Rahul
11-04-06
Capturing Jobseekers’ Knowledge
(– to make AumMitra a self-learning software)
We discussed this today.
In IndiaRecruiter, a jobseeker has to identify 3 industries & 3 functions, where he claims to have strong background.
But,
Which of these 3 (industries & functions) are,
▶ most “relevant”? (Where he feels superbly confident to succeed)
▶ quite “relevant”? (Where he still feels quite comfortable)
▶ somewhat “relevant”? (Where he can “get into the groove” with some brushing-up)
Our existing “Submit Resume” form does not bring out these subtle differences/nuances between those 3 industries / 3 functions.
But we have a STRONG need to capture these.
To do this, let us modify “Submit Resume” form as follows:
What is your background in terms of:
| Industry | Function | Keywords |
[Dropdown fields drawn under each]
It is quite unlikely that you feel equally comfortable with your choices of Industries & Functions. Which do you consider,
▶ Most relevant
[Where you feel superbly confident to succeed]
Rank: [ 1 ]
▶ Quite relevant
[Where you still feel quite comfortable]
Rank: [ 2 ]
▶ Somewhat relevant
[Where you can "get back into the groove" with some brushing-up]
Rank: [ 3 ]
In the box below, please “Rank” your choices
(to help us recommend to you the ideal jobs)
My Ranking is as follows
Industry | Type Rank | Function | Type Rank |
---|
[ Dropdown Option ] | 3 | [ Dropdown ] | 2 |
[ Dropdown Option ] | 1 | [ Dropdown ] | 3 |
[ Dropdown Option ] | 2 | [ Dropdown ] | 1 |
Cut & Paste your text resume in the box below
[Text box drawn here]
Once we capture the ranking, we will store these in our database, against the name of the concerned candidate.
That will enable us to create "sub-populations" of candidates:
▶ Industry-wise
▶ Function-wise
Next Step
For all candidates belonging to industry ABC,
add up all the keywords contained in their
"Knowledge Profile" boxes.
Then calculate
▶ “Frequency of Occurrence” of each of those keywords (probability of occurrence)
Since, each candidate has identified himself as belonging to
▸ Industry = ABC
▸ Function = XYZ
and, he has himself used/selected certain “keywords” in his resume (i.e., in Knowledge Profile box),
we can safely “assume” that these keywords belong to those Industry / Functions!
So, now, instead of one or two “Experts” deciding
“Which keywords signify/denote which Industry?”
“ ” “ ” “Function?”
… we get thousands of real experts (i.e., the candidates themselves) to certify this relationship
(between “keywords” on one hand, and
“Ind/Func” on other)
This is exactly the future path of Yahoo’s search engine, viz:
evolve a “Social Consensus” thru a large no. of USERS voting/ranking/rating on items’ importance/relevance to the “Search Query”.
(Like AUDIENCE POLL in KBC!)
More & more search-engines are adopting this technique to arrange/display search–
–results in the descending order of the “Rank/Score” awarded by previous visitors.
This method (of creating smaller sub-populations) will also dramatically reduce server’s/software’s burden of computing “Frequency of Usage.”
This is because total candidate population (of say, a million resumes) will now (possibly) get broken up into 30,000 resume sub-populations (30 of them!)
Within each sub-population’s “keywords”, quite likely, the top 50 (arranged in descending order of frequency-of-usage), will add up to 90% of the sum-total of probability (i.e., add up to 0.9 probability).
Subsequently, for plotting percentile-graphs, we need to use only these top 50 (or 60 or 40) keywords for matching/finding from next arriving resume, to give Raw score.
Fresh computing of “Frequency of Usage” taking ALL keywords in any given “sub-population” (of industry or function), may be done once-a-week (over the weekend?)
(Signed)
11/Apr/06
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