWT
AWT
An interactive visual, demand modelling, and decision-support tool.!
An interactive visual, demand modelling, and decision-support tool.!
Bus	Arrivals
Waiting	time ½	x	headway2	 =	
the	area	of	each	
triangle
time
headway
headway
EWT
SWT
AWT
Modeling and
Simulations of
the Rapid Transit
System
Reliability
Analysis of Bus
Arrivals
Lightless
intersection
control numerical
simulations
Land-Use &
Transport
Modeling
Crowd Modeling
and Simulations
Characterizing
Public Transport
Commuters
Resilience of
Commuter
Encounter
Networks
Aging, Biology &
Computing:
Healthspan
Identification of
Regulators in a
Human Gene
Network
Urban Morphology
Dynamical Model of
Twitter Activity
Profiles
Diffusion &
Cascading
Failures on
Multiplex
Networks
Evolution & Adaptation
Artificial	 NN
Evolutionary	
computation
Genetic	
algorithms
AI	/	Artificial	 life Evo-Devo
Machine	learningEvolutionary	
robotics
Networks
SNA
Motifs
Graph	Theory Small-world
CentralityCommunity	
Detection
Robustness	 &	
Vulnerability
Adaptive	networks
SF	networks
Nonlinear Dynamics
ODE
Iterative	maps
Stability	analysisAttraction
Phase	space
ChaosPopulation	 dynamics
Time	series	analysis
Collective Behavior
Collective	 intelligence
Social	dynamics
Herd	mentality
Phase	transition
Synchronization
Ant	colony	
optimization
Particle	 swarm	
optimization
ABM
Self-organized	criticality
Game Theory
Prisoner’s	
Dilemma
Irrational	 behavior
Bounded	
rationality
Evolutionary	game	
theory
Cooperation	 vs
competition
Pattern Formation
Percolation
Reaction-diffusion
CA
Spatial	ecology
Partial	DE
Systems Theory
Feedbacks
Information	 theory
Entropy
Computation	 theory
Autopoiesis
Cybernetics
COMPLEXITY	
SCIENCE
Adapted from: Hiroki Sayama
Data Science
The Framework
Observations
Reconstruct
Observations
Scenario
Modeling
+
An IterativeProcessAdapted from: A. Vespignani and FuturICT
“Make the best fake metropolis.”
• Where should the next residential area be?
• Where should we build the next train station?
• What should be the path of the new train line?
• Is the color-coding scheme effective?
• What are the effects of U-turns along highways?
• When is road-widening effective, when is it not?
Urban Planning
Implementing policies based on
intuition alone can be expensive, time
consuming, and sometimes
catastrophic.
The Era of Big Data
The Framework
Observations
Reconstruct
Observations
Scenario
Modeling
+
An IterativeProcessAdapted from: A. Vespignani and FuturICT
Which typesofcommutersaretraveling?
Case Study1
• EF Legara and C Monterola, "Identifying Passenger Type
from Travel Routine," 2015 Conference on Complex
Systems, Phoenix, Arizona, USA, September 2015.
• Inferring Passenger Type from Commuter Travel Matrices,
EF Legara and C Monterola, submitted 2016.
• Quantify “natural tendencies” of commuters
• Understand the structure of the commuting public
• Different urban-related policies affect different kinds of
commuters
• Awareness of which commuter types are traveling, ads,
service announcements, and surveys, among others,
can be made more targeted spatiotemporally
Motivation
• 14-weeks travel data
• Randomly sampled anonymized ID’s
• 10 million journeys
• Three Passenger Types:
• Adult
• Student
• Senior citizen
Dataset Smart Fare Card
Tap	In Tap	Out
Morning
Peak Hour
Evening
Peak Hour
#	Commuters		Travelling
Hour	of	Day
Travel Demand Distribution
Observations
Reconstruct
Observations
Scenario
Modeling
+
An IterativeProcess
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
Travel Demand
Travel demand curve for different types vary.
