Reputation: 19453
How to calculate the entropy of a file? (Or let's just say a bunch of bytes)
I have an idea, but I'm not sure that it's mathematically correct.
My idea is the following:
Well, now I'm stuck. How to "project" the counter result in such a way that all results would lie between 0.0 and 1.0? But I'm sure, the idea is inconsistent anyway...
I hope someone has better and simpler solutions?
Note: I need the whole thing to make assumptions on the file's contents:
(plaintext, markup, compressed or some binary, ...)
Upvotes: 86
Views: 87329
Reputation: 891
Here's a Java algo based on this snippet and the invasion that took place during the infinity war
public static double shannon_entropy(File file) throws IOException {
byte[] bytes= Files.readAllBytes(file.toPath());//byte sequence
int max_byte = 255;//max byte value
int no_bytes = bytes.length;//file length
int[] freq = new int[256];//byte frequencies
for (int j = 0; j < no_bytes; j++) {
int value = bytes[j] & 0xFF;//integer value of byte
freq[value]++;
}
double entropy = 0.0;
for (int i = 0; i <= max_byte; i++) {
double p = 1.0 * freq[i] / no_bytes;
if (freq[i] > 0)
entropy -= p * Math.log(p) / Math.log(2);
}
return entropy;
}
usage-example:
File file=new File("C:\\Users\\Somewhere\\In\\The\\Omniverse\\Thanos Invasion.Log");
int file_length=(int)file.length();
double shannon_entropy=shannon_entropy(file);
System.out.println("file length: "+file_length+" bytes");
System.out.println("shannon entropy: "+shannon_entropy+" nats i.e. a minimum of "+shannon_entropy+" bits can be used to encode each byte transfer" +
"\nfrom the file so that in total we transfer atleast "+(file_length*shannon_entropy)+" bits ("+((file_length*shannon_entropy)/8D)+
" bytes instead of "+file_length+" bytes).");
output-example:
file length: 5412 bytes
shannon entropy: 4.537883805240875 nats i.e. a minimum of 4.537883805240875 bits can be used to encode each byte transfer
from the file so that in total we transfer atleast 24559.027153963616 bits (3069.878394245452 bytes instead of 5412 bytes).
Upvotes: 0
Reputation: 63949
For what it's worth, here's the traditional (bits of entropy) calculation represented in C#:
/// <summary>
/// returns bits of entropy represented in a given string, per
/// http://en.wikipedia.org/wiki/Entropy_(information_theory)
/// </summary>
public static double ShannonEntropy(string s)
{
var map = new Dictionary<char, int>();
foreach (char c in s)
{
if (!map.ContainsKey(c))
map.Add(c, 1);
else
map[c] += 1;
}
double result = 0.0;
int len = s.Length;
foreach (var item in map)
{
var frequency = (double)item.Value / len;
result -= frequency * (Math.Log(frequency) / Math.Log(2));
}
return result;
}
Upvotes: 23
Reputation: 391
I'm two years late in answering, so please consider this despite only a few up-votes.
Short answer: use my 1st and 3rd bold equations below to get what most people are thinking about when they say "entropy" of a file in bits. Use just 1st equation if you want Shannon's H entropy which is actually entropy/symbol as he stated 13 times in his paper which most people are not aware of. Some online entropy calculators use this one, but Shannon's H is "specific entropy", not "total entropy" which has caused so much confusion. Use 1st and 2nd equation if you want the answer between 0 and 1 which is normalized entropy/symbol (it's not bits/symbol, but a true statistical measure of the "entropic nature" of the data by letting the data choose its own log base instead of arbitrarily assigning 2, e, or 10).
There 4 types of entropy of files (data) of N symbols long with n unique types of symbols. But keep in mind that by knowing the contents of a file, you know the state it is in and therefore S=0. To be precise, if you have a source that generates a lot of data that you have access to, then you can calculate the expected future entropy/character of that source. If you use the following on a file, it is more accurate to say it is estimating the expected entropy of other files from that source.
Although the last one is the truest "entropy", the first one (Shannon entropy H) is what all books call "entropy" without (the needed IMHO) qualification. Most do not clarify (like Shannon did) that it is bits/symbol or entropy per symbol. Calling H "entropy" is speaking too loosely.
