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Given the following letters in a license plate, how many combinations of them can you create
AAAA1234
Please note that this is not a homework question (I am too old for college :)
I am only trying to understand permutations and combinations. I always get lost when I see questions like this. Do I use n! or nPr or nCr.
Any book on this subject in addition to the logic used to arrive at the answer will also be greatly appreciated.
I have faith in exactly one method to remember such formulas: Rethink through the reasoning to justify it as needed. Then, each time you need the formula, remembering it becomes a mental exercise that makes it easier to remember it the next time. It also allows you to know the math on your own authority, instead of someone else's authority.
If the letters are all different, then there are n choices for the first letter, n-1 choices for the second letter, and so on. That makes n! However, in your problem the letters are not all different. One trick is to tag them to make them different so that you are overcounting, then divide by the amount that you are overcounting. If a of the symbols are A, then you can tag them in a! ways. They are then all different, so that the answer to the modified question is n!. So the answer to the original question is n!/a! (This is assuming that the symbols other than the A are fixed, distinct numbers.)
Another argument is to count the positions for the numbers. There are n positions for the 1, n-1 positions for the 2, etc., so you get n(n-1)...(n-r+1) = n!/a!, where r = n-a.
In fact the answer is the same as the permutation formula nPr. And your arrangements are much the same as partial permutations, which is what the formula is for. But you'll learn it better if you reason through it before looking at the formula.
As for books, I might suggest Brualdi, Introductory Combinatorics.
One strategy that you can use (there will be many) is to get all the permutations possible, then divide out the repeats.
Permutations of 8 elements = 8!
But for each unique arrangement of these, there are a bunch more with the same positions of the A's. So, how many ways can you arrange four A's in one particular set of positions?
Permutations of 4 A's = 4!
So the total unique arrangements should be 8! / 4!
If I'm totally wrong just someone say so and I'll delete this answer...
If you mean 3 letters A-Z and 4 digits 0...9 in that order, then you have
26 letters x
26 letters x
26 letters x
26 letters x
10 digits x
10 digits x
10 digits x
10 digits
= 26^4 * 10^4
= 4569760000
If no leading "0" is allowed, you get a few less.
Edit1: Miscounted the "A"
Edit2: I reread the question - originally I thought it was just four letters at the beginning followed by 4 numbers. If it's just a permutation thing, then the answer is obviously different: 8! permutations at all, but 4! permutations for the A are the same, so 8! / 4! = 1680.
Answer is 8!/4!
Let's try to explain with a simpler question: Combinations of 112 ?
There are 112, 121 and 211. If all digits would be unique, we could just find the answer by 3! But there is a repeating digit. So we should extract repeating digits by 3!/2! = 3
Another example is 1122. We have two repeating digit here. So we should extract twice. 4!/2!.2! = 6
I think this is a good explanation of permutations and combinations:
Easy Permutations and Combinations Better explained.
It goes step by step until you discover how to make the calculations.
No need for permutations, because all letters can be repeated, even the number
since the given example is [AAAA1234],then we have 4-Letters and 4-Digits.
for each letter we have 26 {A-Z} possible combinations
Thats why for 4 letters we will have 26^4
For each Number we have 10 {0-9} possible combinations, except the last digit we 9 possible combinations {case 1}, if it not allowed to be 0 otherwise it is 10 {case 2}
Thats why for 4 letters we will have 9*10^3 {case 1} or 10^4 {case 2}
The total number of combinations is {case 1} 9*(26^4)***(10^3) or {case 2} (26^4)*(10^4)
But if your question about permutations for the set{A,A,A,A,1,2,3,4}, then consider the the equivalent set {1,2,3,4,5,6,7,8} and try avoid the repeated sequence by divide over the permutations of {5,6,7,8} and the answer is 8!/4!=5*6*7*8=1680. the{5,6,7,8} represent {A,A,A,A} See #Tesserex & #erkangur
How many distinct sets of positions can the A's occupy? Given this value, multiply by the number of distinct arrangements of 1234 and you have your answer. You'll need to choose the positions for the A's and then ! will help with the arrangements of 1234.
