Difference between revisions of "Hubs: Hubs Data"

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#*#TBD
 
#*#TBD
  
===Group 4Curriculum and Code School===
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===Group 4===
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====Curriculum and Code School====
 
'''Curriculum'''
 
'''Curriculum'''
 
*'''Desc''': The potential hub provides training programs for the founders of startups that might have human capital deficits that will lead to them not being about to adequately implement their ideas.
 
*'''Desc''': The potential hub provides training programs for the founders of startups that might have human capital deficits that will lead to them not being about to adequately implement their ideas.

Revision as of 11:42, 19 July 2016

Background

This page represents the work used for mechanical turks for the paper: Hubs (Academic Paper). As of Spring 2016, a list of potential Hubs with a set of characteristics was created. Many of these are not what will be defined as Hubs. We will be creating a scorecard to help subjectively define Hubs based on certain characteristics.

For more information on Mechanical Turks in general, see Mechanical Turk (Tool).

The main goal of the mechanical turk is to automate the collection of variables for potential hubs as much as possible. The key steps for the project are:

  1. Creating a comprehensive list of potential hubs
  2. Determining the best variables for the scorecard
  3. Building "filters" for automating the collection
  4. Running and auditing of the automation
  5. Collecting the remaining manual data


Variables to be Used

Current Complete List

As of Week of 7/11

  1. Onsite Venture Capital
    • Assets Under Management
    • Number
  2. Onsite Angel Investors
  3. Onsite Mentors
  4. Founding Date
  5. Site URL
  6. Office hours investors
  7. Office hours mentor/advisors
  8. Onsite temporary workshops
  9. Onsite mentors
  10. Networking Meetups
  11. Sponsors/Partners
    • University
    • Corporate
  12. Curriculum
  13. Onsite code school
  14. Alumni Network
  15. Nonprofit status
  16. Mission statement
  17. Specific Industry
  18. Price for a space
  19. Price for office
  20. Twitter activity
  21. Size (sqft)
  22. Size (# companies)
  23. Onsite accelerator
  24. Community membership??
  25. Franchise
  26. Multiple locations within city

Grouping of Variables

There are a few categories the majority of the variables fall under

Group 1: Low Hanging Fruit Variables in this group are very easy to find and automate.

  1. Price for a space + office
  2. Twitter Activity
  3. Founding Date
  4. URL
  5. Mission Statement
  6. Nonprofit
  7. Sponsors/Partners
  8. Specific Industry


Group 2: The Difficult to Find There are certain variables where the information is not readily available online or difficult to find.

  1. Size (can try to find press releases)


Group 3: In Between 1 and 2 Variables that aren't too easy or difficult to find and automate.

  1. Onsite accelerator
  2. Alumni mentor---vs. other mentors???


Group 4: The Hard to Differentiate The key property of this group is that there are several similar variables, which would be difficult for a turk to differentiate. In order to fix this, we will need to create filters akin to the DSM5 scorecard. See the below section.

  1. Onsite VC v. Angel Investors
  2. Onsite OH Investors v. mentors
  3. Onsite temporary workshops v. networking events
  4. Curriculum v. code school


Group 5: The Need further Discussion Before Collection Variables that need to be developed more prior to collection.

  1. Franchise and multiple locations within a city
  2. Community Membership

Filters/Scorecard

General Approach

The Scorecard will be broken down into three main parts: description, characteristics, andTBD parts. The procedure for creating these will be as follows: the description will be determined, develop the characteristics after looking over examples, the creation of possible mechanical turks that have complete accuracy even if not comprehension (e.g. a task will that always guarantees that there is an onsite mentor that covers only 40% of firms, but never misspecifies the existence of mentors), and auditing of the results.

