Finding the closest value in an array of floats efficiently - performance

Given a (sorted) array A and a reference value b I want to find the value x ∈ A which has the lowest absolute difference to b efficiently.
A is quite large (smallest order of magnitude is 10⁶ elements).
My first naive approach was to compute the following (written in Julia):
function find_closest(array, element)
argmin(abs.(array .- element))
end
I was wondering you can do better than that. Unfortunately, most of the related questions deal with integers.

Since A is sorted, it should be faster to go for
function find_closest(A::AbstractArray{T}, b::T) where {T<:Real}
if length(A) <= 1
return firstindex(A)
end
i = searchsortedfirst(A, b)
if i == firstindex(A)
return i
elseif i > lastindex(A)
return lastindex(A)
else
prev_dist = b - A[i-1]
next_dist = A[i] - b
if prev_dist < next_dist
return i - 1
else
return i
end
end
end
since searchsorted-like functions perform in O(log n).

Related

Merge sort analyzing

Is there a different in the number of comparisons between merge sort in different case ?
For example ,
Case 1 : if I divide the array 2 parts and same size T(n)=T(n/2)+T(n/2)+n/2+n/2-1=T(n/2)+T(n/2)+n-1
Case 2 : T(n)=T(n/4)+T(3n/4)+(n/4)+(3n/4)-1=T(n)=T(n/4)+T(3n/4)+n-1
Since for merging 2 sub-array(let's say length m,n) I have to make at least m+n-1 comparisons, then I think the answer is yes but I am not sure.
And what's about dividing the array into $k$ sub-arrays in each iteration?
Is there a an optimal dividing for getting the lowest number of comparisons ?
I hope this is not a silly question, thanks!
You get the best possible worst-case performance from dividing the array into equal-size parts. Consider the opposite in the extreme case: letting one part be size 1 and the other n-1. That gives you linear recursion depth, and quadratic time.
You get n log n (plus/minus some constant) k-way comparisons if you split into k subarrays of size as close to n/k as possible, where log is the base-k logarithm. Note, however, that logarithms of different bases differ only by a constant factor, so you always get O(n log n) as long as k is a constant.
Update: If you do a k-way split, you need a k-way merge, and there are different ways to code that. The most natural way is perhaps to repeat n times: find which of the k subarrays has the smallest not-yet-picked element and pick that. This way, what you get is a total of n log_k n find-the-minimum-of-k-elements operations. For each find-the-minimum, you need to make k−1 compare operations between pairs of elements, so the total number of compares is (k−1)n log_k n. However, it's possible to organize k−1 compares so that you get more information than just which one is the minimum (otherwise selection sort would be optimal)! Is it possible to find a way to do the merge in a way that gets the number of compares down to the optimal n log_2 n that you get with k=2? Maybe, but it would probably be a very complicated merge procedure.
I was curious about k-way merge sort, so I did an experiment, sorting 216=65536 shuffled numbers with:
Ordinary two-way merge sort.
k-way merge sorts (splitting into k equal-size parts instead of 2) and using a heap for the k-way merge. From k=2 up to k=65536.
Timsort (Python's builtin sorting algorithm), which is an optimized merge sort.
