On September 21, 2022, Statistics Canada will release the fifth set of results from the 2021 Census. This release will focus on First Nations people, Métis and Inuit in Canada as well as Canada's housing portrait.
The release will be published in Statistics Canada's Daily at 8:30 a.m. eastern time on September 21, 2022. Information about subsequent releases throughout 2022 is available here.
Statistics Canada officials will hold a news conference to present high-level national, provincial, and territorial findings for the fifth release from the 2021 Census. Officials will be available to answer questions from the media following their remarks.
On September 21 and the following days, Statistics Canada will also grant interviews regarding this 2021 Census data release. Members of the media are invited to submit their requests for interviews and/or custom tabulations ahead of the release date to the Media Hot Line.
Date
September 21, 2022
Time
9:30 AM to 10:30 AM (EDT)
Location
Participation in the question and answer portion of this event is for accredited members of the Canadian Parliamentary Press Gallery only. Media who are not members of the Press Gallery may contact pressres2@parl.gc.ca to request temporary access. A teleconference line is also available for media who wish to listen to the event:
Toll-free dial-in number (Canada/US): 1-866-206-0153
Local dial-in number: 613-954-9003
Participant passcode: 6871810#
National Weighted Rates by Source and Characteristic - July 2022
Table summary
The information is grouped by Sales of goods manufactured, Raw materials and components, Goods / work in process, Finished goods manufactured, Unfilled Orders, Capacity utilization rates (appearing as row headers), and Data source as the first row of column headers, then Response or edited, and Imputed as the second row of column headers, calculated by percentage.
Data source
Response or edited
Imputed
%
Sales of goods manufactured
88.2
11.8
Raw materials and components
77.3
22.7
Goods / work in process
79.6
20.4
Finished goods manufactured
77.2
22.8
Unfilled Orders
79.2
20.8
Capacity utilization rates
67.9
32.1
Text Classification of Public Service Job Advertisements
By: Dominic Demers and Jessica Lachance, Public Service Commission of Canada
Introduction
The Public Service Commission (PSC) is an independent agency mandated to promote and safeguard a non-partisan, merit based public service that is representative of all Canadians. Among its many responsibilities, the PSC also oversees over 50,000 hiring activities that fall under the Public Service Employment Act (PSEA), each year.
This rich data environment includes over a million resumes and 8,000 job advertisements yearly. Some of the data are structured, like the organization name or the position's group and level. But, most human resource (HR) data collected by the PSC is unstructured. The unstructured data, such as job advertisements or screening questions, can be used for analytical purposes.
The PSC's Data Services and Analysis Division is responsible for data requests, statistical studies, surveys, forecasting models and data visualizations for staffing and recruitment activities that fall under the PSEA.
This article will give an overview of two natural language processing (NLP) techniques used by our team to extract valuable insights from two open-ended fields – Educational Requirements and the Area of Selection variables. We'll also explain how they were subsequently used to feed the Applications Forecasting Tool, a data visualization tool that reports on job advertisements.
Applications Forecasting Tool
In 2019, the PSC developed the Applications Forecasting Tool to help managers and HR advisors within the Government of Canada prepare for selection processes. Users can select the characteristics of a job advertisement and get an estimate on the number of candidates, based on similar jobs that were previously advertised.
The first version of the tool only worked with structured data from the job advertisement. But, the PSC received feedback about two open-ended fields users wanted to use to obtain a better estimate of the number of candidates for their selection process. These fields included the level of education in the essential qualifications; and for internal processes, details about the Area of Selection such as the department, location or classification.
As such, the PSC used text classification techniques for the education and Area of Selection fields to structure the information into categories that fed into the Applications Forecasting Tool. These algorithms enabled more precise and useful reporting capabilities for the PSC.
Text Classification
Text classification is a subset of problems that fall under NLP. The goal of text classification is to take open-ended fields and assign each text a label from a limited set of options.
In our case, we explored two different models to reach our goal. For the education variable, we used a rules-based approach using regular expressions. For the Area of Selection, we used a machine learning based approach called Name-entity-recognition (NER).
Although text classification using any model can produce good results, the capability of the algorithm to extract information from text is not always reliable. As such, we had to evaluate the algorithm's efficacy in extracting the correct information. We evaluated the model using a test dataset and examined metrics to determine how the classifier performed.
Evaluating text classification models
To evaluate the performance of our text classification algorithms, we used a confusion matrix. A confusion matrix is a table that describes the performance of the classification model on a set of test data for which the true values are known.
The number of correct and incorrect predictions are summarized in a table, and include count values. It also summarizes the number of errors made by our classifier and, most importantly, error type.
The confusion matrix is comprised of four types of predicted and actual value combinations. In our text classification context, the algorithm will provide a "true" (or "positive") value when the text is predicted as part of the classification. For example, if the text is classified as "high school diploma" it will return "true" (or "positive") for this classification.
