SlideShare uma empresa Scribd logo
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Big Data & Analytics for the Public Sector
2 October 2019
Tony Bonen (tony.bonen@lmic-cimt.ca)
Director, Research, Data and Analytics
Towards Open LMI Data
Principles, Users and Context
1 Introduction to LMIC
2 Principles for Establishing Open LMI
3 Focus on Use Cases
4 Contextualizing Skills Data
5 Conclusion
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Who We Are
National
Stakeholder
Advisory
Panel (NSAP)
Labour Market
Information
Experts Panel
Board
of Directors
(13 PTs, ESDC,
and Statistics
Canada)
NSAP Chair
(David Ticoll)
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Strategic Goals
COLLECT ANALYZE DISTRIBUTE
Gather and improve
the availability of
relevant LMI
Undertake insightful and
high-quality analyses of
LMI
Provide Canadians with
timely, relevant and
reliable LMI
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Our Values
•Client Centric and Demand Driven
•Inclusive and Collaborative
•Integrity and Transparency
•Innovative and Evolutionary
1 Introduction to LMIC
2 Principles for Establishing Open LMI
3 Focus on Use Cases
4 Contextualizing Skills Data
5 Conclusion
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
LMIC Data
Hub
Refine LMI
needs
Map
delivery
system
Re-
Structure
data
Guidelines
+
Metadata
Take stock
of existing
LMI
Understan
d LMI
needs
Open LMI is a Process
Phase I Phase II Phase III Phase IV
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Principles: Users and Information
User (demand)
Relevant Address specific questions of individuals
Contextualized Data and insights placed in broader
context
Findable Easy to obtain through standard means
(e.g., googling, navigable website)
Accessible Different channels to access
Understandable Described in plain language with clearly
articulated connections between data
points
Information (supply)
Reliable High level of accuracy and
representativeness
Comprehensive Available for largest set of areas,
populations and indicators possible
Validated Rigorous processing system
Comparable Consistently applied descriptors
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Principles: Underlying Data Standards
Data characteristics
Open Ease with which data can be
accessed in machine-readable format
Localness Smallest geographic area
Granular Number and specificity of grouping
variables (e.g., demographics)
Frequent Rate at which data are updated
Timely Delay between data reference period
and when it becomes available
Metadata characteristics
Open Ease with which metadata can be
accessed in machine-readable format
Consistent Similarity of underlying methods for
producing data across sources and
through time
Annotated Detailed information, caveats and
commentary of data (“meta-metadata”)
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
LMIC Hub: Separating data from use-case
Statistics
Canada
F/P/T (admin
data,
occupational
outlook, etc.)
Other, e.g.
private sources
LMIC
API
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
LMIC Hub: Separating data from use-case
Statistics
Canada
F/P/T (admin
data,
occupational
outlook, etc.)
Other, e.g.
private sources
New LMI
LMIC
API
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
LMIC Hub: Separating data from use-case
Statistics
Canada
F/P/T (admin
data,
occupational
outlook, etc.)
Other, e.g.
private sources
New LMI
LMIC
API
Restructure
data
Partnerships
to generate
new LMI
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
LMIC Hub: Separating data from use-case
Job
outlooks
Statistics
Canada
F/P/T (admin
data,
occupational
outlook, etc.)
Other, e.g.
private sources
New LMI
Other
data
Salaries
by field
of study
Skills in
demand
LMIC
API
Restructure
data
Partnerships
to generate
new LMI
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
LMIC Hub: Separating data from use-case
Flows to
Intermediaries
Job
outlooks
Statistics
Canada
F/P/T (admin
data,
occupational
outlook, etc.)
Other, e.g.
private sources
New LMI
Other
data
Salaries
by field
of study
Skills in
demand
LMIC
Intermediary:
Education/
Career choice
API
Intermediary:
Investment
decision
Restructure
data
Partnerships
to generate
new LMI
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
LMIC Hub: Separating data from use-case
Flows to
Intermediaries
Job
outlooks
Statistics
Canada
F/P/T (admin
data,
occupational
outlook, etc.)
Other, e.g.
private sources
New LMI
Other
data
Salaries
by field
of study
Skills in
demand
LMIC
Intermediary:
Education/
Career choice
API
Intermediary:
Investment
decision
Restructure
data
Partnerships
to generate
new LMI
Other LMI
Sources
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
LMIC Hub: Separating data from use-case
Flows to
Intermediaries
Job
outlooks
Statistics
Canada
F/P/T (admin
data,
occupational
outlook, etc.)
Other, e.g.
private sources
New LMI
Other
data
Salaries
by field
of study
Skills in
demand
LMIC
Intermediary:
Education/
Career choice
API
Intermediary:
Investment
decision
Restructure
data
Partnerships
to generate
new LMI
Other LMI
Sources
Other
non-LMI
Sources
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
LMIC Hub: Separating data from use-case
Flows to
Intermediaries End Users
Job
outlooks
Current College/
University students
Industry/sector
Statistics
Canada
F/P/T (admin
data,
occupational
outlook, etc.)
Other, e.g.
private sources
New LMI
Other
data
Salaries
by field
of study
Skills in
demand
LMIC
Intermediary:
Education/
Career choice
API
Intermediary:
Investment
decision
Restructure
data
Partnerships
to generate
new LMI
Other LMI
Sources
Other
non-LMI
Sources
1 Introduction to LMIC
2 Principles for Establishing Open LMI
3 Focus on Use Cases
4 Contextualizing Skills Data
5 Conclusion
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Develop Based on Use Cases
• Who will use the data?
• What decisions are they trying to make?
• What is their current level of understanding?
• What does the existing ecosystem look like, and how can it
be leveraged?
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Use Cases Help Identify Data Needs
What?
Career
decisions
How LMI is
consumed
How career
decisions are
made
❶ Why?❷
Data Needs
• Type (e.g., wages)
• Structure (e.g., take-home
