algorithm/complexity - most efficient way to solve

So the question is this. I have the following as an example input,

|ID | A | B |

|2 |100|200|

|3 |110|190|

|4 |105|145|

|1 |90 |150|

|5 |102|198|

and the goal is the following. For each ID x, compute the number of other IDs y where A of y is greater that A of x and B of y is less than B of x. So the output of the above example should be

|ID|count|

|3 |0 |

|4 |0 |

|1 |1 |

|5 |2 |

|2 |3 |

Where ID 3 has count 0 because it has the largest A. Obviously you could do O(n^2) exhaustive search but that would be inefficient.

My algorithm is the following. Sort the input twice - once by A and once by B, getting

|ID | A | B |

|1 |90 |150|

|2 |100|200|

|5 |102|198|

|4 |105|145|

|3 |110|190|

and

|ID | A | B |

|2 |100|200|

|5 |102|198|

|3 |110|190|

|1 |90 |150|

|4 |105|145|

Then start with the first ID in the first sorted table (ID=1) and get the ID's with a larger A value (i.e. the ID's below it - 2,5,4,3) then lookup ID=1 on the second sorted table and look at the ID's below it and everytime one is found in the original set of ID's a counter is incremented - in this case the only ID below 1 in the second table is 4 and 4 is in {2,5,4,3} so the output is 1.

So sorting is O(nlogn) and I believe the rest of the operations are constant. Is there a better method?

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The operations after the sort are definitely not constant. –  Ryan M Apr 18 '13 at 22:28
really? For each ID in the first sorted table you would insert the ID's below it in a hashtable (constant), then for each ID below the current ID in the second sorted table you would do a hashtable lookup (constant) and if the lookup finds a value -> increment a counter (constant). –  user1893354 Apr 18 '13 at 23:33
u might be right because u would have to search through the unsorted ID column of the second table for each ID in the first table. –  user1893354 Apr 18 '13 at 23:44