Example

Curriculum

  • Desc: The potential hub provides training programs for the founders of startups that might have human capital deficits that will lead to them not being about to adequately implement their ideas.
  • Characteristics:
    • Education that is for a founder (as opposed to code schools which can be for people who just want to join a startup)
      • Code schools are for startup labor supply
    • Active input into a current entrepreneurial endeavor
      • e.g. " The program is designed to augment and support the real-life business experiences that the students are facing every day in their entrepreneurial endeavors"
    • Not an ad hoc session, not a one time meeting but a full "course", evidence of this could be
    • Has evidence of a integrated curriculum leading to a new compentance
    • Has evidence of a set fixed start and end dates that last XXX long
    • Is a session linked to others that regularly occurs
  • TBD points
    • Do we care about outsourcing?
  • Potential Turk

Code School

  • Desc: training programs that teach coding, data processing, webpage building and other technical skills.
  • Characteristics:
    • Target group are the developers or people who want to join the startups but not the founders themselves
    • Scheduled classes, not a one time meeting (as opposed to workshops)

Temporary Workshops

  • Desc:a discussion/learning of a group of people on specific subjects
  • Characteristic:
    • One time
    • Have a topic/subject/goal
      • e.g. learn to code workshop: Java script 101

Additional Resources

  1. Mechanical Turk (Tool)
  2. Veeral has created a google automating procedure for different lists


Work in Progress

Goals for WIP

  1. For GROUP 1, creation of mechanical turk steps:
    • EXAMPLE:
    • Twitter Activity
      • STATUS: Complete/In Progress/Not Started
      • Previously Collected: Yes/No
      • Published on Mechanical Turk: Yes/No
      • Audited: Yes/No
      • Updates:
      • Code:
  2. For GROUP 4:
    1. Scorecard Example
    2. Potential Mechanical Turk Steps (e.g. if specific organization is on website)
    3. Mechanical Turk Example (GROUP 1)
    4. Add Comments on:
      1. How much manual work remains/What is missing
      2. Any remaining difficulties
  3. For GROUPS 2 and 3:
    1. Brainstorm potential ways to find data
    2. Follow Steps in Group1


Actual WIP

Group 1

  1. Twitter Activity
    • STATUS: Complete
    • Previously Collected: YES/NO - Recorded 2/1/0 to represent activity level, but not same as we are
    • Published on Mechanical Turk: Yes
    • AUDITED: Yes
      • Audit Results: Comparing to 30 that manually done, for twitter handle, all 3 turkers agreed with our results 81% of the time, but at least 2 turkers agreed with our results 98% (the exception was a company that had several twitter handles based on location). Results were 52% and 89% respectively.
    • UPDATES:
      • UPDATE (7/14): Updated turk to reflect our desired formats
      • UPDATE (7/12): Audited
      • UPDATE (7/11): uploaded and published on amazon's mechanical turk site. Given the time cost to either record number of tweets in a month or look up more than 10 tweets, we decided to record the date of the last 10th tweet. Using a sample of ~10 companies, We noticed minimal differences in data observations among using 10,20, and 30 tweets.
    • CODE
      1. Copy the text in the Search Text into a search engine.
      2. Click on result from twitter.com with the company name. If the link does not appear on the first 3 pages, record DNE for both outputs
      3. Record the company's Twitter Handle into Twitter Handle
      4. Record the date (MM/DD/YY) of that tweet for Twitter Activity. If there are less than 10 tweets, record DNE.
  2. URL
    • STATUS: In Progress
    • Previously Collected: YES
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
    • UPDATES:
      • UPDATE (7/18): Code written, expected time for each assignment is <15 seconds - pay rate, therefore, recommended $.04
    • CODE
      1. Copy the text in the Search Text into a search engine.
      2. Record the URL of the first result in the following format www.___.__/ (e.g. if url is example.us/other, record www.example.us/)
  3. Mission Statement
    • STATUS: In Progress
    • Previously Collected: YES
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
    • UPDATES:
      • UPDATE (7/18): Code written, expected time for each assignment is 20-30 seconds - pay rate, therefore, recommended $.08
    • CODE
      1. Copy the text in the Search Text 1 into a search engine (will include site:__ from Company's URL).
      2. Click on first link that is a subsection (e.g. "Mission", "About") from company's website (see Company's URL)
      3. If this does not exist, repeat steps 1 and 2 with Search Text 2
      4. If this does not exist, got to Company's URL
      5. Record the main text on the page up to five paragraphs (some of these will be a single line). Do NOT record subsections.
      6. If locating the main text in the prior step is unclear, record "Unclear"
      7. If no text exists, record "DNE"
  4. Nonprofit
    • STATUS: In Progress
    • Previously Collected: NO
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
      • REQUIRES ADDITIONAL STEPS: YES (need to double check results)
    • UPDATES:
      • UPDATE (7/19): Code written, code 2 of 2 is believed to be more accurate and efficient. Expected time to complete is 15 seconds - pay rate, therefore, recommended $.04
    • CODE 1 of 2
      1. Go to Company's URL.
      2. Go to links (sometimes will be sections of the URL page) that describe the company, usually they are labelled: 'About', 'Our Story,' 'Mission'.
      3. If none of these exist, record DNE for PAGES
      4. Look for the word 'profit'/'nonprofit'/'non-profit'/'not-for-profit' (with or without -)
      5. If any of the key words exist is identified, record as 1, otherwise 0 for EXISTS (1/0).
      6. If it is marked as 1, record all sentences that the word is found in under SENTENCES.
      7. If the links do exist, record the name of the link under PAGES
      8. Repeat steps 4, 5, and 6 on the pages that were linked.
    • CODE 2 of 2
      1. Copy the text from Search Text into the search bar at http://www.guidestar.org/.
      2. Record all Organization Names that appear
      3. If no results appear, record DNE
  5. Price for a space + office
    • STATUS: Not Started
    • Previously Collected: YES
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
    • UPDATES:
      • UPDATE (7/_): TBD
    • CODE
      1. Copy the text in the Search Text into a search engine.
      2. TBD
  6. Founding Date
    • STATUS: Not Started
    • Previously Collected: YES, but only year
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
    • UPDATES:
      • UPDATE (7/_): TBD
    • CODE
      1. Copy the text in the Search Text into a search engine.
      2. TBD
  7. Sponsors/Partners
    • STATUS: Not Started
    • Previously Collected: NO
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
    • UPDATES:
      • UPDATE (7/_): TBD
    • CODE
      1. Copy the text in the Search Text into a search engine.
      2. TBD
  8. Specific Industry
    • STATUS: Not Started
    • Previously Collected: YES/NO, based on LinkedIn identifier
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
    • UPDATES:
      • UPDATE (7/_): TBD
    • CODE
      1. Copy the text in the Search Text into a search engine.
      2. TBD