pay vs. annual gross
salary or hourly wages)
Best practices
• Distributing LMI (e.g.,
what is best form of
dissemination, frequency,
etc.)
How?❸
Qualitative
research
Literature
review
International
experiences
Test 1 use case
Repeat &
expand
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Data Architecture Will Follow
Important questions to tackle around architecture:
• Costs and functionality trade off
• Data Warehouse vs Data Lake
• Scalability
• Geographic location
Put Ecosystem, Use Cases and Target Groups first
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Establishing a Project Team
1. Composition:
i. Project design/management
ii. Representatives from both pilot use-cases
iii. Technology experts
2. Role:
i. Oversee design architecture
ii. Provide technical guidance/support
iii. End-user perspective
1 Introduction to LMIC
2 Principles for Establishing Open LMI
3 Focus on Use Cases
4 Contextualizing Skills Data
5 Conclusion
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Bridging Skills & Occupations
COLLECT ANALYZE DISTRIBUTE
Skills data gap identified
• Education level/type
used as proxy
Linking skills to occupations
• Learning from others
(O*NET, ESCO)
• Exploring new techniques
with big data
Will publish data and analyses
• LFS data linked to skills and
downloadable
• Report methodological details
and ongoing updates
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
A Phased Approach
1 2 3
4
Consult & improve the
Taxonomy
Identify and evaluate
mapping approaches
Pilot tests
Assess and validate
tests
Disseminate, administer, and
implement
5
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
ESDC’s Skills and Competencies Taxonomy
7 Foundational skills
9 Analytical
9 Technical
13 Resource management
9 Interpersonal
Total: 47
skills
500 National
Occupational
Classifications
(NOC)
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Mapping Guided by 7 Criteria
Criteria Description
Flexible
Responds to changing labour market conditions and captures
emerging skills.
Sustainable and cost
effective
Adequate resources to maintain and update the mapping
Representative Reflects the different ways people express skill requirements
Granular Greater specificity of skills and occupation-specific data
Responsive
Enables better informed decisions about skills training and
education
Measurable Allows for reasonable measurement of skills
Statistically sound Estimated skill levels representative of labour markets
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Mapping Approaches Being Explored
Potential
Approaches
Exampl
es
Advantages Drawbacks
Consult occupational
experts
O*NET • High quality linkages to well-
defined skills taxonomy
• Standardized review process
ensures consistency
• Slow adaptation to emerging
skills
• Unnatural skills language
Survey workers
directly
O*NET • Obtain “front line” knowledge
• Linkages to skills taxonomy of
choice
• Requires expert validation
• Risk of misunderstanding
• Closed vs open-ended questions
Leverage web-scraped
data
Nesta,
LinkedIn
• Draws on large pool of data
• Natural language in job postings
• Responsive to emerging skills
• Inexpensive to maintain
• Requires vetting / validation
• Skewed market segment
• Inconsistency of skills language
• Omission of implied skills
Hybrid of the above • Balance natural vs consistent
skills language
• Expensive to maintain
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Nature of Skill-Occupation Linkage
Importance and level ratings (O*NET)
O*NET: 1 = not important
2 = somewhat important
3 = important
4 = Very important
5 = Extremely important
Binary classification (ESCO)
ESCO: “essential” or “non-essential”
Alternatives?
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Approach 1: Job analysts
Skill Importance Level
1. Critical thinking 78 64
2. Mathematics 78 61
3. Reading comprehension 78 68
4. Active listening 75 57
5. Judgement and decision
making
75 57
6. Speaking 75 61
7. Writing 75 61
8. Active learning 72 57
9. Complex problem solving 72 59
Skill Importance Level
10. Instructing 63 45
11. Systems analysis 60 55
12. Systems evaluation 56 57
13. Learning strategies 53 50
14. Monitoring 53 52
15. Coordination 50 45
16. Persuasion 50 52
17. Service orientation 50 41
18. Time management 50 43
Example: O*NET and US SOC codes: 19-3011 (”Economists”)
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Approach 1: Considerations
• Complexity: Leveraging O*NET taxonomy of skills
requires translation into local occupational categories
• Limited: O*NET taxonomy is fixed (35 unique skills)
• Slow responsiveness: 100 occupations updated per year
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Approach 2: Web-Scraping
Item Type Incidence
1. Communication skills skill 53%
2. Teamwork skill 47%
3. English language Work requirement 38%
4. Forecasting Work requirement 34%
5. Data Analysis Work requirement 22%
6. Decision making Skill 19%
7. EViews Work requirement 9%
8. Writing Skill 6%
9. MATLAB Work requirement 3%
Example: Vicinity Jobs: NOC code 4162 (Economists, etc.)
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Approach 2: Considerations
• Measure: Incidence in job postings does not equal level
of importance or frequency of requirements
• Complexity: Translating to rigorous skills taxonomies
challenging
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Challenges to Web-Scraped Skills Mapping
• Linking natural language on skills to formal taxonomy
• Distinguishing between “skills” and “work requirements”
• Capturing implicit skills
• Lack of equally comprehensive supply-side data
1 Introduction to LMIC
2 Principles for Establishing Open LMI
3 Focus on Use Cases
4 Contextualizing Skills Data
5 Conclusion
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Conclusion
•Open access that meets the needs of multiple
users / use cases
•Always design with use cases in mind
•Leverage existing information distributions
systems as much as possible
•Share your data!
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Conclusion
Source: http://xkcd.com/
LABOUR MARKET INFORMATION COUNCIL
CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL
Questions?
For additional information visit
our website lmic-cimt.ca