The tracked numbers of comparisons for each one:
two_way: 965,599 True
k_way(2): 965,599 True
k_way(4): 1,180,226 True
k_way(16): 1,194,042 True
k_way(256): 1,132,726 True
k_way(65536): 1,071,758 True
timsort: 963,281 True
Code (Try it online!):
from random import shuffle
def two_way(a):
def merge(a, b):
c = []
i = j = 0
m, n = len(a), len(b)
while i < m and j < n:
if b[j] < a[i]:
c.append(b[j])
j += 1
else:
c.append(a[i])
i += 1
c += a[i:] or b[j:]
return c
def sort(a):
if i := len(a) // 2:
return merge(sort(a[:i]), sort(a[i:]))
return a[:]
return sort(a)
def k_way(a, k):
from heapq import merge
def sort(a):
if m := len(a) // k:
return list(merge(*(sort(a[j*m:(j+1)*m]) for j in range(k))))
return a[:]
return sort(a)
class Int:
def __init__(self, value):
self.value = value
def __lt__(self, other):
global comparisons
comparisons += 1
return self.value < other.value
def __repr__(self):
return str(self.value)
def is_sorted(a):
return all(x < y for x, y in zip(a, a[1:]))
def report(label, result):
print(f'{label:13} {comparisons:9,}', is_sorted(result))
a = list(map(Int, range(2**16)))
shuffle(a)
comparisons = 0
report('two_way:', two_way(a[:]))
for e in 1, 2, 4, 8, 16:
k = 2**e
comparisons = 0
report(f'k_way({k}):', k_way(a[:], k))
comparisons = 0
report('timsort:', sorted(a))

Maximum Distance in Arrays | Competitive coding question

Question Statement -
Given m arrays, and each array is sorted in ascending order. Now you can pick up two integers from two different arrays (each array picks one) and calculate the distance. We define the distance between two integers a and b to be their absolute difference |a-b|. Your task is to find the maximum distance.
Example -
Input:
[[1,2,3],
[4,5],
[1,2,3]]
Output: 4
My Approach - Since, the arrays are sorted, in the final answer, one element will be from first index of the arrays, and other element will be from the last index of the arrays. So, I am able to device a brute-force solution, To get to the answer. Basically I am generating all possible combinations of Last Element of One Array and First Element of other. This is giving me TC of O(n^2).
How can I optimize my approach. ?
It's very straightforward.
Maintain minimum variable which has the minimal value of all lists.
Before including current minimum, calculate the diff of current minimum with current list's maximum.
Do step 2 from first to last and from last to first.
This way you will account for all possibilities of min and max without having to generate or calculate for each one of them.
Snippet:
public int maxDistance(List<List<Integer>> arrays) {
int max_diff = 0,min = arrays.get(0).get(0);
for(int i=1;i<arrays.size();++i){
List<Integer> curr = arrays.get(i);
max_diff = Math.max(max_diff,Math.abs(curr.get(curr.size()-1) - min));
min = Math.min(min,curr.get(0)); // take min afterwards
}
min = arrays.get(arrays.size()-1).get(0);
for(int i=arrays.size()-2;i>=0;--i){
List<Integer> curr = arrays.get(i);
max_diff = Math.max(max_diff,Math.abs(curr.get(curr.size()-1) - min));
min = Math.min(min,curr.get(0)); // take min afterwards
}
return max_diff;
}
Time complexity: O(n), Space complexity: O(1).
As you correctly observe, only the minimum and maximum elements of arrays are of any interest. You can find the minimum of n sorted arrays in O(n), the maximum in O(n), and the answer appears to be max - min, which is O(1).
The problem is harder if we do not allow the max and min to belong to the same array. In that case, a brute-force solution (taking all min-max combinations into account) would again require O(n^2) computation. But you can do better:
build a 2-d array m such that m[i][0] = min(array[i]) and m[i][1] = i; sort it ascending so that m[j][0] <= m[j+1][0] (cost: O(n log n))
build another 2-d array M with M[i][0] = max(array[i]) and m[i][1] = i; sort it descending so that m[j][0] >= m[j+1][0] (cost: O(n log n))
check whether m[0][1] != M[0][1],
if true, you can safely return is M[0][0] - m[0][0]
otherwise, the result will be max(M[0][0] - m[1][0], M[1][0] - m[0][0])
You can avoid fully sorting m and M by keeping track of largest, second-largest, smallest, and second-smallest elements, as well as their array indices (with an improved cost of O(n)) - but when programming in contests, simple-and-optimal-enough is often better than really-optimal-but-tricky-to-write.