Consider a simpler example. Let's say you had asked the question:
How many arrangements are there of the symbols: ABCD1234?
Now, since every symbol is distinct, there are 8! ways to arrange them.
Now let's build up to your problem. If we change the letter B to an A, we have AACD1234.
This destroys the uniqueness of exactly half the possible combinations, since any combination where we could have previously switched the A and the B is now non-unique. Therefore, we now have 8!/2 combinations.
Similarly, replacing the C with another A would result in half of the remaining combinations losing their uniqueness, and so on.
So, if only one symbol is duplicated, the generalized formula is (number of symbols total)!/2^(number of duplications)
In your case, the number of possible arrangements is 8!/2^4
This is more of a maths question than programming but I figure a lot of people here are pretty good at maths! :)
My question is: Given a 9 x 9 grid (81 cells) that must contain the numbers 1 to 9 each exactly 9 times, how many different grids can be produced. The order of the numbers doesn't matter, for example the first row could contain nine 1's etc. This is related to Sudoku and we know the number of valid Sudoku grids is 6.67×10^21, so since my problem isn't constrained like Sudoku by having to have each of the 9 numbers in each row, column and box then the answer should be greater than 6.67×10^21.
My first thought was that the answer is 81! however on further reflection this assumes that the 81 numbers possible for each cell are different, distinct number. They are not, there are 81 possible numbers for each cell but only 9 possible different numbers.
My next thought was then that each of the cells in the first row can be any number between 1 and 9. If by chance the first row happened to be all the same number, say all 1s, then each cell in the second row could only have 8 possibilites, 2-9. If this continued down until the last row then number of different permutations could be calculated by 9^2 * 8^2 * 7^2 ..... * 1^2. However this doesn't work if each row doesn't contain 9 of the same number.
It's been quite a while since I studied this stuff and I can't think of a way to work it out, I'd appreciate any help anyone can offer.
Imagine taking 81 blank slips of paper and writing a number from 1 to 9 on each slip (nine of each number). Shuffle the deck, and start placing the slips on the 9x9 grid.
You'd be able to create 81! different patterns if you considered each slip to be unique.
But instead you want to consider all the 1's to be equivalent.
For any particular configuration, how many times will that configuration be repeated
due to the 1's all being equivalent? The answer is 9!, the number of ways you can permute the nine slips with 1 written on them.
So that cuts the total number of permutations down to 81!/9!. (You divide by the number of indistinguishable permutations. Instead of 9! indistinguishable permutations, imagine there were just 2 indistinguishable permutations. You would divide the count by 2, right? So the rule is, you divide by the number of indistinguishable permutations.)
Ah, but you also want the 2's to be equivalent, and the 3's, and so forth.
By the same reasoning, that cuts down the number of permutations to
81!/(9!)^9
By Stirling's approximation, that is roughly 5.8 * 10^70.
First, let's start with 81 numbers, 1 through 81. The number of permutations for that is 81P81, or 81!. Simple enough.
However, we have nine 1s, which can be arranged in 9! indistinguishable permutations. Same with 2, 3, etc.
So what we have is the total number of board permutations divided by all the indistinguishable permutations of all numbers, or 81! / (9! ** 9).
>>> reduce(operator.mul, range(1,82))/(reduce(operator.mul, range(1, 10))**9)
53130688706387569792052442448845648519471103327391407016237760000000000L
I'm trying to learn C and have come across the inability to work with REALLY big numbers (i.e., 100 digits, 1000 digits, etc.). I am aware that there exist libraries to do this, but I want to attempt to implement it myself.
I just want to know if anyone has or can provide a very detailed, dumbed down explanation of arbitrary-precision arithmetic.
It's all a matter of adequate storage and algorithms to treat numbers as smaller parts. Let's assume you have a compiler in which an int can only be 0 through 99 and you want to handle numbers up to 999999 (we'll only worry about positive numbers here to keep it simple).
You do that by giving each number three ints and using the same rules you (should have) learned back in primary school for addition, subtraction and the other basic operations.