Mais conteúdo relacionado

Semelhante a Towards Open LMI Data: Principles, Users and Context

Data Mining Xuequn Shang NorthWestern Polytechnical University
Data Mining Xuequn Shang NorthWestern Polytechnical UniversityData Mining Xuequn Shang NorthWestern Polytechnical University
Data Mining Xuequn Shang NorthWestern Polytechnical University
butest
 
LMA & HR demand forecasting
LMA & HR demand forecastingLMA & HR demand forecasting
LMA & HR demand forecasting
Sorab Sadri
 
13500892 data-warehousing-and-data-mining
13500892 data-warehousing-and-data-mining13500892 data-warehousing-and-data-mining
13500892 data-warehousing-and-data-mining
Ngaire Taylor
 

Semelhante a Towards Open LMI Data: Principles, Users and Context (20)

Enhancing Skills Data in Canada – Connecting “big data” with traditional sour...
Enhancing Skills Data in Canada – Connecting “big data” with traditional sour...Enhancing Skills Data in Canada – Connecting “big data” with traditional sour...
Enhancing Skills Data in Canada – Connecting “big data” with traditional sour...
 
UNIT - 1 : Part 1: Data Warehousing and Data Mining
UNIT - 1 : Part 1: Data Warehousing and Data MiningUNIT - 1 : Part 1: Data Warehousing and Data Mining
UNIT - 1 : Part 1: Data Warehousing and Data Mining
 
20191127 s1 p-lmis platforms_en
20191127 s1 p-lmis platforms_en20191127 s1 p-lmis platforms_en
20191127 s1 p-lmis platforms_en
 
Blooming analytics! The germination of a new Jisc/HESA service for data-drive...
Blooming analytics! The germination of a new Jisc/HESA service for data-drive...Blooming analytics! The germination of a new Jisc/HESA service for data-drive...
Blooming analytics! The germination of a new Jisc/HESA service for data-drive...
 
krithi-talk-impact.ppt
krithi-talk-impact.pptkrithi-talk-impact.ppt
krithi-talk-impact.ppt
 
krithi-talk-impact.ppt
krithi-talk-impact.pptkrithi-talk-impact.ppt
krithi-talk-impact.ppt
 
18231979 Data Mining
18231979 Data Mining18231979 Data Mining
18231979 Data Mining
 
Data Mining Xuequn Shang NorthWestern Polytechnical University
Data Mining Xuequn Shang NorthWestern Polytechnical UniversityData Mining Xuequn Shang NorthWestern Polytechnical University
Data Mining Xuequn Shang NorthWestern Polytechnical University
 
8 richard turner innovantage tlc dec presentation rt[1]
8 richard turner innovantage   tlc dec presentation rt[1]8 richard turner innovantage   tlc dec presentation rt[1]
8 richard turner innovantage tlc dec presentation rt[1]
 
IBS-BIAKM-2013-keynote
IBS-BIAKM-2013-keynoteIBS-BIAKM-2013-keynote
IBS-BIAKM-2013-keynote
 