Group 2

  1. Size
    • BRAINSTORM:
    • STATUS: Not Started
    • Previously Collected: YES/NO, based on LinkedIn identifier
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
    • UPDATES:
      • UPDATE (7/_): TBD
    • CODE
      1. Copy the text in the Search Text into a search engine.
      2. TBD

Group 3

  1. Onsite Accelerator
    • BRAINSTORM:
    • STATUS: Not Started
    • Previously Collected: YES/NO, based on LinkedIn identifier
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
    • UPDATES:
      • UPDATE (7/_): TBD
    • CODE
      1. Copy the text in the Search Text into a search engine.
      2. TBD
  1. Mentors
    • BRAINSTORM:
    • STATUS: Not Started
    • Previously Collected: YES/NO, based on LinkedIn identifier
    • Published on Mechanical Turk: NO
    • AUDITED: NO
      • Audit Results: TBD
    • UPDATES:
      • UPDATE (7/_): TBD
    • CODE
      1. Copy the text in the Search Text into a search engine.
      2. TBD

Group 4

Curriculum and Code School

Curriculum

  • Desc: The potential hub provides training programs for the founders of startups that might have human capital deficits that will lead to them not being about to adequately implement their ideas.
  • Characteristics:
    • Education that is for a founder (as opposed to code schools which can be for people who just want to join a startup)
      • Code schools are for startup labor supply
    • Active input into a current entrepreneurial endeavor
      • e.g. " The program is designed to augment and support the real-life business experiences that the students are facing every day in their entrepreneurial endeavors"
    • Not an ad hoc session, not a one time meeting but a full "course", evidence of this could be
    • Has evidence of a integrated curriculum leading to a new compentance
    • Has evidence of a set fixed start and end dates that last XXX long
    • Caltivate leadership for entrepreneurs
    • Tagged "Business" as opposed to 'Tech' or 'Design'
    • Is a session linked to others that regularly occurs
  • TBD points
    • Do we care about outsourcing?
  • "Potential Turks"
    • Google "Fullbridge" site:URL

