# Calculate estimated mathematical expectation of ranking data?

I have to sort a "most popular apps RSS" by app download count. Here is the problem:

Suppose there are 1,000 apps.

The RSS data lists top 100 apps for each app category.

The RSS data also provides top 100 app list regardless of category.

Each app has two known properties: category, and its position on the RSS ranking.

Now I want to sort all of the 1,000 apps by its estimated download count.

The sorting do not need to be very accurate, just statistically speaking most possible would be OK.

How could I implement this sorting algorithm? TIA.

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can an app be in more then one category? –  amit Aug 26 '11 at 10:07
@amit, let's make it simple, only ONE category for an app. –  λq_ Aug 26 '11 at 10:21

you can process this way : (I assume each app belongs to only one category)

Let say you have the following ranking for each category C1 ..C10

``````C1             C2    ...             C10

app1-1       app2-1

app1-2       &pp2-2

..           ...

app1-100     app2-100              app10-100
``````

and

the overall 100 top apps classment (for example):

``````C  app1-1  app1-2  app2 -1  ... app2-10
``````

Now using these 2 tables, first you need to order C1 to C10 in the same order as app1-1 to app10-1 appear in list C, so you "know" (it's more like a guess) what Category is the more important in term of ranking.

Then use this information to sort the rest .

Now I'm gona use a simpler example to show how to order the rest of the elements.

let's take 3 categories and 12 apps .

``````C1      C2      C3

app1    app21   app31

app2    app22   app32

app3    app23   app33

app4    app24   app34
``````

and `C = app1 app2 app21 app31`

1.first mark all elemnt in C in the table :

``````app1    app21 ->app31
|   /
app2    app22   app32

app3    app23   app33

app4    app24   app34
``````

2.second, sort the remaining elements

Since you don't have more information, a good approximation would be to look at each line from left to right (from larger ranked top list to smaller ranked top list) which gives :

``````app3 app22 app32 app4 app23 app33 app24 app34
``````

then the overall classement would be :

``````app1 app2 app21 app31 app3 app22 app32 app4 app23 app33 app24 app34
``````

I hope this example makes my ideas clear and that it helps.

I think this approach uses all the information you have in C1 ...C10 and C.

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Thanks, but how do you determine the iterative order of C1, C2, C3, etc.? In your example, just in arbitrary order? –  λq_ Aug 26 '11 at 10:20
@λq_, the order will depend on the order of appearance of app1 app21 and app31 in the main classment : see this sentence in my post : "Now using these 2 tables, first you need order C1 to C10 in the same order app1-1 to app10-1 appear in C, so you "know" (it's more like a guess) what Category is the more important in term of ranking. " –  Ricky Bobby Aug 26 '11 at 10:31
@λq_, it's what I do in the first part of the example. (i just chose C1,C2,C3 in the right order, but if C was app21 app11 app31 app22 I would have ordered them C2 C1 C3 ) –  Ricky Bobby Aug 26 '11 at 10:38

A simple way is to use the overall top-100 to determine which category to get the next app from.

In pesudo-code:

``````While (not finished)
i++
category = Overall_list(i).getCategory()
Overall_list.add(get next app from list for category)
end while
``````

Any category(s) that have no entry in the overall top-100 will be added last.

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Build a directed graph as follows:

1. Each app is a node.
2. If app X ranks above app Y on any of the lists, put an edge pointing from X to Y. Note: you really only need to add an edge if X is one rank higher than Y on any list.
3. It might be possible that some of the #1-ranked items on the category lists don't appear on the total ranking list. In this case, I would add edges pointing from the lowest-ranked item on the total list to each of these items to make the graph connected.

Then, do a topological sort on the constructed graph. The resulting ordering will be guaranteed to be compatible with each individual top 100 list.

This approach will work even if an app appears in more than one category list -- assuming that the category lists are mutually consistent (e.g.: ranked according to total downloads and not, say, category downloads). For example, if you ever have a case where X is ranked above Y on one list but Y is ranked above X on another list, then this won't really work (and I'm not sure what would).

Without more information (e.g.: some kind of probability model), I can't really interpret what "statistically speaking most possible" really means.

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Thanks man, that looks steep! Can you give me some pseudo code for better understanding? –  λq_ Aug 29 '11 at 4:15
There is pseudo-code on the wikipedia page. As for implementation, there is a Unix command called "tsort" which does it. –  mhum Sep 2 '11 at 0:47