Machine Learning for Finance Master Class
Machine Learning for Finance Master Class Machine Learning for Finance Master Class
Machine Learning for Finance Master Class
 
Blocks & Bots - Digital Summit Harvard Business School 2015
Blocks & Bots - Digital Summit Harvard Business School 2015Blocks & Bots - Digital Summit Harvard Business School 2015
Blocks & Bots - Digital Summit Harvard Business School 2015
 
LMA & HR demand forecasting
LMA & HR demand forecastingLMA & HR demand forecasting
LMA & HR demand forecasting
 
552.ppt
552.ppt552.ppt
552.ppt
 
IIex North America 2019 - No Fake News - How Coca-Cola created ONE source of ...
IIex North America 2019 - No Fake News - How Coca-Cola created ONE source of ...IIex North America 2019 - No Fake News - How Coca-Cola created ONE source of ...
IIex North America 2019 - No Fake News - How Coca-Cola created ONE source of ...
 
ESSnet Big Data WP8 Methodology (+ Quality, +IT)
ESSnet Big Data WP8 Methodology (+ Quality, +IT)ESSnet Big Data WP8 Methodology (+ Quality, +IT)
ESSnet Big Data WP8 Methodology (+ Quality, +IT)
 
Pan All Ia Learning Clinic
Pan All Ia Learning ClinicPan All Ia Learning Clinic
Pan All Ia Learning Clinic
 
Data Science 101
Data Science 101Data Science 101
Data Science 101
 
Data Act Federal Register Notice Public Summary of Responses
Data Act Federal Register Notice Public Summary of ResponsesData Act Federal Register Notice Public Summary of Responses
Data Act Federal Register Notice Public Summary of Responses
 
13500892 data-warehousing-and-data-mining
13500892 data-warehousing-and-data-mining13500892 data-warehousing-and-data-mining
13500892 data-warehousing-and-data-mining
 

Mais de Labour Market Information Council | Conseil de l’information sur le marché du travail

Mais de Labour Market Information Council | Conseil de l’information sur le marché du travail (20)

La tension sur les marchés du travail persistera-t-elle?
La tension sur les marchés du travail persistera-t-elle?La tension sur les marchés du travail persistera-t-elle?
La tension sur les marchés du travail persistera-t-elle?
 
Tendances récentes de la distribution des salaires réels au Canada Résultats ...
Tendances récentes de la distribution des salaires réels au Canada Résultats ...Tendances récentes de la distribution des salaires réels au Canada Résultats ...
Tendances récentes de la distribution des salaires réels au Canada Résultats ...
 
Suivre les tendances de la demande de main-d’œuvre : une étude des offres d’e...
Suivre les tendances de la demande de main-d’œuvre : une étude des offres d’e...Suivre les tendances de la demande de main-d’œuvre : une étude des offres d’e...
Suivre les tendances de la demande de main-d’œuvre : une étude des offres d’e...
 
Recent trends in the real wage distribution in Canada: Evidence from the Labo...
Recent trends in the real wage distribution in Canada: Evidence from the Labo...Recent trends in the real wage distribution in Canada: Evidence from the Labo...
Recent trends in the real wage distribution in Canada: Evidence from the Labo...
 
Assessing labour demand trends through online job postings: preliminary resul...
Assessing labour demand trends through online job postings: preliminary resul...Assessing labour demand trends through online job postings: preliminary resul...
Assessing labour demand trends through online job postings: preliminary resul...
 
Labour market tightness: Here to stay?
Labour market tightness: Here to stay?Labour market tightness: Here to stay?
Labour market tightness: Here to stay?
 
Global Labour Organization (GLO) Global Conference: Measuring labour and skil...
Global Labour Organization (GLO) Global Conference: Measuring labour and skil...Global Labour Organization (GLO) Global Conference: Measuring labour and skil...
Global Labour Organization (GLO) Global Conference: Measuring labour and skil...
 
University of Guelph: Wages, Outlooks and Skills tools
University of Guelph: Wages, Outlooks and Skills toolsUniversity of Guelph: Wages, Outlooks and Skills tools
University of Guelph: Wages, Outlooks and Skills tools
 
Immigrant youth​: Labour outcomes and impact of the COVID-19 pandemic​
Immigrant youth​: Labour outcomes and impact of the COVID-19 pandemic​Immigrant youth​: Labour outcomes and impact of the COVID-19 pandemic​
Immigrant youth​: Labour outcomes and impact of the COVID-19 pandemic​
 
Les promesses et limites du moissonnage du web sur les offres d’emploi
Les promesses et limites du moissonnage du web sur les offres d’emploiLes promesses et limites du moissonnage du web sur les offres d’emploi
Les promesses et limites du moissonnage du web sur les offres d’emploi
 
Le resserrement du marché de l’emploi et l’avenir du travail
Le resserrement du marché de l’emploi et l’avenir du travailLe resserrement du marché de l’emploi et l’avenir du travail
Le resserrement du marché de l’emploi et l’avenir du travail
 