You can do this in linear time:
Find the two arrays which have the overall least two values. For this you need to scan once the first values of all the input arrays. Let's call those two arrays A and B, where A[0] <= B[0] and B[0] <= all X[0], where X != A
Find the two arrays which have the overall greatest two values. For this you need to scan once the last values of all the input arrays. Let's call those two arrays C and D, where C[last] >= D[last] and D[last] >= all X[last], where X != C
If A != C, then return C[last] - A[0]
Else, the greatest of the following two expressions: D[last] - A[0] and C[last] - B[0]
Implementation in JavaScript:
function solve(arrays) {
if (arrays.length < 2) throw "must have at least 2 arrays";
let a, b, c, d;
for (let row of arrays) { // collect two least and two greatest
let low = row[0], high = row[row.length-1];
if (!a || low < a[0]) [a, b] = [row, a];
else if (!b || low < b[0]) b = row;
if (!c || high > c[c.length-1]) [c, d] = [row, c];
else if (!d || high > d[d.length-1]) d = row;
}
return a !== c ? c[c.length-1] - a[0]
: Math.max(c[c.length-1] - b[0],
d[d.length-1] - a[0]);
}
let res = solve([[1,2,3],[4,5],[1,2,3]]);
console.log(res); // 4

Providing an algorithm which executes with O(nlogn) to solve the following problem

Write an O(n lg n) algorithm that receives as input an array A of n real numbers sorted in non-decreasing order and a value, val. The algorithm returns true if there are distinct indexes i and j such that a[i] + a[j] = val and false otherwise.
I figured the following pseudo code but realized it only works for neighboring elements
checkArray(Array A, val)
if A.length==2
if A[0] + A[1] =val
return true;
else
return false
else
L1 = checkArray (A[0 : n/2],val)
L2 = checkArray(A[n/2 : n], val)
The hints in the comments pretty much give away the O(nlogn) answer- iterate over each element a[i], and do a binary search on the array to see if val - a[i] exists. I'm not going to go into further detail about this algorithm, since it seems fairly straightforward. Instead, I'd like to shine some light on the O(n) solution, which may not be so obvious.
In short, the O(n) uses two pointers that will work their way from the ends towards the middle, constantly checking if the two sum to val. If their sum is larger than val, we decrease the larger of the two (the rightmost pointer) by moving its pointer one to the left. If its smaller, we increase the smaller of the two by moving its pointer right. If the two pointers pass each other, we know that no solution exists.
checkArray(Array A, val)
indexLo = 0
indexHi = len(A) - 1
while indexLo <= indexHi
sum = A[indexLo] + A[indexHi]
if sum == val
return True
if sum < val
indexLo += 1
else
indexHi -= 1
return False

Deriving the cost function from algorithm and proving their complexity is O(...)

When computing algorithm costs with 1 for each operation, it gets confusing when while loops depend on more than one variable. This pseudo code inserts an element into the right place of a heap.
input: H[k] // An array of size k, storing a heap
e // an element to insert
s // last element in array (s < k - 1)
output: Array H, e is inserted into H in the right place
s = s+1 [2]
H[s] = e [3]
while s > 1: ]
t=s/2 ][3]
if H[s] < H[t] ][3]
tmp = H[s] ][3]
H[s] = H[t] ][3]
H[t] = tmp ][3]
s = t ][2]
else
break ][1]
return H
What would be the cost function in terms of f(n)? and the Big O complexity?
I admit, I was initially confused by the indentation of your pseudo-code. After being prompted by M.K's comment, I reindented your code, and understood what you meant about more than one variable.
Hint: If s is equal to 2k, the loop will iterate k times, worst case. Expected average is k/2 iterations.
The reason for k/2 is that absent any other information, we assume the input e has equal chance of being any value between the current min and max of the array. If you know the distribution, then you can skew the expected average accordingly. Usually, though, the expected average will be constant factor of k, and so does not affect the big-O.
Let n be the number of elements in the heap. So, the cost function f(n) represents the cost of the function for a heap of size n. The cost of the function outside of the while loop is constant C1, so f(n) is dominated by the while loop itself, g(n). The cost of each iteration of the loop is also constant C2, so the cost is dependent on the number of iterations. So: f(n) = C1 + g(n+1). And g(n) = C2 + g(n/2). Now, you can solve the characteristic equation for g(n). Note that g(1) is 0, and g(2) is C2.