Adults – two peaks
“working hours”
Children – one peak
“half-day classes”
Seniors – plateau-like
“unstructured
schedules ”
Morning
Peak Hour
Evening
Peak Hour
#"Commuters""Travelling"
Hour"of"Day"
#	Commuters		Travelling
Hour	of	Day
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
#"Commuters""Travelling"
Hour"of"Day"
Travel	ModeTravel	Demand
Travel demand curve for different types vary. Ratio of bus to RTS usage is
more pronounced for Senior Citizens.
Hint to the features to include in the classification model.
Travel Demand and Mode of Transport
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
m-slice (1min)
h-slice (1hr)
1 2 3 4
4 AM 12 Midnight12 Noon
…
6 PM
0 6051
…
0 602
h = 3
h = 4
…
0 6042
…
0 17
h = 15
h = 16
5953
15 16
Δρ = 9
Δρ = 18
Δρ = 17 Δρ = 6
17 18 19 20
14weeks
WeekdaysSaturdaysSundays
42weeks
20 hours
Hypothetical
Journeys
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph], 2015.
Eigentravel Matrix (“travel DNA”)
1	Matrix	::	840	Features
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
GBM1
DRF1
SVM
Train	the	
ML	models
Output
Input
Adult
Eigentravel Matrix (“travel DNA”)
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
GBM1
DRF1
SVM
Train	the	
ML	models
Output
Input
Child
Eigentravel Matrix (“travel DNA”)
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
GBM1
DRF1
SVM
Train	the	
ML	models
Output
Input
Senior
Eigentravel Matrix (“travel DNA”)
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
Eigentravel Matrices
GBM
DRF
SVM
50%-50%
Standard accuracy: 41% , which 25% better than proportional chance criteria
1	Matrix	::	840	Features
SCORE
76%
72%
64%
Models	
Trained!
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
Feature Importance
weekdays
weekdays
Take mean across hours
PEAK	HOUR
PEAK	HOUR
Top predictor variables are
outside peak hours.
v3
v8
v11
v12
EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015.
EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
v3"
v8"
v11"
v12"
Predictor Hour	of	Day Isolated	Curve Remarks
v3 0600	hours C-curve Children dominate	travel	demand
Travel	demand	highest	and	narrowest
v8 1100	hours S-curve Working	adults	in	offices
Children/students	 in	classes
Elderlies travelling
v11
v12
1400	hours
1500	hours
A-curve Working	adults	in	offices
Elderlies	travelling
Children/students travelling	home
Results
• Characterized passengers: Adults, Senior, Children
• People are predictable (to some extent)
• Established method to construct distinct commuter matrices
• Travel start time
• Travel duration
• Mode of transport
• Built ML models from 840 features and estimated variables
importances
– GBM (76%), DRF (72%), and SVM (64%)
• Weekday travel features are better predictorsthan weekends.
Case Summary
Howdoesland-use designaffecttraveldemand?
Case Study2
Interpreting land-use and amenities in public transit ridership: implications in urban
planning, N. Hu, E.F. Legara, K.K. Lee and C. Monterola, submitted 2015.
• Evaluate the impact of urban entities (land-use and
amenities) to ridership.
• What are the specific infrastructure or amenity types to
build to improve mobility of citizens?
• Develop a decision-support tool to assess impacts of
land-use configurations on ridership; evaluate “what-if”
scenarios)
Motivation
• 1 week travel data (anonymised)
• Tap-in and tap-out
Datasets Smart Fare Card
Tap	In Tap	Out
Datasets OpenStreetMap
Datasets Land Use Plan
Source:	http://www.mnd.gov.sg/LandUsePlan/theme/default/image/hme_our_land_use_plan.jpg
Source:	http://100pp.com.sg/images/LAnd%20Use%20Plan%20to%20Support%20Singapore.jpg
Source:	A	High	Quality	Living	Environment	for	All	Singaporeans:	Land	Use	Plan	to	Support	Singapore’s	Future	Population,	January	2013
Land	Use	Plan	(LUP) Greeneries
Amenities LUP	+	Greeneries
Land Use and Amenities
N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in
urban planning," submitted 2015.