The four categories are described below.
Figure 1: Confusion Matrix
Description - Figure 1: Confusion Matrix
Quadrant diagram with four combinations of predicted and actual values.
Positive Predicted Value + Positive Actual Value = True Positive
Positive Predicted Value + Negative Actual Value = False Positive
Negative Predicted Value + Positive Actual Value = False Negative
Negative Predicted Value + Negative Actual Value = True Negative
The True Positive (TP) Combination: The classification is predicted as true and is correct.
The True Negative (TN) Combination: The classification is predicted as false and is correct.
The False Positive (FP) or Type 1 Error: The classification is predicted as true but is incorrect.
The False Negative (FN) or Type 2 Error: The classification is predicted as false but is incorrect.
Using these combinations, we derived the following performance metrics:
Accuracy: The percentage of texts that were categorized with the correct classification. Used to determine how many classifications the model got right.
Precision : The percentage of texts correctly classified out of the total number of texts classified as positive. Used to determine the proportion of positive identification that were correct.
Recall : The percentage of actual positive values that are predicted correctly. Used to determine the proportion of actual positives that were correctly identified.
F1 Score: The harmonic mean of precision and recall.
In the context of this article, these statistics will be used to evaluate the performance of classifying two variables – Educational Requirement and the Area of Selection.
Managers generally use the qualification standard as their essential requirement. But they have the ability to set higher educational levels when required. For example, a hiring manager might require that an EC-06 senior policy analyst have a masters degree, even though the minimum requirement is a bachelors degree.
We might expect less candidates that have a masters instead of a bachelors. Parsing the level of education would allow us to give users of the Applications Forecasting Tool more relevant estimates and historical job advertisements.
Method
There are just over 100 qualification standards across all occupational groups which are also written in natural language. We decided that these standards could be summarized as belonging to one of eight education levels:
Some high school
High school
Some post-secondary
Post-secondary
Professional degree (e.g. Law degree, medical degree)
Master's degree
Ph.D. or above
Education unknown/not listed
To label the job advertisements according to education level, we used regular expressions to find key phrases and then apply the label. Regular expressions are a sequence of characters that specify a pattern in text. To analyze the education level we:
found key phrases, using regular expressions, which signal a type of education
mapped these phrases to a common level
labeled the education requirements text with one of these common levels
In total, we used 30 different rules to map the job descriptions to the eight education levels. These rules were created manually, using an iterative process. We started with regular expressions that capture the sentence structure and key phrases used in many qualification standards. Then, we added additional rules to capture cases which did not follow the qualification standards.
Here's a visual representation of what this looks like:
Successful completion of two years of an acceptable post-secondary educational program in computer science, information technology, information management or other specialty relevant to the position to be staffed.
-Indeterminate period incumbents of positions in the CS group on May 10, 1999, who do not possess the education prescribed above, are deemed to meet the minimum education standards based on their education, training and/or experience; They must be accepted as having met the minimum education standard whenever this standard is called for when staffing positions in the CS group.
-It is a recognized educational institution (e.g., community college, CÉGEP or university) that determines if the courses taken by a candidate correspond to two years of a post-secondary program at the institution.
IMPORTANT:
-It is the responsibility of the candidates to provide proof od their education. Note that your original diploma will be required during the process;
-Candidates with foreign educational credentials are required to provide proof of Canada equivalency. Please consult the Canadian Information Centre for International Credentials for further information. Any applicable fees are the responsibility of the candidate. Candidates who are unable to provide proof that they meet this essential qualification as requested will be eliminated from the process.
…years of post-secondary…
Some post-secondary
In this image, the first section represents our input. The segment highlighted in green states the relevant portion of the text related to the educational requirement. "Successful completion of two year of an acceptable post-secondary educational program in computer science, information technology, information management or other speciality relevant to the position to be staffed".
Then the second block represents the rule which was applied to the text using regular expressions. The text was flagged containing the phrase "… years of … post-secondary".
This flag, and the absence of a flag from a higher qualification (e.g. "degree", "doctorate") means this job advertisement was labelled as having the level of education as "Some post-secondary".
Model evaluation
To evaluate the model, we extracted a sample of 1,000 advertisements from the 2019-2020 Fiscal Year and manually labelled the level of education. The table below presents the precision, recall and f1-score of our rules-based algorithm, for each of the eight levels of education.