In an arbitrary precision library, there's no fixed limit on the number of base types used to represent our numbers, just whatever memory can hold.
Addition for example: 123456 + 78:
12 34 56
78
-- -- --
12 35 34
Working from the least significant end:
initial carry = 0.
56 + 78 + 0 carry = 134 = 34 with 1 carry
34 + 00 + 1 carry = 35 = 35 with 0 carry
12 + 00 + 0 carry = 12 = 12 with 0 carry
This is, in fact, how addition generally works at the bit level inside your CPU.
Subtraction is similar (using subtraction of the base type and borrow instead of carry), multiplication can be done with repeated additions (very slow) or cross-products (faster) and division is trickier but can be done by shifting and subtraction of the numbers involved (the long division you would have learned as a kid).
I've actually written libraries to do this sort of stuff using the maximum powers of ten that can be fit into an integer when squared (to prevent overflow when multiplying two ints together, such as a 16-bit int being limited to 0 through 99 to generate 9,801 (<32,768) when squared, or 32-bit int using 0 through 9,999 to generate 99,980,001 (<2,147,483,648)) which greatly eased the algorithms.
Some tricks to watch out for.
1/ When adding or multiplying numbers, pre-allocate the maximum space needed then reduce later if you find it's too much. For example, adding two 100-"digit" (where digit is an int) numbers will never give you more than 101 digits. Multiply a 12-digit number by a 3 digit number will never generate more than 15 digits (add the digit counts).
2/ For added speed, normalise (reduce the storage required for) the numbers only if absolutely necessary - my library had this as a separate call so the user can decide between speed and storage concerns.
3/ Addition of a positive and negative number is subtraction, and subtracting a negative number is the same as adding the equivalent positive. You can save quite a bit of code by having the add and subtract methods call each other after adjusting signs.
4/ Avoid subtracting big numbers from small ones since you invariably end up with numbers like:
10
11-
-- -- -- --
99 99 99 99 (and you still have a borrow).
Instead, subtract 10 from 11, then negate it:
11
10-
--
1 (then negate to get -1).
Here are the comments (turned into text) from one of the libraries I had to do this for. The code itself is, unfortunately, copyrighted, but you may be able to pick out enough information to handle the four basic operations. Assume in the following that -a and -b represent negative numbers and a and b are zero or positive numbers.
For addition, if signs are different, use subtraction of the negation:
-a + b becomes b - a
a + -b becomes a - b
For subtraction, if signs are different, use addition of the negation:
a - -b becomes a + b
-a - b becomes -(a + b)
Also special handling to ensure we're subtracting small numbers from large:
small - big becomes -(big - small)
Multiplication uses entry-level math as follows:
475(a) x 32(b) = 475 x (30 + 2)
= 475 x 30 + 475 x 2
= 4750 x 3 + 475 x 2
= 4750 + 4750 + 4750 + 475 + 475
The way in which this is achieved involves extracting each of the digits of 32 one at a time (backwards) then using add to calculate a value to be added to the result (initially zero).
ShiftLeft and ShiftRight operations are used to quickly multiply or divide a LongInt by the wrap value (10 for "real" math). In the example above, we add 475 to zero 2 times (the last digit of 32) to get 950 (result = 0 + 950 = 950).
Then we left shift 475 to get 4750 and right shift 32 to get 3. Add 4750 to zero 3 times to get 14250 then add to result of 950 to get 15200.
Left shift 4750 to get 47500, right shift 3 to get 0. Since the right shifted 32 is now zero, we're finished and, in fact 475 x 32 does equal 15200.
Division is also tricky but based on early arithmetic (the "gazinta" method for "goes into"). Consider the following long division for 12345 / 27:
457
+-------
27 | 12345 27 is larger than 1 or 12 so we first use 123.
108 27 goes into 123 4 times, 4 x 27 = 108, 123 - 108 = 15.
---
154 Bring down 4.
135 27 goes into 154 5 times, 5 x 27 = 135, 154 - 135 = 19.
---
195 Bring down 5.
189 27 goes into 195 7 times, 7 x 27 = 189, 195 - 189 = 6.