Labour market tightness and the future of work
Labour market tightness and the future of workLabour market tightness and the future of work
Labour market tightness and the future of work
 
Nouvelle approche pour mesurer les déséquilibres du marché du travail
Nouvelle approche pour mesurer les déséquilibres du marché du travailNouvelle approche pour mesurer les déséquilibres du marché du travail
Nouvelle approche pour mesurer les déséquilibres du marché du travail
 
Récessions et pandémies : Répercussions diverses et inégalités jusqu’à la rep...
Récessions et pandémies : Répercussions diverses et inégalités jusqu’à la rep...Récessions et pandémies : Répercussions diverses et inégalités jusqu’à la rep...
Récessions et pandémies : Répercussions diverses et inégalités jusqu’à la rep...
 
Réflexion critique sur les « pénuries »
Réflexion critique sur les « pénuries »Réflexion critique sur les « pénuries »
Réflexion critique sur les « pénuries »
 
Thinking critically about “shortages”
Thinking critically about “shortages”Thinking critically about “shortages”
Thinking critically about “shortages”
 
New approach to measuring labour market imbalances
New approach to measuring labour market imbalancesNew approach to measuring labour market imbalances
New approach to measuring labour market imbalances
 
Recessions & Pandemics: Diverse Impacts and Inequalities to Recovery
Recessions & Pandemics: Diverse Impacts and Inequalities to RecoveryRecessions & Pandemics: Diverse Impacts and Inequalities to Recovery
Recessions & Pandemics: Diverse Impacts and Inequalities to Recovery
 
Les femmes en situation de rétablissement du marché du travail : la COVID-19 ...
Les femmes en situation de rétablissement du marché du travail : la COVID-19 ...Les femmes en situation de rétablissement du marché du travail : la COVID-19 ...
Les femmes en situation de rétablissement du marché du travail : la COVID-19 ...
 
Women in Recovery: COVID-19 and Women’s Labour Market Participation​
Women in Recovery: COVID-19 and Women’s Labour Market Participation​Women in Recovery: COVID-19 and Women’s Labour Market Participation​
Women in Recovery: COVID-19 and Women’s Labour Market Participation​
 

Último

Exploratory Data Analysis - Dilip S.pptx
Exploratory Data Analysis - Dilip S.pptxExploratory Data Analysis - Dilip S.pptx
Exploratory Data Analysis - Dilip S.pptx
DilipVasan
 
Machine Learning For Career Growth..pptx
Machine Learning For Career Growth..pptxMachine Learning For Career Growth..pptx
Machine Learning For Career Growth..pptx
benishzehra469
 
一比一原版阿德莱德大学毕业证成绩单如何办理
一比一原版阿德莱德大学毕业证成绩单如何办理一比一原版阿德莱德大学毕业证成绩单如何办理
一比一原版阿德莱德大学毕业证成绩单如何办理
pyhepag
 
一比一原版麦考瑞大学毕业证成绩单如何办理
一比一原版麦考瑞大学毕业证成绩单如何办理一比一原版麦考瑞大学毕业证成绩单如何办理
一比一原版麦考瑞大学毕业证成绩单如何办理
cyebo
 
Abortion pills in Dammam Saudi Arabia// +966572737505 // buy cytotec
Abortion pills in Dammam Saudi Arabia// +966572737505 // buy cytotecAbortion pills in Dammam Saudi Arabia// +966572737505 // buy cytotec
Abortion pills in Dammam Saudi Arabia// +966572737505 // buy cytotec
Abortion pills in Riyadh +966572737505 get cytotec
 
一比一原版纽卡斯尔大学毕业证成绩单如何办理
一比一原版纽卡斯尔大学毕业证成绩单如何办理一比一原版纽卡斯尔大学毕业证成绩单如何办理
一比一原版纽卡斯尔大学毕业证成绩单如何办理
cyebo
 
一比一原版西悉尼大学毕业证成绩单如何办理
一比一原版西悉尼大学毕业证成绩单如何办理一比一原版西悉尼大学毕业证成绩单如何办理
一比一原版西悉尼大学毕业证成绩单如何办理
pyhepag
 

Último (20)

Machine Learning for Accident Severity Prediction
Machine Learning for Accident Severity PredictionMachine Learning for Accident Severity Prediction
Machine Learning for Accident Severity Prediction
 
2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...
2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...
2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...
 