Table 1: Educational requirements model evaluation results
Sample size
Precision
Recall
F1-score
Education level unknown/not listed
45
97.7%
95.6%
96.6%
Some high school
30
100.0%
100.0%
100.0%
High school
418
99.3%
98.3%
98.8%
Some post-secondary
72
94.4%
94.4%
94.4%
Post-secondary
391
96.0%
97.7%
96.8%
Professional degree
17
100.0%
88.2%
93.8%
Master's degree
17
83.3%
88.2%
85.7%
Ph. D or above
10
100.0%
90.0%
94.7%
Results
We applied the algorithm to a total of 18,055 job advertisements between April 1, 2016 and March 31, 2019. The following table provides a breakdown of the EX-01 job advertisements, by the level of education derived from the algorithm. As shown below, the vast majority require either a high school education or a post-secondary education.
Table 2: Educational requirement for EX-01 positions (April 1, 2016, to March 31, 2019)
Educational Requirement
Number of Job Advertisements
% Total
Post-secondary
676
83%
Master's degree
81
10%
Some post-secondary
27
3%
Education level unknown/not listed
16
2%
High school
13
2%
Professional degree
2
0%
Total
815
100%
Using this methodology, when accessing the AFT to estimate the number of job applications, users can filter results on this new education field. For instance, since April 1, 2015, 921 EX-01 jobs were advertised with a median of 30 applicants. Out of those advertisements, 806 required a post-secondary degree and had a median of 32 applicants.
Area of Selection field section
Background
In accordance with PSEA article 34 (1), for the purpose of eligibility in an appointment process, an organisation may limit the Area of Selection for internal job processes by establishing geographic, organizational, or occupational criteria. This restriction is written in the "Who can apply" field of a job advertisement.
Having a restricted Area of Selection will reduce the pool of potential applicants. Users of the Applications Forecasting tool wanted to know how many applicants they could expect if they only limited their Area of Selection to at-level employees in their department, as oppose to all public servants in Canada.
Method
Our objective was to parse the Area of Selection field to extract the department(s), location(s), and level(s) mentioned by using a technique called name-entity recognition (NER). An NER model is an NLP technique that identifies “entities” in a block of text, such as proper nouns (a person’s name, a country) or category of things (animals, vehicles).
In our case, the entities extracted are
organizations (e.g. “Transport Canada”, “the Federal Public Service”),
locations (e.g. “Canada”, “Atlantic Region”, “a 40 km radius of Winnipeg, MB”)
To apply the NER model we used spaCy, a free, open-source library used for advanced NLP in Python.
SpaCy's NER algorithm includes the entities “ORG” (organization), “LOC” (location) and “GPE” (Geopolitical).
To reduce the amount of manual tagging, we took an iterative approach to building our training set. First, we used SpaCy's default algorithm to tag a random sample of 1000 Area of Selections. Then, we made the following changes:
Merged the “LOC” and “GPE” tags into one “LOC” tag
Added a “LEVEL” tag which identifies occupational classifications
Corrected any other issues with the “ORG” and “LOC” tags
Building off this, we created an additional 200 training examples, which were targeted to include additional examples of the “LEVEL” tag, and other cases the initial algorithm consistently failed to identify.
With the training set ready, the SpaCy NER algorithm performs the following tasks:
Creates a prediction model using a portion of the labeled training data
Sends an unlabeled version of another portion of the training data to model and predicts the entities
Compares predicted labels to true labels
Updates model to account for incorrect labels. The amount of change between models is called the gradient.
Repeat until gradient is small and model predictions change very little between iterations
This process resulted in a final model that can identify the different criteria in an Area of Selection. The following image illustrates an example of the tagging the model performed:
Figure 3: Area of Selection classification
Description - Figure 3: Area of Selection classification
Employees of the public service at the PM-04 or an equivalent classification who occupy a position within 40km of Edmonton, Alberta. Employees of the public service ORG at the PM-04 LEVEL or an equivalent classification who occupy a position within 40km of Edmonton, Alberta LOC.
At the top of the image, we have the complete text of the Area of Selection, then at the bottom of the image, we have our three “entities” highlighted. “the public service” is labelled as ORG, “PM-04” is labelled as LEVEL and “within 40km of Edmonton, Alberta” is labelled “LOC”
Model evaluation
We evaluated the model using a random sample of 465 Area of Selection statements which we manually labeled. The following table shows the precision and recall scores for each entity typeFootnote 1
Entity tag
Precision
Recall
F1-score
ORG
92.6%
90.8%
91.7%
LOC
80.2%
74.9%
77.5%
LEVEL
95.0%
76.0%
84.4%
Results
Using the results of the model, we produced the following exploratory analysis. This analysis is based on of 13,362 internal job postings between April 1, 2016 and March 31, 2019.
Figure 4: Venn diagram of Area of Selection field, by organization, occupational group and geography
Description - Figure 4: Venn diagram of Area of Selection field, by organization, occupational group and geography
Venn diagram of an Area of Selection field split into three.