---
6 Nothing more to bring down, so stop.
Therefore 12345 / 27 is 457 with remainder 6. Verify:
457 x 27 + 6
= 12339 + 6
= 12345
This is implemented by using a draw-down variable (initially zero) to bring down the segments of 12345 one at a time until it's greater or equal to 27.
Then we simply subtract 27 from that until we get below 27 - the number of subtractions is the segment added to the top line.
When there are no more segments to bring down, we have our result.
Keep in mind these are pretty basic algorithms. There are far better ways to do complex arithmetic if your numbers are going to be particularly large. You can look into something like GNU Multiple Precision Arithmetic Library - it's substantially better and faster than my own libraries.
It does have the rather unfortunate misfeature in that it will simply exit if it runs out of memory (a rather fatal flaw for a general purpose library in my opinion) but, if you can look past that, it's pretty good at what it does.
If you cannot use it for licensing reasons (or because you don't want your application just exiting for no apparent reason), you could at least get the algorithms from there for integrating into your own code.
I've also found that the bods over at MPIR (a fork of GMP) are more amenable to discussions on potential changes - they seem a more developer-friendly bunch.
While re-inventing the wheel is extremely good for your personal edification and learning, its also an extremely large task. I don't want to dissuade you as its an important exercise and one that I've done myself, but you should be aware that there are subtle and complex issues at work that larger packages address.
For example, multiplication. Naively, you might think of the 'schoolboy' method, i.e. write one number above the other, then do long multiplication as you learned in school. example:
123
x 34
-----
492
+ 3690
---------
4182
but this method is extremely slow (O(n^2), n being the number of digits). Instead, modern bignum packages use either a discrete Fourier transform or a Numeric transform to turn this into an essentially O(n ln(n)) operation.
And this is just for integers. When you get into more complicated functions on some type of real representation of number (log, sqrt, exp, etc.) things get even more complicated.
If you'd like some theoretical background, I highly recommend reading the first chapter of Yap's book, "Fundamental Problems of Algorithmic Algebra". As already mentioned, the gmp bignum library is an excellent library. For real numbers, I've used MPFR and liked it.
Don't reinvent the wheel: it might turn out to be square!
Use a third party library, such as GNU MP, that is tried and tested.
You do it in basically the same way you do with pencil and paper...
The number is to be represented in a buffer (array) able to take on an arbitrary size (which means using malloc and realloc) as needed
you implement basic arithmetic as much as possible using language supported structures, and deal with carries and moving the radix-point manually
you scour numeric analysis texts to find efficient arguments for dealing by more complex function
you only implement as much as you need.
Typically you will use as you basic unit of computation
bytes containing with 0-99 or 0-255
16 bit words contaning wither 0-9999 or 0--65536
32 bit words containing...
...
as dictated by your architecture.
The choice of binary or decimal base depends on you desires for maximum space efficiency, human readability, and the presence of absence of Binary Coded Decimal (BCD) math support on your chip.
You can do it with high school level of mathematics. Though more advanced algorithms are used in reality. So for example to add two 1024-byte numbers :
unsigned char first[1024], second[1024], result[1025];
unsigned char carry = 0;
unsigned int sum = 0;
for(size_t i = 0; i < 1024; i++)
{
sum = first[i] + second[i] + carry;
carry = sum - 255;
}
result will have to be bigger by one place in case of addition to take care of maximum values. Look at this :
9
+
9
----
18
TTMath is a great library if you want to learn. It is built using C++. The above example was silly one, but this is how addition and subtraction is done in general!
A good reference about the subject is Computational complexity of mathematical operations. It tells you how much space is required for each operation you want to implement. For example, If you have two N-digit numbers, then you need 2N digits to store the result of multiplication.
As Mitch said, it is by far not an easy task to implement! I recommend you take a look at TTMath if you know C++.
One of the ultimate references (IMHO) is Knuth's TAOCP Volume II. It explains lots of algorithms for representing numbers and arithmetic operations on these representations.