Exploratory Data Analysis - Dilip S.pptx
Exploratory Data Analysis - Dilip S.pptxExploratory Data Analysis - Dilip S.pptx
Exploratory Data Analysis - Dilip S.pptx
 
How I opened a fake bank account and didn't go to prison
How I opened a fake bank account and didn't go to prisonHow I opened a fake bank account and didn't go to prison
How I opened a fake bank account and didn't go to prison
 
Machine Learning For Career Growth..pptx
Machine Learning For Career Growth..pptxMachine Learning For Career Growth..pptx
Machine Learning For Career Growth..pptx
 
2024 Q1 Tableau User Group Leader Quarterly Call
2024 Q1 Tableau User Group Leader Quarterly Call2024 Q1 Tableau User Group Leader Quarterly Call
2024 Q1 Tableau User Group Leader Quarterly Call
 
一比一原版阿德莱德大学毕业证成绩单如何办理
一比一原版阿德莱德大学毕业证成绩单如何办理一比一原版阿德莱德大学毕业证成绩单如何办理
一比一原版阿德莱德大学毕业证成绩单如何办理
 
MALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptx
MALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptxMALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptx
MALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptx
 
一比一原版麦考瑞大学毕业证成绩单如何办理
一比一原版麦考瑞大学毕业证成绩单如何办理一比一原版麦考瑞大学毕业证成绩单如何办理
一比一原版麦考瑞大学毕业证成绩单如何办理
 
Abortion pills in Dammam Saudi Arabia// +966572737505 // buy cytotec
Abortion pills in Dammam Saudi Arabia// +966572737505 // buy cytotecAbortion pills in Dammam Saudi Arabia// +966572737505 // buy cytotec
Abortion pills in Dammam Saudi Arabia// +966572737505 // buy cytotec
 
一比一原版纽卡斯尔大学毕业证成绩单如何办理
一比一原版纽卡斯尔大学毕业证成绩单如何办理一比一原版纽卡斯尔大学毕业证成绩单如何办理
一比一原版纽卡斯尔大学毕业证成绩单如何办理
 
Pre-ProductionImproveddsfjgndflghtgg.pptx
Pre-ProductionImproveddsfjgndflghtgg.pptxPre-ProductionImproveddsfjgndflghtgg.pptx
Pre-ProductionImproveddsfjgndflghtgg.pptx
 
How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?
 
一比一原版西悉尼大学毕业证成绩单如何办理
一比一原版西悉尼大学毕业证成绩单如何办理一比一原版西悉尼大学毕业证成绩单如何办理
一比一原版西悉尼大学毕业证成绩单如何办理
 
Business update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMIBusiness update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMI
 
Tabula.io Cheatsheet: automate your data workflows
Tabula.io Cheatsheet: automate your data workflowsTabula.io Cheatsheet: automate your data workflows
Tabula.io Cheatsheet: automate your data workflows
 
Slip-and-fall Injuries: Top Workers' Comp Claims
Slip-and-fall Injuries: Top Workers' Comp ClaimsSlip-and-fall Injuries: Top Workers' Comp Claims
Slip-and-fall Injuries: Top Workers' Comp Claims
 
Jpolillo Amazon PPC - Bid Optimization Sample
Jpolillo Amazon PPC - Bid Optimization SampleJpolillo Amazon PPC - Bid Optimization Sample
Jpolillo Amazon PPC - Bid Optimization Sample
 
Supply chain analytics to combat the effects of Ukraine-Russia-conflict
Supply chain analytics to combat the effects of Ukraine-Russia-conflictSupply chain analytics to combat the effects of Ukraine-Russia-conflict
Supply chain analytics to combat the effects of Ukraine-Russia-conflict
 
how can i exchange pi coins for others currency like Bitcoin
how can i exchange pi coins for others currency like Bitcoinhow can i exchange pi coins for others currency like Bitcoin
how can i exchange pi coins for others currency like Bitcoin
 