The algorithm as presented uses swaps to sort of bubble the element up into the correct position. To make the inner loop more efficient (it doesn't change the complexity, mind you), the inner loop can instead behave more like an insertion sort would behave, and place the element in the right place only at the end.
s = s+1
while s > 1 and e < H[s/2]:
H[s] = H[s/2];
s = s/2;
H[s] = e;
If you look at the while loop, you’ll observe that s divides itself by 2 until you reach 1.
Therefore the number of iterations will be equal to the log of s to the base 2.

array- having some issues [duplicate]

An interesting interview question that a colleague of mine uses:
Suppose that you are given a very long, unsorted list of unsigned 64-bit integers. How would you find the smallest non-negative integer that does not occur in the list?
FOLLOW-UP: Now that the obvious solution by sorting has been proposed, can you do it faster than O(n log n)?
FOLLOW-UP: Your algorithm has to run on a computer with, say, 1GB of memory
CLARIFICATION: The list is in RAM, though it might consume a large amount of it. You are given the size of the list, say N, in advance.
If the datastructure can be mutated in place and supports random access then you can do it in O(N) time and O(1) additional space. Just go through the array sequentially and for every index write the value at the index to the index specified by value, recursively placing any value at that location to its place and throwing away values > N. Then go again through the array looking for the spot where value doesn't match the index - that's the smallest value not in the array. This results in at most 3N comparisons and only uses a few values worth of temporary space.
# Pass 1, move every value to the position of its value
for cursor in range(N):
target = array[cursor]
while target < N and target != array[target]:
new_target = array[target]
array[target] = target
target = new_target
# Pass 2, find first location where the index doesn't match the value
for cursor in range(N):
if array[cursor] != cursor:
return cursor
return N
Here's a simple O(N) solution that uses O(N) space. I'm assuming that we are restricting the input list to non-negative numbers and that we want to find the first non-negative number that is not in the list.
Find the length of the list; lets say it is N.
Allocate an array of N booleans, initialized to all false.
For each number X in the list, if X is less than N, set the X'th element of the array to true.
Scan the array starting from index 0, looking for the first element that is false. If you find the first false at index I, then I is the answer. Otherwise (i.e. when all elements are true) the answer is N.
In practice, the "array of N booleans" would probably be encoded as a "bitmap" or "bitset" represented as a byte or int array. This typically uses less space (depending on the programming language) and allows the scan for the first false to be done more quickly.
This is how / why the algorithm works.
Suppose that the N numbers in the list are not distinct, or that one or more of them is greater than N. This means that there must be at least one number in the range 0 .. N - 1 that is not in the list. So the problem of find the smallest missing number must therefore reduce to the problem of finding the smallest missing number less than N. This means that we don't need to keep track of numbers that are greater or equal to N ... because they won't be the answer.
The alternative to the previous paragraph is that the list is a permutation of the numbers from 0 .. N - 1. In this case, step 3 sets all elements of the array to true, and step 4 tells us that the first "missing" number is N.
The computational complexity of the algorithm is O(N) with a relatively small constant of proportionality. It makes two linear passes through the list, or just one pass if the list length is known to start with. There is no need to represent the hold the entire list in memory, so the algorithm's asymptotic memory usage is just what is needed to represent the array of booleans; i.e. O(N) bits.
(By contrast, algorithms that rely on in-memory sorting or partitioning assume that you can represent the entire list in memory. In the form the question was asked, this would require O(N) 64-bit words.)
#Jorn comments that steps 1 through 3 are a variation on counting sort. In a sense he is right, but the differences are significant:
A counting sort requires an array of (at least) Xmax - Xmin counters where Xmax is the largest number in the list and Xmin is the smallest number in the list. Each counter has to be able to represent N states; i.e. assuming a binary representation it has to have an integer type (at least) ceiling(log2(N)) bits.
To determine the array size, a counting sort needs to make an initial pass through the list to determine Xmax and Xmin.
The minimum worst-case space requirement is therefore ceiling(log2(N)) * (Xmax - Xmin) bits.
By contrast, the algorithm presented above simply requires N bits in the worst and best cases.