Transport Points OpenStreetMap
Transport Points & Amenities
Feature Selection
Residential
Business
Industrial
Greenery
Sustenance
Education
Transit
Finance
Healthcare
Entertainment
Commercial
Other
Water
Other
Which land-use feature ultimately dictates the
number of tap-ins and tap-outs within a station?
N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in
urban planning," submitted 2015.
Use the surrounding urban entities to estimate travel
demand (# of tap-ins and # of tap-outs).
Prediction
N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in
urban planning," submitted 2015.
Scenario Modeling
“Conceptual Plan” (2030) Hypothetical Amenity Increase
N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in
urban planning," submitted 2015.
Scenario Modeling: Results
Amenity	Increase
N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in
urban planning," submitted 2015.
The BigPicture
Rapid	Transit	System	
Bus	System	
Taxi	System	
Private	Cars	
A	System	of	Systems	Approach	
Pedestrians/Commuters
Scenario Modeling: Mathematical + ABM + ML
• EF	Legara,	KK	Lee,	GG	Hung,	and	C	Monteorla,	"Mechanism-based	model	of	a	mass	rapid	transit	system:	A	perspective,"		Int.	J.	Mod.	Phys.	Conf.	Ser.	36,	1560011,	2015.
• N	Othman,	EF	Legara,	V	Selvam,	and	C	Monterola,	"A	Data-Driven	Agent-Based	Model	of	Congestion	and	Scaling	Dynamics	of	Rapid	Transit	Systems,"	J	of	Computational	Science	(2015).	
• EF	Legara,	C	Monterola,	KK	Lee,	GG	Hung,	"Critical	capacity,	travel	time	delays	and	travel	time	distribution	of	rapid	mass	transit	systems,"	Physica A	406,	pp.	100-106	(2014).
Summary
Summary
Observations
Reconstruct
Observations
Scenario
Modeling
+
An IterativeProcessAdapted from: A. Vespignani and FuturICT
“Essentially,
all models are wrong,
but some are useful."
“We are not in the business of
predicting the EXACT futures.“ -EFL
Humans + Machines: Using artificial intelligence to power your people
February 18 - 19, 2016 | Penthouse, TwentyFour Seven McKinley
Machine Learning and the
Smart City
Erika Fille T. Legara, Ph.D. | @eflegara
www.erikalegara.net
Scientist,Complex Systems
Institute of High Performance Computing

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Machine Learning and the Smart City

  • 1. Humans + Machines: Using artificial intelligence to power your people February 18 - 19, 2016 | Penthouse, TwentyFour Seven McKinley Machine Learning and the Smart City Erika Fille T. Legara, Ph.D. | @eflegara www.erikalegara.net Scientist,Complex Systems Institute of High Performance Computing
  • 2. • Complexity science • Data analytics maturity • Modeling framework • Machine learning methods in urban planning – Commuter behaviour research – Land-use and transport planning research – Integrated transport model Outline
  • 3. COMPLEXITY SCIENCE looking into the SCIENCE of CITIES, Computational Social Science, Computational Biology & Ageing, and Complex Networks. http://www.a-star.edu.sg/ihpc/Research/Computing-Science-CS/Complex-Systems-Group-CxSy-Group/Overview.aspx
  • 5. An interactive visual, demand modelling, and decision-support tool.! Bus Arrivals Waiting time ½ x headway2 = the area of each triangle time headway headway EWT SWT AWT Modeling and Simulations of the Rapid Transit System Reliability Analysis of Bus Arrivals Lightless intersection control numerical simulations Land-Use & Transport Modeling Crowd Modeling and Simulations Characterizing Public Transport Commuters Resilience of Commuter Encounter Networks Aging, Biology & Computing: Healthspan Identification of Regulators in a Human Gene Network Urban Morphology Dynamical Model of Twitter Activity Profiles Diffusion & Cascading Failures on Multiplex Networks
  • 6. Evolution & Adaptation Artificial NN Evolutionary computation Genetic algorithms AI / Artificial life Evo-Devo Machine learningEvolutionary robotics Networks SNA Motifs Graph Theory Small-world CentralityCommunity Detection Robustness & Vulnerability Adaptive networks SF networks Nonlinear Dynamics ODE Iterative maps Stability analysisAttraction Phase space ChaosPopulation dynamics Time series analysis Collective Behavior Collective intelligence Social dynamics Herd mentality Phase transition Synchronization Ant colony optimization Particle swarm optimization ABM Self-organized criticality Game Theory Prisoner’s Dilemma Irrational behavior Bounded rationality Evolutionary game theory Cooperation vs competition Pattern Formation Percolation Reaction-diffusion CA Spatial ecology Partial DE Systems Theory Feedbacks Information theory Entropy Computation theory Autopoiesis Cybernetics COMPLEXITY SCIENCE Adapted from: Hiroki Sayama
  • 9. “Make the best fake metropolis.”