Organizational (Dep't.) = 6.6%
Organizational & Occupational share 0.4%
Occupational = 1.6%
Occupational & Geographic share 2.2%
Geographic = 41.5%
Geographic & Organizational share 37.9%
All three share 0.9%
Open area of selection = 8.9%
What we found is that most internal advertisements chose to use at least one of the filters outlined in the PSEA and that most of the areas of selection with a geographic filter were for “Persons employed by the Public Service occupying a position in the National Capital Region (NCR)”.
However, we realized that some areas of selection proved to be harder to parse. These included:
1) Employees of Transport Canada who occupy a position in Calgary, Edmonton, Saskatoon, Winnipeg, Whitehorse, Yellowknife or Churchill.
2) Should an insufficient number of applicants be identified, persons employed in the Public Service, who occupy a position within 40km of Winnipeg, Manitoba or within 40km of Edmonton or Calgary, Alberta may be considered without re-advertising. Therefore, applicants in this expanded area of selection are encouraged to apply.
Our model performed well, but due to multi-criteria areas, we decided to use our analysis with a broader set of categories. Previously in the Applications Forecasting Tool, users could only select “internal job advertisement” or “external job advertisement”. Now, users have more precision for internal job advertisements. They can select:
Internal job advertisements, open to all public servants
Internal job advertisements, open to public servants in the NCR
Internal job advertisement, other areas of selection
This addition improved our model and allowed users to search a narrower set of advertisements to find any that matched their intended selection process.
Conclusion
Open-ended fields are a valuable way of collecting information and shouldn't be excluded from forms or surveys. It allows for a catch-all response when questions don't allow for users to give information within a fixed set of choices.
But this flexibility will come at the cost of accuracy of the classifications. Classification systems can generate the right predictions (true positives and true negatives), but can also make the wrong ones (false positives, false negatives). Cross validating the performance of your algorithm will be essential in determining if the classifications are sufficiently accurate for your reporting purposes.
This article showed methods to structure information from open-ended fields for reporting purposes in the Application Forecasting Tool. The categories derived from the area of selection and level of education fields were used to populate to drop-down menus allowing users to fine-tune their search results.
If you have any questions about this article or would like to discuss this further, we invite you to our new Meet the Data Scientist presentation series where the author will be presenting this topic to DSN readers and members.
Tuesday, October 18
2:00 to 3:00 p.m. EDT
MS Teams – link will be provided to the registrants by email
This module provides a concise summary of selected Canadian economic events, as well as international and financial market developments by calendar month. It is intended to provide contextual information only to support users of the economic data published by Statistics Canada. In identifying major events or developments, Statistics Canada is not suggesting that these have a material impact on the published economic data in a particular reference month.
All information presented here is obtained from publicly available news and information sources, and does not reflect any protected information provided to Statistics Canada by survey respondents.
Resources
The Government of Canada announced it had signed a Joint Declaration of Intent with Germany committing the two countries to collaboration in the export of Canadian Hydrogen to Germany. The Government said the Canada-Germany Hydrogen Alliance will commit the two countries to:
Enabling investment in hydrogen projects through policy harmonization;
Supporting the development of hydrogen supply chains;
Establishing a transatlantic Canada–Germany supply corridor; and
Exporting Canadian hydrogen by 2025.
Calgary-based Cenovus Energy Inc. announced it had agreed to purchase United Kingdom-based bp's 50% interest in the bp-Husky Toledo Refinery in Ohio for USD $300 million in cash plus the value of the inventory. Cenovus said the transaction is expected to close before the end of 2022.
Calgary-based Enbridge Inc. announced it had completed a joint venture merger transaction with Phillips 66 of Texas and that it will increase its indirect economic interest in Gray Oak Pipeline, LLC. Enbridge said the parties have agreed to transfer to Enbridge the operatorship of Gray Oak, which provides connectivity from the Permian Basin into Corpus Christi and the Houston area. Enbridge said the transfer of operatorship is planned to occur in the second quarter of 2023.
Pacific Energy Corporation Limited, part of the Singapore-based RGE group of companies, and Enbridge Inc. of Calgary announced an agreement to jointly invest in the construction and operation of the Woodfibre LNG project, a $5.1 billion storage and export facility being built near Squamish, British Columbia. The companies said Enbridge will invest in a 30% ownership stake and that the project is expected to be in service in 2027.
Calgary-based TC Energy Corporation and Mexico's Comisión Federal de Electricidad (CFE) announced they had agreed to a strategic alliance and that they had reached a final investment decision to jointly develop and construct the Southeast Gateway Pipeline, a USD $4.5 billion offshore natural gas pipeline project to supply natural gas to the central and southeast regions of Mexico. The companies said the project is anticipated to be in-service by mid-2025.