#Book{Knuth:taocp:2,
author = {Knuth, Donald E.},
title = {The Art of Computer Programming},
volume = {2: Seminumerical Algorithms, second edition},
year = {1981},
publisher = {\Range{Addison}{Wesley}},
isbn = {0-201-03822-6},
}
Assuming that you wish to write a big integer code yourself, this can be surprisingly simple to do, spoken as someone who did it recently (though in MATLAB.) Here are a few of the tricks I used:
I stored each individual decimal digit as a double number. This makes many operations simple, especially output. While it does take up more storage than you might wish, memory is cheap here, and it makes multiplication very efficient if you can convolve a pair of vectors efficiently. Alternatively, you can store several decimal digits in a double, but beware then that convolution to do the multiplication can cause numerical problems on very large numbers.
Store a sign bit separately.
Addition of two numbers is mainly a matter of adding the digits, then check for a carry at each step.
Multiplication of a pair of numbers is best done as convolution followed by a carry step, at least if you have a fast convolution code on tap.
Even when you store the numbers as a string of individual decimal digits, division (also mod/rem ops) can be done to gain roughly 13 decimal digits at a time in the result. This is much more efficient than a divide that works on only 1 decimal digit at a time.
To compute an integer power of an integer, compute the binary representation of the exponent. Then use repeated squaring operations to compute the powers as needed.
Many operations (factoring, primality tests, etc.) will benefit from a powermod operation. That is, when you compute mod(a^p,N), reduce the result mod N at each step of the exponentiation where p has been expressed in a binary form. Do not compute a^p first, and then try to reduce it mod N.
Here's a simple ( naive ) example I did in PHP.
I implemented "Add" and "Multiply" and used that for an exponent example.
http://adevsoft.com/simple-php-arbitrary-precision-integer-big-num-example/
Code snip
// Add two big integers
function ba($a, $b)
{
if( $a === "0" ) return $b;
else if( $b === "0") return $a;
$aa = str_split(strrev(strlen($a)>1?ltrim($a,"0"):$a), 9);
$bb = str_split(strrev(strlen($b)>1?ltrim($b,"0"):$b), 9);
$rr = Array();
$maxC = max(Array(count($aa), count($bb)));
$aa = array_pad(array_map("strrev", $aa),$maxC+1,"0");
$bb = array_pad(array_map("strrev", $bb),$maxC+1,"0");
for( $i=0; $i<=$maxC; $i++ )
{
$t = str_pad((string) ($aa[$i] + $bb[$i]), 9, "0", STR_PAD_LEFT);
if( strlen($t) > 9 )
{
$aa[$i+1] = ba($aa[$i+1], substr($t,0,1));
$t = substr($t, 1);
}
array_unshift($rr, $t);
}
return implode($rr);
}
This is actually for a programming contest, but I've tried really hard and haven't got even the faintest clue how to do this.
Find the first and last k digits of nm where n and m can be very large ~ 10^9.
For the last k digits I implemented modular exponentiation.
For the first k I thought of using the binomial theorem upto certain powers but that involves quite a lot of computation for factorials and I'm not sure how to find an optimal point at which n^m can be expanded as (x+y)m.
So is there any known method to find the first k digits without performing the entire calculation?
Update 1 <= k <= 9 and k will always be <= digits in nm
not sure, but the identity nm = exp10(m log10(n)) = exp(q (m log(n)/q)) where q = log(10) comes to mind, along with the fact that the first K digits of exp10(x) = the first K digits of exp10(frac(x)) where frac(x) = the fractional part of x = x - floor(x).
To be more explicit: the first K digits of nm are the first K digits of its mantissa = exp(frac(m log(n)/q) * q), where q = log(10).
Or you could even go further in this accounting exercise, and use exp((frac(m log(n)/q)-0.5) * q) * sqrt(10), which also has the same mantissa (+ hence same first K digits) so that the argument of the exp() function is centered around 0 (and between +/- 0.5 log 10 = 1.151) for speedy convergence.