Towards Open LMI Data: Principles, Users and Context

  • 1. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Big Data & Analytics for the Public Sector 2 October 2019 Tony Bonen (tony.bonen@lmic-cimt.ca) Director, Research, Data and Analytics Towards Open LMI Data Principles, Users and Context
  • 2. 1 Introduction to LMIC 2 Principles for Establishing Open LMI 3 Focus on Use Cases 4 Contextualizing Skills Data 5 Conclusion
  • 3. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Who We Are National Stakeholder Advisory Panel (NSAP) Labour Market Information Experts Panel Board of Directors (13 PTs, ESDC, and Statistics Canada) NSAP Chair (David Ticoll)
  • 4. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Strategic Goals COLLECT ANALYZE DISTRIBUTE Gather and improve the availability of relevant LMI Undertake insightful and high-quality analyses of LMI Provide Canadians with timely, relevant and reliable LMI
  • 5. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Our Values •Client Centric and Demand Driven •Inclusive and Collaborative •Integrity and Transparency •Innovative and Evolutionary
  • 6. 1 Introduction to LMIC 2 Principles for Establishing Open LMI 3 Focus on Use Cases 4 Contextualizing Skills Data 5 Conclusion
  • 7. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL LMIC Data Hub Refine LMI needs Map delivery system Re- Structure data Guidelines + Metadata Take stock of existing LMI Understan d LMI needs Open LMI is a Process Phase I Phase II Phase III Phase IV
  • 8. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Principles: Users and Information User (demand) Relevant Address specific questions of individuals Contextualized Data and insights placed in broader context Findable Easy to obtain through standard means (e.g., googling, navigable website) Accessible Different channels to access Understandable Described in plain language with clearly articulated connections between data points Information (supply) Reliable High level of accuracy and representativeness Comprehensive Available for largest set of areas, populations and indicators possible Validated Rigorous processing system Comparable Consistently applied descriptors
  • 9. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Principles: Underlying Data Standards Data characteristics Open Ease with which data can be accessed in machine-readable format Localness Smallest geographic area Granular Number and specificity of grouping variables (e.g., demographics) Frequent Rate at which data are updated Timely Delay between data reference period and when it becomes available Metadata characteristics Open Ease with which metadata can be accessed in machine-readable format Consistent Similarity of underlying methods for producing data across sources and through time Annotated Detailed information, caveats and commentary of data (“meta-metadata”)
  • 10. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL LMIC Hub: Separating data from use-case Statistics Canada F/P/T (admin data, occupational outlook, etc.) Other, e.g. private sources LMIC API
  • 11. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL LMIC Hub: Separating data from use-case Statistics Canada F/P/T (admin data, occupational outlook, etc.) Other, e.g. private sources New LMI LMIC API
  • 12. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL LMIC Hub: Separating data from use-case Statistics Canada F/P/T (admin data, occupational outlook, etc.) Other, e.g. private sources New LMI LMIC API Restructure data Partnerships to generate new LMI
  • 13. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL LMIC Hub: Separating data from use-case Job outlooks Statistics Canada F/P/T (admin data, occupational outlook, etc.) Other, e.g. private sources New LMI Other data Salaries by field of study Skills in demand LMIC API Restructure data Partnerships to generate new LMI
  • 14. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL LMIC Hub: Separating data from use-case Flows to Intermediaries Job outlooks Statistics Canada F/P/T (admin data, occupational outlook, etc.) Other, e.g. private sources New LMI Other data Salaries by field of study Skills in demand LMIC Intermediary: Education/ Career choice API Intermediary: Investment decision Restructure data Partnerships to generate new LMI
  • 15. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL LMIC Hub: Separating data from use-case Flows to Intermediaries Job outlooks Statistics Canada F/P/T (admin data, occupational outlook, etc.) Other, e.g. private sources New LMI Other data Salaries by field of study Skills in demand LMIC Intermediary: Education/ Career choice API Intermediary: Investment decision Restructure data Partnerships to generate new LMI Other LMI Sources
  • 16. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL LMIC Hub: Separating data from use-case Flows to Intermediaries Job outlooks Statistics Canada F/P/T (admin data, occupational outlook, etc.) Other, e.g. private sources New LMI Other data Salaries by field of study Skills in demand LMIC Intermediary: Education/ Career choice API Intermediary: Investment decision Restructure data Partnerships to generate new LMI Other LMI Sources Other non-LMI Sources
  • 17. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL LMIC Hub: Separating data from use-case Flows to Intermediaries End Users Job outlooks Current College/ University students Industry/sector Statistics Canada F/P/T (admin data, occupational outlook, etc.) Other, e.g. private sources New LMI Other data Salaries by field of study Skills in demand LMIC Intermediary: Education/ Career choice API Intermediary: Investment decision Restructure data Partnerships to generate new LMI Other LMI Sources Other non-LMI Sources
  • 18. 1 Introduction to LMIC 2 Principles for Establishing Open LMI 3 Focus on Use Cases 4 Contextualizing Skills Data 5 Conclusion
  • 19. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Develop Based on Use Cases • Who will use the data? • What decisions are they trying to make? • What is their current level of understanding? • What does the existing ecosystem look like, and how can it be leveraged?