However, this analysis leads to the intuition that if the algorithm made an initial pass through the list looking for a zero (and counting the list elements if required), it would give a quicker answer using no space at all if it found the zero. It is definitely worth doing this if there is a high probability of finding at least one zero in the list. And this extra pass doesn't change the overall complexity.
EDIT: I've changed the description of the algorithm to use "array of booleans" since people apparently found my original description using bits and bitmaps to be confusing.
Since the OP has now specified that the original list is held in RAM and that the computer has only, say, 1GB of memory, I'm going to go out on a limb and predict that the answer is zero.
1GB of RAM means the list can have at most 134,217,728 numbers in it. But there are 264 = 18,446,744,073,709,551,616 possible numbers. So the probability that zero is in the list is 1 in 137,438,953,472.
In contrast, my odds of being struck by lightning this year are 1 in 700,000. And my odds of getting hit by a meteorite are about 1 in 10 trillion. So I'm about ten times more likely to be written up in a scientific journal due to my untimely death by a celestial object than the answer not being zero.
As pointed out in other answers you can do a sort, and then simply scan up until you find a gap.
You can improve the algorithmic complexity to O(N) and keep O(N) space by using a modified QuickSort where you eliminate partitions which are not potential candidates for containing the gap.
On the first partition phase, remove duplicates.
Once the partitioning is complete look at the number of items in the lower partition
Is this value equal to the value used for creating the partition?
If so then it implies that the gap is in the higher partition.
Continue with the quicksort, ignoring the lower partition
Otherwise the gap is in the lower partition
Continue with the quicksort, ignoring the higher partition
This saves a large number of computations.
To illustrate one of the pitfalls of O(N) thinking, here is an O(N) algorithm that uses O(1) space.
for i in [0..2^64):
if i not in list: return i
print "no 64-bit integers are missing"
Since the numbers are all 64 bits long, we can use radix sort on them, which is O(n). Sort 'em, then scan 'em until you find what you're looking for.
if the smallest number is zero, scan forward until you find a gap. If the smallest number is not zero, the answer is zero.
For a space efficient method and all values are distinct you can do it in space O( k ) and time O( k*log(N)*N ). It's space efficient and there's no data moving and all operations are elementary (adding subtracting).
set U = N; L=0
First partition the number space in k regions. Like this:
0->(1/k)*(U-L) + L, 0->(2/k)*(U-L) + L, 0->(3/k)*(U-L) + L ... 0->(U-L) + L
Find how many numbers (count{i}) are in each region. (N*k steps)
Find the first region (h) that isn't full. That means count{h} < upper_limit{h}. (k steps)
if h - count{h-1} = 1 you've got your answer
set U = count{h}; L = count{h-1}
goto 2
this can be improved using hashing (thanks for Nic this idea).
same
First partition the number space in k regions. Like this:
L + (i/k)->L + (i+1/k)*(U-L)
inc count{j} using j = (number - L)/k (if L < number < U)
find first region (h) that doesn't have k elements in it
if count{h} = 1 h is your answer
set U = maximum value in region h L = minimum value in region h
This will run in O(log(N)*N).
I'd just sort them then run through the sequence until I find a gap (including the gap at the start between zero and the first number).
In terms of an algorithm, something like this would do it:
def smallest_not_in_list(list):
sort(list)
if list[0] != 0:
return 0
for i = 1 to list.last:
if list[i] != list[i-1] + 1:
return list[i-1] + 1
if list[list.last] == 2^64 - 1:
assert ("No gaps")
return list[list.last] + 1
Of course, if you have a lot more memory than CPU grunt, you could create a bitmask of all possible 64-bit values and just set the bits for every number in the list. Then look for the first 0-bit in that bitmask. That turns it into an O(n) operation in terms of time but pretty damned expensive in terms of memory requirements :-)
I doubt you could improve on O(n) since I can't see a way of doing it that doesn't involve looking at each number at least once.