Vancouver-based West Fraser Timber Co. Ltd. announced it was permanently curtailing approximately 170 million board feet of combined production at its Fraser Lake and Williams Lake sawmills and approximately 85 million square feet of plywood production at its Quesnel Plywood mill due to increasing challenges in accessing available timber in British Columbia and ongoing transportation constraints. The company said that the reduction in capacity is expected to impact 147 combined positions and will occur over the course of the fourth quarter of 2022.
The Government of Canada announced that the 2022 total allowable catch (TAC) for the southern Gulf of St. Lawrence fall herring stock will be 10,000 tonnes, a decrease from the TAC of 12,000 tonnes which has been in effect since 2020, to help reduce pressure on this stock.
Manufacturing
The Government of Canada announced partnerships in the form of memoranda of understanding with Volkswagen AG and Mercedes-Benz AG of Germany and that:
The Volkswagen agreement focuses on deepening cooperation on battery manufacturing, cathode active material production, and mineral supply, among others, and on setting up a Canadian office for PowerCo, Volkswagen's newly formed battery company; and
The Mercedes-Benz agreement focuses on enhancing collaboration with Canadian companies along the electric vehicle and battery supply chains; supporting the development of a sustainable mineral supply chain in Canada; collaborating in research and development; and identifying potential investments in Canada.
Valcourt, Quebec-based BRP Inc. announced that on August 8th it had been the target of malicious cybersecurity activity and that operations had been suspended temporarily. On August 15th, BRP said that efforts to restore systems and business operations were continuing and that manufacturing sites in Valcourt; Rovaniemi, Finland; Sturtevant, U.S.; and Gunskirchen, Austria were ramping up production activities and were expected to be fully operational on August 16th. BRP added that the rest of the production sites were planning to resume operations over the course of the week.
Transportation
Calgary-based WestJet Airlines Ltd. announced the return of 17 sun and leisure routes to the Caribbean, Mexico, and the United States that had been suspended during the pandemic.
Montreal-based TFI International Inc. announced it had signed a definitive agreement to sell Contract Freighters, Inc.'s Truckload, Temp Control, and Mexican non-asset logistics business to Heartland Express, Inc. of Iowa for USD $525 million. TFI said the transaction is expected to close in the third quarter of 2022, subject to the satisfaction or waiver of usual and customary closing conditions, including regulatory approvals.
Other news
Bermuda-based Brookfield Infrastructure Partners L.P. announced it had signed a definitive agreement with Intel Corporation of California to invest up to USD $15 billion for a 49% stake in Intel's manufacturing expansion at its Ocotillo campus in Arizona. Brookfield said the closing of the transaction is targeted for the end of 2022, subject to customary closing conditions.
Waterloo, Ontario-based Open Text Corporation announced it had reached an agreement on the terms of an all-cash offer to acquire the entire issued and to be issued share capital of Micro Focus International plc of the U.K. for an enterprise value of USD $6 billion. OpenText said the acquisition is expected to close in the first quarter of 2023, subject to shareholder, antitrust, and foreign investment approvals.
Toronto-based TD Bank Group and Cowen Inc. of New York announced a definitive agreement for TD to acquire Cowen in an all-cash transaction valued at USD $1.3 billion. The companies said the transaction is expected to close in the first quarter of 2023, subject to customary closing conditions, including approvals from Cowen's stockholders and certain U.S., Canadian, and foreign regulatory authorities.
Toronto-based Hudson's Bay Company announced that retailer Zellers will debut a new ecommerce site and open shop-in-shops in select Hudson's Bay stores in early 2023.
United States and other international news
On August 9th, U.S. President Joseph R. Biden, Jr. signed into law the CHIPS and Science Act of 2022 (H.R. 4346), which supports domestic semiconductor manufacturing, research and development, semiconductor workforce development, international information and communications technology security, and semiconductor supply chain activities; and establishes an investment tax credit for investments in semiconductor manufacturing, among others.
On August 16th, U.S. President Joseph R. Biden, Jr. signed into law the Inflation Reduction Act of 2022 (H.R. 5376), which addresses climate change, health care, taxation, and the Federal deficit, among others.
The Bank of England's Monetary Policy Committee (MPC) voted to increase the Bank Rate by 50 basis points to 1.75%. The last change in the Bank Rate was a 25 basis points increase in June 2022.
The Reserve Bank of Australia (RBA) increased the target for the cash rate by 50 basis points to 1.85%. The last change in the target for the cash rate was a 50 basis points increase in July 2022.
The Reserve Bank of New Zealand (RBNZ) increased the Official Cash Rate (OCR), its main policy rate, by 50 basis points to 3.0%. The last change in the OCR was a 50 basis points increase in July 2022.
The Monetary Policy and Financial Stability Committee of Norway's Norges Bank raised the policy rate by 50 basis points to 1.75%. The last change in the policy rate was a 50 basis points increase in June 2022.