  • 20. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Use Cases Help Identify Data Needs What? Career decisions How LMI is consumed How career decisions are made ❶ Why?❷ Data Needs • Type (e.g., wages) • Structure (e.g., take-home pay vs. annual gross salary or hourly wages) Best practices • Distributing LMI (e.g., what is best form of dissemination, frequency, etc.) How?❸ Qualitative research Literature review International experiences Test 1 use case Repeat & expand
  • 21. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Data Architecture Will Follow Important questions to tackle around architecture: • Costs and functionality trade off • Data Warehouse vs Data Lake • Scalability • Geographic location Put Ecosystem, Use Cases and Target Groups first
  • 22. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Establishing a Project Team 1. Composition: i. Project design/management ii. Representatives from both pilot use-cases iii. Technology experts 2. Role: i. Oversee design architecture ii. Provide technical guidance/support iii. End-user perspective
  • 23. 1 Introduction to LMIC 2 Principles for Establishing Open LMI 3 Focus on Use Cases 4 Contextualizing Skills Data 5 Conclusion
  • 24. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Bridging Skills & Occupations COLLECT ANALYZE DISTRIBUTE Skills data gap identified • Education level/type used as proxy Linking skills to occupations • Learning from others (O*NET, ESCO) • Exploring new techniques with big data Will publish data and analyses • LFS data linked to skills and downloadable • Report methodological details and ongoing updates
  • 25. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL A Phased Approach 1 2 3 4 Consult & improve the Taxonomy Identify and evaluate mapping approaches Pilot tests Assess and validate tests Disseminate, administer, and implement 5
  • 26. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL ESDC’s Skills and Competencies Taxonomy 7 Foundational skills 9 Analytical 9 Technical 13 Resource management 9 Interpersonal Total: 47 skills 500 National Occupational Classifications (NOC)
  • 27. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Mapping Guided by 7 Criteria Criteria Description Flexible Responds to changing labour market conditions and captures emerging skills. Sustainable and cost effective Adequate resources to maintain and update the mapping Representative Reflects the different ways people express skill requirements Granular Greater specificity of skills and occupation-specific data Responsive Enables better informed decisions about skills training and education Measurable Allows for reasonable measurement of skills Statistically sound Estimated skill levels representative of labour markets
  • 28. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Mapping Approaches Being Explored Potential Approaches Exampl es Advantages Drawbacks Consult occupational experts O*NET • High quality linkages to well- defined skills taxonomy • Standardized review process ensures consistency • Slow adaptation to emerging skills • Unnatural skills language Survey workers directly O*NET • Obtain “front line” knowledge • Linkages to skills taxonomy of choice • Requires expert validation • Risk of misunderstanding • Closed vs open-ended questions Leverage web-scraped data Nesta, LinkedIn • Draws on large pool of data • Natural language in job postings • Responsive to emerging skills • Inexpensive to maintain • Requires vetting / validation • Skewed market segment • Inconsistency of skills language • Omission of implied skills Hybrid of the above • Balance natural vs consistent skills language • Expensive to maintain
  • 29. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Nature of Skill-Occupation Linkage Importance and level ratings (O*NET) O*NET: 1 = not important 2 = somewhat important 3 = important 4 = Very important 5 = Extremely important Binary classification (ESCO) ESCO: “essential” or “non-essential” Alternatives?
  • 30. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Approach 1: Job analysts Skill Importance Level 1. Critical thinking 78 64 2. Mathematics 78 61 3. Reading comprehension 78 68 4. Active listening 75 57 5. Judgement and decision making 75 57 6. Speaking 75 61 7. Writing 75 61 8. Active learning 72 57 9. Complex problem solving 72 59 Skill Importance Level 10. Instructing 63 45 11. Systems analysis 60 55 12. Systems evaluation 56 57 13. Learning strategies 53 50 14. Monitoring 53 52 15. Coordination 50 45 16. Persuasion 50 52 17. Service orientation 50 41 18. Time management 50 43 Example: O*NET and US SOC codes: 19-3011 (”Economists”)
  • 31. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Approach 1: Considerations • Complexity: Leveraging O*NET taxonomy of skills requires translation into local occupational categories • Limited: O*NET taxonomy is fixed (35 unique skills) • Slow responsiveness: 100 occupations updated per year
  • 32. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Approach 2: Web-Scraping Item Type Incidence 1. Communication skills skill 53% 2. Teamwork skill 47% 3. English language Work requirement 38% 4. Forecasting Work requirement 34% 5. Data Analysis Work requirement 22% 6. Decision making Skill 19% 7. EViews Work requirement 9% 8. Writing Skill 6% 9. MATLAB Work requirement 3% Example: Vicinity Jobs: NOC code 4162 (Economists, etc.)
  • 33. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Approach 2: Considerations • Measure: Incidence in job postings does not equal level of importance or frequency of requirements • Complexity: Translating to rigorous skills taxonomies challenging
  • 34. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Challenges to Web-Scraped Skills Mapping • Linking natural language on skills to formal taxonomy • Distinguishing between “skills” and “work requirements” • Capturing implicit skills • Lack of equally comprehensive supply-side data
  • 35. 1 Introduction to LMIC 2 Principles for Establishing Open LMI 3 Focus on Use Cases 4 Contextualizing Skills Data 5 Conclusion
  • 36. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Conclusion •Open access that meets the needs of multiple users / use cases •Always design with use cases in mind •Leverage existing information distributions systems as much as possible •Share your data!
  • 37. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Conclusion Source: http://xkcd.com/
  • 38. LABOUR MARKET INFORMATION COUNCIL CONSEIL DE L’INFORMATION SUR LE MARCHÉ DU TRAVAIL Questions? For additional information visit our website lmic-cimt.ca