The algorithm for that one would be along the lines of:
def smallest_not_in_list(list):
bitmask = mask_make(2^64) // might take a while :-)
mask_clear_all (bitmask)
for i = 1 to list.last:
mask_set (bitmask, list[i])
for i = 0 to 2^64 - 1:
if mask_is_clear (bitmask, i):
return i
assert ("No gaps")
Sort the list, look at the first and second elements, and start going up until there is a gap.
We could use a hash table to hold the numbers. Once all numbers are done, run a counter from 0 till we find the lowest. A reasonably good hash will hash and store in constant time, and retrieves in constant time.
for every i in X // One scan Θ(1)
hashtable.put(i, i); // O(1)
low = 0;
while (hashtable.get(i) <> null) // at most n+1 times
low++;
print low;
The worst case if there are n elements in the array, and are {0, 1, ... n-1}, in which case, the answer will be obtained at n, still keeping it O(n).
You can do it in O(n) time and O(1) additional space, although the hidden factor is quite large. This isn't a practical way to solve the problem, but it might be interesting nonetheless.
For every unsigned 64-bit integer (in ascending order) iterate over the list until you find the target integer or you reach the end of the list. If you reach the end of the list, the target integer is the smallest integer not in the list. If you reach the end of the 64-bit integers, every 64-bit integer is in the list.
Here it is as a Python function:
def smallest_missing_uint64(source_list):
the_answer = None
target = 0L
while target < 2L**64:
target_found = False
for item in source_list:
if item == target:
target_found = True
if not target_found and the_answer is None:
the_answer = target
target += 1L
return the_answer
This function is deliberately inefficient to keep it O(n). Note especially that the function keeps checking target integers even after the answer has been found. If the function returned as soon as the answer was found, the number of times the outer loop ran would be bound by the size of the answer, which is bound by n. That change would make the run time O(n^2), even though it would be a lot faster.
Thanks to egon, swilden, and Stephen C for my inspiration. First, we know the bounds of the goal value because it cannot be greater than the size of the list. Also, a 1GB list could contain at most 134217728 (128 * 2^20) 64-bit integers.
Hashing part
I propose using hashing to dramatically reduce our search space. First, square root the size of the list. For a 1GB list, that's N=11,586. Set up an integer array of size N. Iterate through the list, and take the square root* of each number you find as your hash. In your hash table, increment the counter for that hash. Next, iterate through your hash table. The first bucket you find that is not equal to it's max size defines your new search space.
Bitmap part
Now set up a regular bit map equal to the size of your new search space, and again iterate through the source list, filling out the bitmap as you find each number in your search space. When you're done, the first unset bit in your bitmap will give you your answer.
This will be completed in O(n) time and O(sqrt(n)) space.
(*You could use use something like bit shifting to do this a lot more efficiently, and just vary the number and size of buckets accordingly.)
Well if there is only one missing number in a list of numbers, the easiest way to find the missing number is to sum the series and subtract each value in the list. The final value is the missing number.
int i = 0;
while ( i < Array.Length)
{
if (Array[i] == i + 1)
{
i++;
}
if (i < Array.Length)
{
if (Array[i] <= Array.Length)
{//SWap
int temp = Array[i];
int AnoTemp = Array[temp - 1];
Array[temp - 1] = temp;
Array[i] = AnoTemp;
}
else
i++;
}
}
for (int j = 0; j < Array.Length; j++)
{
if (Array[j] > Array.Length)
{
Console.WriteLine(j + 1);
j = Array.Length;
}
else
if (j == Array.Length - 1)
Console.WriteLine("Not Found !!");
}
}
Here's my answer written in Java:
Basic Idea:
1- Loop through the array throwing away duplicate positive, zeros, and negative numbers while summing up the rest, getting the maximum positive number as well, and keep the unique positive numbers in a Map.
2- Compute the sum as max * (max+1)/2.