OPEC and non-OPEC members announced they had decided to adjust upward the production level by 0.100 mb/d for the month of September 2022.
Idaho-based Micron Technology, Inc announced plans to invest USD $40 billion through the end of the decade to build memory manufacturing in multiple phases in the U.S. Micron said it expects to begin production in the second half of the decade.
Financial market news
West Texas Intermediate crude oil closed at USD $89.55 per barrel on August 31st, down from a closing value of USD $98.62 at the end of July. Western Canadian Select crude oil traded in the USD $72 to $83 per barrel range throughout August. The Canadian dollar closed at 76.27 cents U.S. on August 31st, down from 77.98 cents U.S. at the end of July. The S&P/TSX composite index closed at 19,330.81 on August 31st, down from 19,692.92 at the end of July.
Today, Statistics Canada released a report and draft recommendations about the collection of data on Indigenous and racialized identity through the Uniform Crime Reporting Survey.
This report builds on the increasing demand for better data on people's diverse experiences in the justice system and seeks to shed light on the different treatment and overrepresentation of Indigenous and racialized people in the Canadian criminal justice system.
The six draft recommendations included in this report were developed alongside community organizations, Indigenous groups and police services through a comprehensive engagement process that began in 2021. Statistics Canada looks forward to continuing to work with stakeholders to advance police-reported data on Indigenous and racialized groups.
"Disaggregated data are a crucial part of decision making. Today's recommendations are another step toward improving the collection and quality of data on Indigenous and racialized groups in official police-reported crime statistics," said Anil Arora, Chief Statistician of Canada. "We thank our partners, including the Canadian Association of Chiefs of Police, for helping to meet the information needs of the justice community."
This project is part of Statistics Canada's Disaggregated Data Action Plan, which will lead to detailed statistical information that highlights the experiences of specific population groups, such as women, Indigenous peoples, racialized populations and people living with disabilities.
If necessary, please make address label corrections in the boxes below.
Legal name
Business name
Title of contact
First name of contact
Last name of contact
Address (number and street)
City
Province/territory or state
Country
Postal code/zip code
Language preference
English
French
This information is collected under the authority of the Statistics Act, Revised Statutes of Canada, 1985, Chapter S-19.
Completion of this questionnaire is a legal requirement under this act.
Survey purpose
To obtain information on the supply of and demand for energy in Canada. This information serves as an important indicator of Canadian economic performance, is used by all levels of government in establishing informed policies in the energy area and, in the case of public utilities, is used by governmental agencies to fulfil their regulatory responsibilities. The private sector likewise uses this information in the corporate decision-making process. Your information may also be used by Statistics Canada for other statistical and research purposes.
Confidentiality
Statistics Canada is prohibited by law from releasing any information it collects which could identify any person, business, or organization, unless consent has been given by the respondent or as permitted by the Statistics Act. Statistics Canada will use the information from this survey for statistical and research purposes.
Security of emails and faxes
Statistics Canada advises you that there could be a risk of disclosure during facsimile or e-mail. However, upon receipt, Statistics Canada will provide the guaranteed level of protection afforded to all information collected under the authority of the Statistics Act.
Data-sharing agreements
To reduce respondent burden, Statistics Canada has entered into data sharing agreements with provincial and territorial statistical agencies and other government organizations, which have agreed to keep the data confidential and use them only for statistical purposes.
Reporting instructions
Please refer to the reporting instruction before completing this report.
Reporting Period
Month
Year
Does this establishment ship or receive products by pipeline, tanker or barge?
Yes
No
Operations (Cubic Metres)
Instructions:
For product definitions and detailed survey instructions please consult the provided references.
All values should be reported in cubic metres. All values should be positive except for Column H (Losses and Adjustments During Month), which can be negative.
Each bolded product line should be balanced. When products are balanced, Stocks Beginning of Month + Receipts + Production = Inputs + Shipments + Fuel Uses + Losses and Adjustments + Stocks End of Month. A warning will appear if the values are not balanced.
The Losses and Adjustments column for each bolded product line should be under 5% of (Stocks Beginning of Month + Receipts + Production). A warning will appear if the value is too high.
