Algorithm for most recently/often contacts for auto-complete?

We have an auto-complete list that's populated when an you send an email to someone, which is all well and good until the list gets really big you need to type more and more of an address to get to the one you want, which goes against the purpose of auto-complete

I was thinking that some logic should be added so that the auto-complete results should be sorted by some function of most recently contacted or most often contacted rather than just alphabetical order.

What I want to know is if there's any known good algorithms for this kind of search, or if anyone has any suggestions.

I was thinking just a point system thing, with something like same day is 5 points, last three days is 4 points, last week is 3 points, last month is 2 points and last 6 months is 1 point. Then for most often, 25+ is 5 points, 15+ is 4, 10+ is 3, 5+ is 2, 2+ is 1. No real logic other than those numbers "feel" about right.

Other than just arbitrarily picked numbers does anyone have any input? Other numbers also welcome if you can give a reason why you think they're better than mine

Edit: This would be primarily in a business environment where recentness (yay for making up words) is often just as important as frequency. Also, past a certain point there really isn't much difference between say someone you talked to 80 times vs say 30 times.

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This kind of thing seems similar to what is done by firefox when hinting what is the site you are typing for.

Unfortunately I don't know exactly how firefox does it, point system seems good as well, maybe you'll need to balance your points :)

I'd go for something similar to:

NoM = Number of Mail

(NoM sent to X today) + 1/2 * (NoM sent to X during the last week)/7 + 1/3 * (NoM sent to X during the last month)/30

Contacts you did not write during the last month (it could be changed) will have 0 points. You could start sorting them for NoM sent in total (since it is on the contact list :). These will be showed after contacts with points > 0

It's just an idea, anyway it is to give different importance to the most and just mailed contacts.

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Heh, guess this is a slightly more calculated version of the answer I just posted – Davy8 Oct 16 '08 at 19:21
It's just a sum of derivatives, each one with its own weight (the coefficients 1, 1/2, 1/3 :) – Andrea Ambu Oct 16 '08 at 19:25
Deleted mine since you basically said the same thing and then some – Davy8 Oct 16 '08 at 19:25
You still have the aging problem. – Chris Cudmore Oct 16 '08 at 19:33
Contacts who you not wrote during the last month gain 0 points. They will be listed after contacts with points > 0, sorted by "total number of mail sent to that contact", is it not clear on my answer? Do I need rewording it? – Andrea Ambu Oct 16 '08 at 19:49

Take a look at Self organizing lists.

A quick and dirty look:

Move to Front Heuristic: A linked list, Such that whenever a node is selected, it is moved to the front of the list.

Frequency Heuristic: A linked list, such that whenever a node is selected, its frequency count is incremented, and then the node is bubbled towards the front of the list, so that the most frequently accessed is at the head of the list.

It looks like the move to front implementation would best suit your needs.

EDIT: When an address is selected, add one to its frequency, and move to the front of the group of nodes with the same weight (or (weight div x) for courser groupings). I see aging as a real problem with your proposed implementation, in that it requires calculating a weight on each and every item. A self organizing list is a good way to go, but the algorithm needs a bit of tweaking to do what you want.

Further Edit: Aging refers to the fact that weights decrease over time, which means you need to know each and every time an address was used. Which means, that you have to have the entire email history available to you when you construct your list.

The issue is that we want to perform calculations (other than search) on a node only when it is actually accessed -- This gives us our statistical good performance.

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Interesting implementation, however this would still result in either most recent in front or most frequent in front, not a combination of the two. – Davy8 Oct 16 '08 at 19:15
I'm not completely sure what you mean by aging. My issue with this solution is that it puts more emphasis on the frequency in rather than (more or less) equal on both. – Davy8 Oct 16 '08 at 19:53
An example of where that might be an issue is say you talk with a customer back and forth a lot (there was a really big issue to settle) but now that it's done, you don't need to contact them anymore for a long time. They're still in front because of all the frequency and will be for a long time. – Davy8 Oct 16 '08 at 19:55
+1 for self-organizing lists though – Davy8 Oct 16 '08 at 19:56

If you want to get crazy, mark the most 'active' emails in one of several ways:

• Last access
• Frequency of use
• Contacts with pending sales
• Direct bosses
• Etc

Then, present the active emails at the top of the list. Pay attention to which "group" your user uses most. Switch to that sorting strategy exclusively after enough data is collected.

It's a lot of work but kind of fun...

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Heh, more complicated than I'm probably looking for, but could be useful to someone else, so +1 – Davy8 Oct 16 '08 at 19:26

Maybe count the number of emails sent to each address. Then:

ORDER BY EmailCount DESC, LastName, FirstName

That way, your most-often-used addresses come first, even if they haven't been used in a few days.

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Yeah, but in a business environment (which I guess I should've specified) one might be in contact with a customer/client for a few days/weeks either solving a problem or settling on a deal/agreement and in that case most recent is more relevant than most often. – Davy8 Oct 16 '08 at 19:09
Absolutely, there are all sorts of potential users - I might email my remote boss once every two weeks forever, I might have a sales account active for a month, I might support a customer that needs extra help after new builds. Maybe a combination of frequency and time immediacy? – Corbin March Oct 16 '08 at 19:15
"Maybe a combination of frequency and time immediacy?" Yes, that's more of what I was looking for, kinda the specifics of how to balance the two. – Davy8 Oct 16 '08 at 19:23

I like the idea of a point-based system, with points for recent use, frequency of use, and potentially other factors (prefer contacts in the local domain?).

I've worked on a few systems like this, and neither "most recently used" nor "most commonly used" work very well. The "most recent" can be a real pain if you accidentally mis-type something once. Alternatively, "most used" doesn't evolve much over time, if you had a lot of contact with somebody last year, but now your job has changed, for example.

Once you have the set of measurements you want to use, you could create an interactive apoplication to test out different weights, and see which ones give you the best results for some sample data.

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This paper describes a single-parameter family of cache eviction policies that includes least recently used and least frequently used policies as special cases.

The parameter, lambda, ranges from 0 to 1. When lambda is 0 it performs exactly like an LFU cache, when lambda is 1 it performs exactly like an LRU cache. In between 0 and 1 it combines both recency and frequency information in a natural way.

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In spite of an answer having been chosen, I want to submit my approach for consideration, and feedback.

I would account for frequency by incrementing a counter each use, but by some larger-than-one value, like 10 (To add precision to the second point).

I would account for recency by multiplying all counters at regular intervals (say, 24 hours) by some diminisher (say, 0.9).

Each use:

``````UPDATE `addresslist` SET `favor` = `favor` + 10 WHERE `address` = 'foo@bar.com'
``````

Each interval:

``````UPDATE `addresslist` SET `favor` = FLOOR(`favor` * 0.9)
``````

In this way I collapse both frequency and recency to one field, avoid the need for keeping a detailed history to derive {last day, last week, last month} and keep the math (mostly) integer.

The increment and diminisher would have to be adjusted to preference, of course.

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