3- Find the difference between the sums calculated at steps 1 & 2
4- Loop again from 1 to the minimum of [sums difference, max] and return the first number that is not in the map populated in step 1.
public static int solution(int[] A) {
if (A == null || A.length == 0) {
throw new IllegalArgumentException();
}
int sum = 0;
Map<Integer, Boolean> uniqueNumbers = new HashMap<Integer, Boolean>();
int max = A[0];
for (int i = 0; i < A.length; i++) {
if(A[i] < 0) {
continue;
}
if(uniqueNumbers.get(A[i]) != null) {
continue;
}
if (A[i] > max) {
max = A[i];
}
uniqueNumbers.put(A[i], true);
sum += A[i];
}
int completeSum = (max * (max + 1)) / 2;
for(int j = 1; j <= Math.min((completeSum - sum), max); j++) {
if(uniqueNumbers.get(j) == null) { //O(1)
return j;
}
}
//All negative case
if(uniqueNumbers.isEmpty()) {
return 1;
}
return 0;
}
As Stephen C smartly pointed out, the answer must be a number smaller than the length of the array. I would then find the answer by binary search. This optimizes the worst case (so the interviewer can't catch you in a 'what if' pathological scenario). In an interview, do point out you are doing this to optimize for the worst case.
The way to use binary search is to subtract the number you are looking for from each element of the array, and check for negative results.
I like the "guess zero" apprach. If the numbers were random, zero is highly probable. If the "examiner" set a non-random list, then add one and guess again:
LowNum=0
i=0
do forever {
if i == N then leave /* Processed entire array */
if array[i] == LowNum {
LowNum++
i=0
}
else {
i++
}
}
display LowNum
The worst case is n*N with n=N, but in practice n is highly likely to be a small number (eg. 1)
I am not sure if I got the question. But if for list 1,2,3,5,6 and the missing number is 4, then the missing number can be found in O(n) by:
(n+2)(n+1)/2-(n+1)n/2
EDIT: sorry, I guess I was thinking too fast last night. Anyway, The second part should actually be replaced by sum(list), which is where O(n) comes. The formula reveals the idea behind it: for n sequential integers, the sum should be (n+1)*n/2. If there is a missing number, the sum would be equal to the sum of (n+1) sequential integers minus the missing number.
Thanks for pointing out the fact that I was putting some middle pieces in my mind.
Well done Ants Aasma! I thought about the answer for about 15 minutes and independently came up with an answer in a similar vein of thinking to yours:
#define SWAP(x,y) { numerictype_t tmp = x; x = y; y = tmp; }
int minNonNegativeNotInArr (numerictype_t * a, size_t n) {
int m = n;
for (int i = 0; i < m;) {
if (a[i] >= m || a[i] < i || a[i] == a[a[i]]) {
m--;
SWAP (a[i], a[m]);
continue;
}
if (a[i] > i) {
SWAP (a[i], a[a[i]]);
continue;
}
i++;
}
return m;
}
m represents "the current maximum possible output given what I know about the first i inputs and assuming nothing else about the values until the entry at m-1".
This value of m will be returned only if (a[i], ..., a[m-1]) is a permutation of the values (i, ..., m-1). Thus if a[i] >= m or if a[i] < i or if a[i] == a[a[i]] we know that m is the wrong output and must be at least one element lower. So decrementing m and swapping a[i] with the a[m] we can recurse.
If this is not true but a[i] > i then knowing that a[i] != a[a[i]] we know that swapping a[i] with a[a[i]] will increase the number of elements in their own place.
Otherwise a[i] must be equal to i in which case we can increment i knowing that all the values of up to and including this index are equal to their index.
The proof that this cannot enter an infinite loop is left as an exercise to the reader. :)
The Dafny fragment from Ants' answer shows why the in-place algorithm may fail. The requires pre-condition describes that the values of each item must not go beyond the bounds of the array.
method AntsAasma(A: array<int>) returns (M: int)
requires A != null && forall N :: 0 <= N < A.Length ==> 0 <= A[N] < A.Length;
modifies A;
{
// Pass 1, move every value to the position of its value
var N := A.Length;
var cursor := 0;
while (cursor < N)
{
var target := A[cursor];
while (0 <= target < N && target != A[target])
{
var new_target := A[target];
A[target] := target;
target := new_target;
}
cursor := cursor + 1;
}
// Pass 2, find first location where the index doesn't match the value
cursor := 0;
while (cursor < N)
{
if (A[cursor] != cursor)
{
return cursor;
}
cursor := cursor + 1;
}
return N;
}
Paste the code into the validator with and without the forall ... clause to see the verification error. The second error is a result of the verifier not being able to establish a termination condition for the Pass 1 loop. Proving this is left to someone who understands the tool better.