Total Inputs and Production (Line 79) should be within 5%
2023 Monthly Refined Petroleum Products
Item Description
Stocks Beginning of Month
Receipts During Month
Inputs During Month
Production During Month
Shipments During Month
Fuel Uses During Month
Losses and Adjustments During Month
Stocks End of Month
Crude oil, Total (including synthetic crude oil)
Conventional crude oil - light
Conventional crude oil - heavy
Crude bitumen
Lease condensate
Synthetic crude oil
Hydrogen
Other hydrocarbons
Renewable fuels, Total
Fuel Ethanol (denatured)
Biodiesel Fuel (FAME)
Renewable Diesel Fuel (HDRD/HVO)
Other renewable fuels
Oxygenates (excluding fuel ethanol), Total
Ethyl tertiary butyl ether (ETBE)
Other oxygenates
Hydrocarbon gas liquids, Total
Ethane and ethylene, Total
Ethane
Ethylene
Propane and propylene, Total
Propane
Propylene
Normal butane and butylene, Total
Normal butane
Butylene
Isobutane and isobutylene, Total
Isobutane
Isobutylene
Pentanes plus
Unfinished oils, Total (excluding synthetic crude oil)
Retail Commodity Survey: CVs for Total Sales May 2022
Table summary
This table displays the results of Retail Commodity Survey: CVs for Total Sales (May 2022). The information is grouped by NAPCS-CANADA (appearing as row headers), and Month (appearing as column headers).
NAPCS-CANADA
Month
202203
202204
202205
202206
Total commodities, retail trade commissions and miscellaneous services
0.63
0.67
0.63
0.61
Retail Services (except commissions) [561]
0.62
0.67
0.63
0.61
Food at retail [56111]
1.00
0.94
0.56
0.53
Soft drinks and alcoholic beverages, at retail [56112]
0.64
0.63
0.59
0.60
Cannabis products, at retail [56113]
0.00
0.00
0.00
0.00
Clothing at retail [56121]
1.16
1.05
1.00
0.78
Footwear at retail [56122]
1.45
1.76
1.51
1.21
Jewellery and watches, luggage and briefcases, at retail [56123]
7.35
7.38
5.44
5.94
Home furniture, furnishings, housewares, appliances and electronics, at retail [56131]
1.25
1.14
1.31
0.99
Sporting and leisure products (except publications, audio and video recordings, and game software), at retail [56141]
2.16
2.09
1.60
1.89
Publications at retail [56142]
5.87
5.82
5.62
6.18
Audio and video recordings, and game software, at retail [56143]
0.49
0.62
0.31
1.07
Motor vehicles at retail [56151]
2.08
2.33
2.21
2.12
Recreational vehicles at retail [56152]
4.14
5.72
6.99
3.09
Motor vehicle parts, accessories and supplies, at retail [56153]
1.75
1.74
1.83
1.83
Automotive and household fuels, at retail [56161]
2.02
1.68
1.86
1.67
Home health products at retail [56171]
2.12
2.39
2.54
2.50
Infant care, personal and beauty products, at retail [56172]
2.22
2.07
1.97
2.18
Hardware, tools, renovation and lawn and garden products, at retail [56181]
2.17
2.81
1.60
2.41
Miscellaneous products at retail [56191]
2.08
3.02
3.12
2.93
Total retail trade commissions and miscellaneous services Footnote 1
2.04
1.66
1.84
1.91
Footnotes
Footnote 1
Comprises the following North American Product Classification System (NAPCS): 51411, 51412, 53112, 56211, 57111, 58111, 58121, 58122, 58131, 58141, 72332, 833111, 841, 85131 and 851511.
National Travel Survey: C.V.s for Visit-Expenditures by Duration of Visit, Main Trip Purpose and Country or Region of Expenditures, including expenditures at origin and those for air commercial transportation in Canada, in Thousands of Dollars (x 1,000)
Table summary
This table displays the results of C.V.s for Visit-Expenditures by Duration of Visit, Main Trip Purpose and Country or Region of Expenditures. The information is grouped by Duration of trip (appearing as row headers), Main Trip Purpose, Country or Region of Expenditures (Total, Canada, United States, Overseas) calculated using Visit-Expenditures in Thousands of Dollars (x 1,000) and c.v. as units of measure (appearing as column headers).
Duration of Visit
Main Trip Purpose
Country or Region of Expenditures
Total
Canada
United States
Overseas
$ '000
C.V.
$ '000
C.V.
$ '000
C.V.
$ '000
C.V.
Total Duration
Total Main Trip Purpose
15,762,153
A
9,966,054
A
3,133,898
B
2,662,201
B
Holiday, leisure or recreation
9,147,889
A
4,806,951
A
2,418,158
C
1,922,780
B
Visit friends or relatives
3,568,020
A
2,664,614
A
355,216
B
548,190
C
Personal conference, convention or trade show
100,193
C
91,220
C
8,973
E
..
Shopping, non-routine
802,844
B
733,256
B
67,373
E
2,215
E
Other personal reasons
802,281
B
668,406
B
56,424
D
77,451
E
Business conference, convention or trade show
491,550
C
262,687
D
140,442
D
88,421
E
Other business
849,376
B
738,920
B
87,312
D
23,144
E
Same-Day
Total Main Trip Purpose
3,543,156
A
3,393,910
A
148,573
D
673
E
Holiday, leisure or recreation
1,238,924
B
1,169,446
B
68,805
E
673
E
Visit friends or relatives
863,552
B
859,969
B
3,583
E
..