Code School

  • Desc: training programs that teach coding, data processing, webpage building and other technical skills.
  • Characteristics:
    • Bootcamps
    • Target group are the developers or people who want to join the startups but not the founders themselves
    • Scheduled classes, not a one time meeting (as opposed to workshops)
  • TBD points
  • "Potential Turks"
    • Google "General Assembly" site:URL
      • Anyone Can Learn to Code
      • Umbraco
      • Designation
      • Boise CodeWorks
      • Grand Circus
      • DevMountain
      • Silicon Valley Data Academy
      • Academy Pittsburgh

Companies Used for Auditing/etc.

Capital Factory, Austin
1871, Chicago
Rocket Space, San Francisco
1776, Washington D.C.
Betamore, Baltimore
Packard Place, Charlotte
The venture Center, Little Rock
GSV Labs, San Francisco
The Hive, Palo Alto
Innovation Pavilion, Denver
OSC Tech Lab, Akron
Speakeasy, Indianapolis
Riverside.io, Riverside
The Salt Mines, Columbus
InNEVation, Las Vegas
804 RVA
Impact Hub, Salt Lake
Awesome Inc, Louisville
Geekdom, San Antonio
Alloy26, Pittsburg
ReSET, Hartford
Ansir Innovation Center, San Diego
Domistation, Tallahassee
Atlanta Tech Village, Atlanta
Spark Labs, New York

Completed Work

OLD1

We will be creating a "Hubs scorecard" to determine how hub-like potential spaces are. In order to do so, we will evaluate the places based on certain variables. Previous variables for potential hubs were collected. Below, we list those as well as other variables we think might be helpful to build out the scorecard.

Ideally, we would have the following variables (not collected previously):

  1. Onsite VC/Angel/Investors (Count or binary)
    1. Comments:
    2. Mechanical Turk Comments:
  2. Onsite Mentors (binary) --- Are these the same as advisers?
    1. Comments:
    2. Mechanical Turk Comments:
  3. "Office hours" with investors or mentors (binary)
    1. Comments: Previously collected included number of events, but did not separate them into categories (e.g. networking events, workshops, etc.). We view this separation as important, BUT very difficult to collect
    2. Mechanical Turk Comments:
  4. Onsite temporary workshops (binary or count) *** see mechanical turk
    1. Comments:
    2. Mechanical Turk Comments:
  5. Networking Meetups (Binary or count) *** see mechanical turk
    1. Comments:
    2. Mechanical Turk Comments:
  6. Sponsors and Partners (binary and list) --- are these the same?
    1. Comments:
    2. Mechanical Turk Comments:
  7. Alumni Network (binary) --- not all potential hubslist this and the fact that some do might indicate its importance
    1. Comments:
    2. Mechanical Turk Comments:
  8. Num of Companies --- to help determine size as getting physical sqfootage is difficult
    1. Comments:
    2. Mechanical Turk Comments:
  9. Nonprofit (binary) --- helpful in determining goals of potential hubs
    1. Comments:
    2. Mechanical Turk Comments:
  10. Mission Includes Key Buzzwords (e.g. "ecosystem", "community") --- help separate simple coworking spaces form hubs

Example of Prior Variables Collected:

  • Specific Industry -- defined as LinkedIN Self Identifier, no categories just plain text. We think what we really want is to see if they have a specialty (e.g. healthcare)
  • Num of Events --- relatively complete inputs, but from March 2016 (see above as well)
  • Price for Single Space --- defined as price for flexible desk, relatively complete inputs
  • Price for Office --- no inputs
  • Twitter Activity (Multinomial or Count) --- High=2/Moderate=1/No=0, no explanations on how to categorize the activity. Also no handles
  • Size (sqft) --- no records for majority of the companies
  • Num Conference Rooms --- no records for majority of the companies
  • Onsite accelerator (binary) --- relatively complete inputs
  • Onsite code school (binary) --- relatively complete inputs
  • Community Membership (binary) --- relatively complete inputs

OLD2

  • Twitter activity:

UPDATE (7/14): Updated turk to reflect our desired formats UPDATE (7/12): AUDIT RESULTS: We noticed

UPDATE (7/11): uploaded and published on amazon's mechanical turk site. Given the time cost to either record number of tweets in a month or look up more than 10 tweets, we decided to record the date of the last 10th tweet. Using a sample of ~10 companies, We noticed minimal differences in data observations among using 10,20, and 30 tweets.