Here's an answer in Java that does not modify the input and uses O(N) time and N bits plus a small constant overhead of memory (where N is the size of the list):
int smallestMissingValue(List<Integer> values) {
BitSet bitset = new BitSet(values.size() + 1);
for (int i : values) {
if (i >= 0 && i <= values.size()) {
bitset.set(i);
}
}
return bitset.nextClearBit(0);
}
def solution(A):
index = 0
target = []
A = [x for x in A if x >=0]
if len(A) ==0:
return 1
maxi = max(A)
if maxi <= len(A):
maxi = len(A)
target = ['X' for x in range(maxi+1)]
for number in A:
target[number]= number
count = 1
while count < maxi+1:
if target[count] == 'X':
return count
count +=1
return target[count-1] + 1
Got 100% for the above solution.
1)Filter negative and Zero
2)Sort/distinct
3)Visit array
Complexity: O(N) or O(N * log(N))
using Java8
public int solution(int[] A) {
int result = 1;
boolean found = false;
A = Arrays.stream(A).filter(x -> x > 0).sorted().distinct().toArray();
//System.out.println(Arrays.toString(A));
for (int i = 0; i < A.length; i++) {
result = i + 1;
if (result != A[i]) {
found = true;
break;
}
}
if (!found && result == A.length) {
//result is larger than max element in array
result++;
}
return result;
}
An unordered_set can be used to store all the positive numbers, and then we can iterate from 1 to length of unordered_set, and see the first number that does not occur.
int firstMissingPositive(vector<int>& nums) {
unordered_set<int> fre;
// storing each positive number in a hash.
for(int i = 0; i < nums.size(); i +=1)
{
if(nums[i] > 0)
fre.insert(nums[i]);
}
int i = 1;
// Iterating from 1 to size of the set and checking
// for the occurrence of 'i'
for(auto it = fre.begin(); it != fre.end(); ++it)
{
if(fre.find(i) == fre.end())
return i;
i +=1;
}
return i;
}
Solution through basic javascript
var a = [1, 3, 6, 4, 1, 2];
function findSmallest(a) {
var m = 0;
for(i=1;i<=a.length;i++) {
j=0;m=1;
while(j < a.length) {
if(i === a[j]) {
m++;
}
j++;
}
if(m === 1) {
return i;
}
}
}
console.log(findSmallest(a))
Hope this helps for someone.
With python it is not the most efficient, but correct
#!/usr/bin/env python3
# -*- coding: UTF-8 -*-
import datetime
# write your code in Python 3.6
def solution(A):
MIN = 0
MAX = 1000000
possible_results = range(MIN, MAX)
for i in possible_results:
next_value = (i + 1)
if next_value not in A:
return next_value
return 1
test_case_0 = [2, 2, 2]
test_case_1 = [1, 3, 44, 55, 6, 0, 3, 8]
test_case_2 = [-1, -22]
test_case_3 = [x for x in range(-10000, 10000)]
test_case_4 = [x for x in range(0, 100)] + [x for x in range(102, 200)]
test_case_5 = [4, 5, 6]
print("---")
a = datetime.datetime.now()
print(solution(test_case_0))
print(solution(test_case_1))
print(solution(test_case_2))
print(solution(test_case_3))
print(solution(test_case_4))
print(solution(test_case_5))
def solution(A):
A.sort()
j = 1
for i, elem in enumerate(A):
if j < elem:
break
elif j == elem:
j += 1
continue
else:
continue
return j
this can help:
0- A is [5, 3, 2, 7];
1- Define B With Length = A.Length; (O(1))
2- initialize B Cells With 1; (O(n))
3- For Each Item In A:
if (B.Length <= item) then B[Item] = -1 (O(n))
4- The answer is smallest index in B such that B[index] != -1 (O(n))

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