Personal conference, convention or trade show
20,198
D
20,198
D
..
..
Shopping, non-routine
723,154
B
656,331
B
66,823
E
..
Other personal reasons
357,516
B
357,483
B
33
E
..
Business conference, convention or trade show
58,726
E
58,419
E
307
E
..
Other business
281,086
C
272,064
C
9,021
E
..
Overnight
Total Main Trip Purpose
12,218,997
A
6,572,144
A
2,985,325
B
2,661,528
B
Holiday, leisure or recreation
7,908,965
B
3,637,505
A
2,349,353
C
1,922,107
B
Visit friends or relatives
2,704,468
B
1,804,645
B
351,633
B
548,190
C
Personal conference, convention or trade show
79,995
D
71,022
D
8,973
E
..
Shopping, non-routine
79,690
C
76,926
C
550
E
2,215
E
Other personal reasons
444,765
B
310,923
B
56,390
D
77,451
E
Business conference, convention or trade show
432,824
C
204,267
C
140,136
D
88,421
E
Other business
568,290
B
466,855
B
78,291
D
23,144
E
..
data not available
Estimates contained in this table have been assigned a letter to indicate their coefficient of variation (c.v.) (expressed as a percentage). The letter grades represent the following coefficients of variation:
A
c.v. between or equal to 0.00% and 5.00% and means Excellent.
B
c.v. between or equal to 5.01% and 15.00% and means Very good.
C
c.v. between or equal to 15.01% and 25.00% and means Good.
D
c.v. between or equal to 25.01% and 35.00% and means Acceptable.
E
c.v. greater than 35.00% and means Use with caution.
National Travel Survey: C.V.s for Person-Trips by Duration of Trip, Main Trip Purpose and Country or Region of Trip Destination – Q1 2022
Table summary
This table displays the results of C.V.s for Person-Trips by Duration of Trip, Main Trip Purpose and Country or Region of Trip Destination. The information is grouped by Duration of trip (appearing as row headers), Main Trip Purpose, Country or Region of Trip Destination (Total, Canada, United States, Overseas) calculated using Person-Trips in Thousands (× 1,000) and C.V. as a units of measure (appearing as column headers).
Duration of Trip
Main Trip Purpose
Country or Region of Trip Destination
Total
Canada
United States
Overseas
Person-Trips (x 1,000)
C.V.
Person-Trips (x 1,000)
C.V.
Person-Trips (x 1,000)
C.V.
Person-Trips (x 1,000)
C.V.
Total Duration
Total Main Trip Purpose
46,502
A
43,459
A
1,730
B
1,313
A
Holiday, leisure or recreation
17,289
A
15,499
A
880
B
910
A
Visit friends or relatives
18,749
A
18,009
A
402
B
339
B
Personal conference, convention or trade show
276
C
261
C
15
E
..
Shopping, non-routine
3,250
B
3,047
B
202
E
1
E
Other personal reasons
3,694
B
3,616
B
47
D
31
D
Business conference, convention or trade show
444
D
366
D
54
D
24
E
Other business
2,801
B
2,661
B
131
D
8
E
Same-Day
Total Main Trip Purpose
30,319
A
29,876
A
443
C
..
Holiday, leisure or recreation
9,657
A
9,516
A
141
E
..
Visit friends or relatives
12,074
A
12,044
A
31
E
..
Personal conference, convention or trade show
151
C
151
C
..
..
Shopping, non-routine
3,065
B
2,865
B
200
E
..
Other personal reasons
2,971
B
2,969
B
2
E
..
Business conference, convention or trade show
203
E
198
E
4
E
..
Other business
2,199
B
2,134
B
65
E
..
Overnight
Total Main Trip Purpose
16,183
A
13,583
A
1,288
A
1,313
A
Holiday, leisure or recreation
7,632
A
5,983
A
739
B
910
A
Visit friends or relatives
6,675
A
5,965
A
371
B
339
B
Personal conference, convention or trade show
125
C
110
C
15
E
..
Shopping, non-routine
185
C
182
D
2
E
1
E
Other personal reasons
723
B
647
B
45
D
31
D
Business conference, convention or trade show
241
C
168
D
50
D
24
E
Other business
602
B
527
C
66
D
8
E
..
data not available
Estimates contained in this table have been assigned a letter to indicate their coefficient of variation (c.v.) (expressed as a percentage). The letter grades represent the following coefficients of variation:
A
c.v. between or equal to 0.00% and 5.00% and means Excellent
B
c.v. between or equal to 5.01% and 15.00% and means Very good.
C
c.v. between or equal to 15.01% and 25.00% and means Good.
D
c.v. between or equal to 25.01% and 35.00% and means Acceptable.
E
c.v. greater than 35.00% and means Use with caution.