  • 10. • Where should the next residential area be? • Where should we build the next train station? • What should be the path of the new train line? • Is the color-coding scheme effective? • What are the effects of U-turns along highways? • When is road-widening effective, when is it not? Urban Planning
  • 11. Implementing policies based on intuition alone can be expensive, time consuming, and sometimes catastrophic.
  • 12. The Era of Big Data
  • 14.
  • 15. Which typesofcommutersaretraveling? Case Study1 • EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. • Inferring Passenger Type from Commuter Travel Matrices, EF Legara and C Monterola, submitted 2016.
  • 16. • Quantify “natural tendencies” of commuters • Understand the structure of the commuting public • Different urban-related policies affect different kinds of commuters • Awareness of which commuter types are traveling, ads, service announcements, and surveys, among others, can be made more targeted spatiotemporally Motivation
  • 17. • 14-weeks travel data • Randomly sampled anonymized ID’s • 10 million journeys • Three Passenger Types: • Adult • Student • Senior citizen Dataset Smart Fare Card Tap In Tap Out
  • 18. Morning Peak Hour Evening Peak Hour # Commuters Travelling Hour of Day Travel Demand Distribution Observations Reconstruct Observations Scenario Modeling + An IterativeProcess EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
  • 19. Travel Demand Travel demand curve for different types vary. Adults – two peaks “working hours” Children – one peak “half-day classes” Seniors – plateau-like “unstructured schedules ” Morning Peak Hour Evening Peak Hour #"Commuters""Travelling" Hour"of"Day" # Commuters Travelling Hour of Day EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
  • 20. #"Commuters""Travelling" Hour"of"Day" Travel ModeTravel Demand Travel demand curve for different types vary. Ratio of bus to RTS usage is more pronounced for Senior Citizens. Hint to the features to include in the classification model. Travel Demand and Mode of Transport EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
  • 21. m-slice (1min) h-slice (1hr) 1 2 3 4 4 AM 12 Midnight12 Noon … 6 PM 0 6051 … 0 602 h = 3 h = 4 … 0 6042 … 0 17 h = 15 h = 16 5953 15 16 Δρ = 9 Δρ = 18 Δρ = 17 Δρ = 6 17 18 19 20 14weeks WeekdaysSaturdaysSundays 42weeks 20 hours Hypothetical Journeys EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph], 2015.
  • 22. Eigentravel Matrix (“travel DNA”) 1 Matrix :: 840 Features EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
  • 23. GBM1 DRF1 SVM Train the ML models Output Input Adult Eigentravel Matrix (“travel DNA”) EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
  • 24. GBM1 DRF1 SVM Train the ML models Output Input Child Eigentravel Matrix (“travel DNA”) EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
  • 25. GBM1 DRF1 SVM Train the ML models Output Input Senior Eigentravel Matrix (“travel DNA”) EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
  • 26. Eigentravel Matrices GBM DRF SVM 50%-50% Standard accuracy: 41% , which 25% better than proportional chance criteria 1 Matrix :: 840 Features SCORE 76% 72% 64% Models Trained! EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
  • 27. Feature Importance weekdays weekdays Take mean across hours PEAK HOUR PEAK HOUR Top predictor variables are outside peak hours. v3 v8 v11 v12 EF Legara and C Monterola, "Identifying Passenger Type from Travel Routine," 2015 Conference on Complex Systems, Phoenix, Arizona, USA, September 2015. EF Legara and C Monterola, arXiv:1509.01199 [physics.soc-ph].
