# Suitable data structure for computing progressive tax

Company A has its own system that it uses to levy taxes on the sellers. The taxes are computed in a progressive manner. For eg. if the seller sells goods worth \$25 then for the first 10 dollars tax=8% and on remaining 15 dollars tax = 7%. So total tax= 8% of 25 + 7% of 15.

The table that they use to compute the tax is as follows

\$0 - \$10 8% \$11 - \$50 7% \$51 - \$500 6% \$501 - \$10000 5% \$10001 -\$1000000 4% and so on.

Which data structure would you use to store this table and how would you use that data structure to code a function float computeTaxableAmount(float amount) {}

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I'd use an array of structs. Consider:

``````fields: from  to    percentage cumulative

values: 0     10    0.08       0
10    50    0.07       0.80 (= (to-from)*percentage from row above)
50    500   0.06       0.80 + (50-10)*0.07 = 4.00
500   10000 0.05       4.00 + (500-50)*0.06 = 31.00
...
``````

Notice the cumulative field: a running total of the combined tax implied by simply having reached the tax bracket in question. Then, say you want the tax for some sales of X dollars, you find the row encompassing X (i.e. `from <= X < to`) and the total tax will be:

``````(X - from) * percentage + cumulative
``````

The precalculation of the combined tax of earlier tax brackets saves pointless repetition of the math during program execution.

You could binary search to find the single tax bracket X falls into, but - given there's so few elements - the overhead of calculating/moving the probing positions may cost more than the "misses" from searching linearly. (If desperate or bored, there are some nano-optimisations you could explore, like starting from the middle row to minimise worse-case misses, or starting from the row you last matched if input values tend to be similar etc..)

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Thanks Tony. During the interview, it did not click me that I could store the cumulative percentages too. I was calculating it everytime and that was making it complicated. –  kag Jan 21 '11 at 17:48
@kag: You're welcome. Don't feel too bad about it: the performance difference is probably so slight in this case, I'd be as likely to let it recalculate too, even with prior knowledge of this kind of optimisation. –  Tony D Jan 23 '11 at 16:04