(Some examples: suppose you wanted the first 5 digits of 2100. This equals the first 5 digits of exp((frac(100 log(2)/q)-0.5)*q)*sqrt(10) = 1.267650600228226. The actual value of 2100 is 1.267650600228229e+030 according to MATLAB, I don't have a bignum library handy. For the mantissa of 21,000,000,000 I get 4.612976044195602 but I don't really have a way of checking.... There's a page on Mersenne primes where someone's already done the hard work; 220996011-1 = 125,976,895,450... and my formula gives 1.259768950493908 calculated in MATLAB which fails after the 9th digit.)
I might use Taylor series (for exp and log, not for nm) along with their error bounds, and keep adding terms until the error bounds drop below the first K digits. (normally I don't use Taylor series for function approximation -- their error is optimized to be most accurate around a single point, rather than over a desired interval -- but they do have the advantage that they're mathematically simple, and you can increased accuracy to arbitrary precision simply by adding additional terms)
For logarithms I'd use whatever your favorite approximation is.
Well. We want to calculate and to get only n first digits.
Calculate by the following iterations:
You have .
Calcluate each not exactly.
The thing is that the relative error of is less
than n times relative error of a.
You want to get final relative error less than .
Thus relative error on each step may be .
Remove last digits at each step.
For example, a=2, b=16, n=1. Final relative error is 10^{-n} = 0,1.
Relative error on each step is 0,1/16 > 0,001.
Thus 3 digits is important on each step.
If n = 2, you must save 4 digits.
2 (1), 4 (2), 8 (3), 16 (4), 32 (5), 64 (6), 128 (7), 256 (8), 512 (9), 1024 (10) --> 102,
204 (11), 408 (12), 816 (13), 1632 (14) -> 163, 326 (15), 652 (16).
Answer: 6.
This algorithm has a compexity of O(b). But it is easy to change it to get
O(log b)
Suppose you truncate at each step? Not sure how accurate this would be, but, e.g., take
n=11
m=some large number
and you want the first 2 digits.
recursively:
11 x 11 -> 121, truncate -> 12 (1 truncation or rounding)
then take truncated value and raise again
12 x 11 -> 132 truncate -> 13
repeat,
(132 truncated ) x 11 -> 143.
...
and finally add #0's equivalent to the number of truncations you've done.
Have you taken a look at exponentiation by squaring? You might be able to modify one of the methods such that you only compute what's necessary.
In my last algorithms class we had to implement something similar to what you're doing and I vaguely remember that page being useful.
I need to explain to the client why dupes are showing up between 2 supposedly different exams. It's been 20 years since Prob and Stats.
I have a generated Multiple choice exam.
There are 192 questions in the database,
100 are chosen at random (no dupes).
Obviously, there is a 100% chance of there being at least 8 dupes between any two exams so generated. (Pigeonhole principle)
How do I calculate the probability of there being
25 dupes?
50 dupes?
75 dupes?
-- Edit after the fact --
I ran this through excel, taking sums of the probabilities from n-100,
For this particular problem, the probabilities were
n P(n+ dupes)
40 97.5%
52 ~50%
61 ~0
Erm, this is really really hazy for me. But there are (192 choose 100) possible exams, right?
And there are (100 choose N) ways of picking N dupes, each with (92 choose 100-N) ways of picking the rest of the questions, no?
So isn't the probability of picking N dupes just:
(100 choose N) * (92 choose 100-N) / (192 choose 100)
EDIT: So if you want the chances of N or more dupes instead of exactly N, you have to sum the top half of that fraction for all values of N from the minimum number of dupes up to 100.
Errrr, maybe...
Its probably higher than you think. I won't attempt to duplicate this article: http://en.wikipedia.org/wiki/Birthday_paradox
Once you've created the first exam, there are 92 questions that have never been used, and 100 that have. If you now generate another exam, with 100 questions in in it, you are chosing from a set of 92 questions that have never been used, and 100 that have. Clearly you are going to get quite a few duplicates.
You would expect to get (100/192) * 100 duplicates, i.e. in any two randomly chosen exams, there will (on average) be 52 duplicate questions.
If you want the probability that there are 25, or 75, or whatever, then you have two choices.
a) Work out the maths
b) Simulate a few runs on a computer