  • 28. v3" v8" v11" v12" Predictor Hour of Day Isolated Curve Remarks v3 0600 hours C-curve Children dominate travel demand Travel demand highest and narrowest v8 1100 hours S-curve Working adults in offices Children/students in classes Elderlies travelling v11 v12 1400 hours 1500 hours A-curve Working adults in offices Elderlies travelling Children/students travelling home Results
  • 29. • Characterized passengers: Adults, Senior, Children • People are predictable (to some extent) • Established method to construct distinct commuter matrices • Travel start time • Travel duration • Mode of transport • Built ML models from 840 features and estimated variables importances – GBM (76%), DRF (72%), and SVM (64%) • Weekday travel features are better predictorsthan weekends. Case Summary
  • 30. Howdoesland-use designaffecttraveldemand? Case Study2 Interpreting land-use and amenities in public transit ridership: implications in urban planning, N. Hu, E.F. Legara, K.K. Lee and C. Monterola, submitted 2015.
  • 31. • Evaluate the impact of urban entities (land-use and amenities) to ridership. • What are the specific infrastructure or amenity types to build to improve mobility of citizens? • Develop a decision-support tool to assess impacts of land-use configurations on ridership; evaluate “what-if” scenarios) Motivation
  • 32. • 1 week travel data (anonymised) • Tap-in and tap-out Datasets Smart Fare Card Tap In Tap Out
  • 34. Datasets Land Use Plan Source: http://www.mnd.gov.sg/LandUsePlan/theme/default/image/hme_our_land_use_plan.jpg Source: http://100pp.com.sg/images/LAnd%20Use%20Plan%20to%20Support%20Singapore.jpg Source: A High Quality Living Environment for All Singaporeans: Land Use Plan to Support Singapore’s Future Population, January 2013
  • 35. Land Use Plan (LUP) Greeneries Amenities LUP + Greeneries Land Use and Amenities N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in urban planning," submitted 2015.
  • 37. Transport Points & Amenities
  • 38. Feature Selection Residential Business Industrial Greenery Sustenance Education Transit Finance Healthcare Entertainment Commercial Other Water Other Which land-use feature ultimately dictates the number of tap-ins and tap-outs within a station? N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in urban planning," submitted 2015.
  • 39. Use the surrounding urban entities to estimate travel demand (# of tap-ins and # of tap-outs). Prediction N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in urban planning," submitted 2015.
  • 40. Scenario Modeling “Conceptual Plan” (2030) Hypothetical Amenity Increase N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in urban planning," submitted 2015.
  • 41. Scenario Modeling: Results Amenity Increase N. Hu, E.F. Legara, K.K. Lee, and C. Monterola, " Interpreting land-use and amenities in public transit ridership: implications in urban planning," submitted 2015.
  • 44. Scenario Modeling: Mathematical + ABM + ML • EF Legara, KK Lee, GG Hung, and C Monteorla, "Mechanism-based model of a mass rapid transit system: A perspective," Int. J. Mod. Phys. Conf. Ser. 36, 1560011, 2015. • N Othman, EF Legara, V Selvam, and C Monterola, "A Data-Driven Agent-Based Model of Congestion and Scaling Dynamics of Rapid Transit Systems," J of Computational Science (2015). • EF Legara, C Monterola, KK Lee, GG Hung, "Critical capacity, travel time delays and travel time distribution of rapid mass transit systems," Physica A 406, pp. 100-106 (2014).
  • 47. “Essentially, all models are wrong, but some are useful." “We are not in the business of predicting the EXACT futures.“ -EFL
  • 48. Humans + Machines: Using artificial intelligence to power your people February 18 - 19, 2016 | Penthouse, TwentyFour Seven McKinley Machine Learning and the Smart City Erika Fille T. Legara, Ph.D. | @eflegara www.erikalegara.net Scientist,Complex Systems Institute of High Performance Computing