  1. Copy the text in the Search Text into a search engine.
  2. Click on result from twitter.com with the company name. If the link does not appear on the first 3 pages, record DNE for both outputs
  3. Record the company's Twitter Handle into Twitter Handle
  4. Record the date (MM/DD/YY) of that tweet for Twitter Activity. If there are less than 10 tweets, record DNE.


  • NUMBER OF EVENTS: UPDATE: written, not published, on amazon's mechanical turk site

Considerations

  • Difficulties Encountered:
  • Expected Time to Complete:
  • Expectation of Results (accuracy of turk, comprehensiveness):
  • Other Comments:

Procedure

  1. Copy the text in the Search Text into a search engine.
  2. Click on the result that is the website of the company. If there does not exist a listing on the first three pages, mark as DNE.
  3. Look for links related to events, such as 'Events' or 'Calendar' on the homepage.
  4. If not found on the homepage, check 'About' and check 'Community'
  5. Count the number of events in July 2016 and record it. If there is no information of events on the website, record DNE.

Note***: Events include meetups, workshops, info sessions etc. We do not want to count them separately since it is difficult to do so. Most companies put all the events on the same section and do not put event types in the titles of the events. We have to look into the details of the events to find out the type and even we do so some events descriptions do not allow us to determine the type easily. Differentiating the types of the events demands more time and effort and therefore is not suitable to be a mechanical turk project.


  • Onsite Mentors: UPDATE: written, not published, on amazon's mechanical turk site
  1. Copy the text in the Search Text into a search engine.
  2. Click on the result that is the website of the company. If there does not exist a listing on the first three pages, mark as DNE.
  3. Look for links related to mentorship such as 'mentors', 'mentorship' or 'mentoring programs'
  4. If the key words can be identified, mark as 1
  5. If there is no explicit 'mentoring' section, look for links related to a description of the company, such as: 'About,' 'Our Team,' 'Our Mission,' etc., look for a subsection or mention of mentor/mentorship/mentoring
  6. If these exist, mark as 1.
  7. If not, go to links related to membership 'benefits,' 'perks,' or related.
  8. Do same process as end of 4 and 5
  9. If there is no mention of mentorship in these sections, type the company, city, and 'mentoring' into a search engine. If a link to a reliable website (such as Desktime) appears and mentorship can be found in the description, mark as 1.
  10. If none of these steps result in a mark of 1, mark as 0


  • Nonprofit: UPDATE: written, not published, on amazon's mechanical turk site
  1. Copy the text in the Search Text into a search engine.
  2. Click on the result that is the website of the company. If there does not exist a listing on the first three pages, mark as DNE.
  3. Go to links that describe the company, usually they are labelled: 'About', 'Our Story,' 'Mission'
  4. Look for the key word 'nonprofit'/'non-profit'
  5. If 'nonprofit' is identified, mark as 1, otherwise 0.


  • Number of Members: UPDATE: written, not published, on amazon's mechanical turk site
  1. Copy the text in the Search Text into a search engine.
  2. Click on the result that is the website of the company. If there does not exist a listing on the first three pages, mark as DNE.
  3. Look for the link 'Members' or 'Residents', usually they are under the links 'Community', 'Membership', 'Our Space' or 'The Space'.
  4. Count the number of members
  5. If the link or section of 'Members' is not found, go the 'Community' and 'Coworking' and look for the description on number of startups/founders/members in the community. Record the number.
  6. If number of members cannot be identified using above steps, record DNE.


  • Sponsors and Partners:UPDATE: written, not published, on amazon's mechanical turk site
  1. Copy the text in the Search Text into a search engine.
  2. Click on the result that is the website of the company. If there does not exist a listing on the first three pages, mark as DNE.
  3. Look for the link or mention of 'Sponsors' or 'Partners', many times of which is often under the section of 'About', 'Community', or related sections
  4. If sponsors or partners can be found mark as 1 and list them, otherwise mark as 0.