For files with equal frequency of each symbol: S = N * H = N. This is the case for most large files of bits. Entropy does not do any compression on the data and is thereby completely ignorant of any patterns, so 000000111111 has the same H and S as 010111101000 (6 1's and 6 0's in both cases).
Like others have said, using a standard compression routine like gzip and dividing before and after will give a better measure of the amount of pre-existing "order" in the file, but that is biased against data that fits the compression scheme better. There's no general purpose perfectly optimized compressor that we can use to define an absolute "order".
Another thing to consider: H changes if you change how you express the data. H will be different if you select different groupings of bits (bits, nibbles, bytes, or hex). So you divide by log(n) where n is the number of unique symbols in the data (2 for binary, 256 for bytes) and H will range from 0 to 1 (this is normalized intensive Shannon entropy in units of entropy per symbol). But technically if only 100 of the 256 types of bytes occur, then n=100, not 256.
H is an "intensive" entropy, i.e. it is per symbol which is analogous to specific entropy in physics which is entropy per kg or per mole. Regular "extensive" entropy of a file analogous to physics' S is S=N*H where N is the number of symbols in the file. H would be exactly analogous to a portion of an ideal gas volume. Information entropy can't simply be made exactly equal to physical entropy in a deeper sense because physical entropy allows for "ordered" as well disordered arrangements: physical entropy comes out more than a completely random entropy (such as a compressed file). One aspect of the different For an ideal gas there is a additional 5/2 factor to account for this: S = k * N * (H+5/2) where H = possible quantum states per molecule = (xp)^3/hbar * 2 * sigma^2 where x=width of the box, p=total non-directional momentum in the system (calculated from kinetic energy and mass per molecule), and sigma=0.341 in keeping with uncertainty principle giving only the number of possible states within 1 std dev.
A little math gives a shorter form of normalized extensive entropy for a file:
S=N * H / log(n) = sum(count_i*log(N/count_i))/log(n)
Units of this are "entropy" (which is not really a unit). It is normalized to be a better universal measure than the "entropy" units of N * H. But it also should not be called "entropy" without clarification because the normal historical convention is to erringly call H "entropy" (which is contrary to the clarifications made in Shannon's text).
Upvotes: 28
Reputation: 13471
Re: I need the whole thing to make assumptions on the file's contents: (plaintext, markup, compressed or some binary, ...)
As others have pointed out (or been confused/distracted by), I think you're actually talking about metric entropy (entropy divided by length of message). See more at Entropy (information theory) - Wikipedia.
jitter's comment linking to Scanning data for entropy anomalies is very relevant to your underlying goal. That links eventually to libdisorder (C library for measuring byte entropy). That approach would seem to give you lots more information to work with, since it shows how the metric entropy varies in different parts of the file. See e.g. this graph of how the entropy of a block of 256 consecutive bytes from a 4 MB jpg image (y axis) changes for different offsets (x axis). At the beginning and end the entropy is lower, as it part-way in, but it is about 7 bits per byte for most of the file.
Source: https://github.com/cyphunk/entropy_examples. [Note that this and other graphs are available via the novel http://nonwhiteheterosexualmalelicense.org license....]
More interesting is the analysis and similar graphs at Analysing the byte entropy of a FAT formatted disk | GL.IB.LY
Statistics like the max, min, mode, and standard deviation of the metric entropy for the whole file and/or the first and last blocks of it might be very helpful as a signature.
This book also seems relevant: Detection and Recognition of File Masquerading for E-mail and Data Security - Springer
Upvotes: 2
Reputation: 19
Calculates entropy of any string of unsigned chars of size "length". This is basically a refactoring of the code found at http://rosettacode.org/wiki/Entropy. I use this for a 64 bit IV generator that creates a container of 100000000 IV's with no dupes and a average entropy of 3.9. http://www.quantifiedtechnologies.com/Programming.html
#include <string>
#include <map>
#include <algorithm>
#include <cmath>
typedef unsigned char uint8;
double Calculate(uint8 * input, int length)
{
std::map<char, int> frequencies;
for (int i = 0; i < length; ++i)
frequencies[input[i]] ++;
double infocontent = 0;
for (std::pair<char, int> p : frequencies)
{
double freq = static_cast<double>(p.second) / length;
infocontent += freq * log2(freq);
}
infocontent *= -1;
return infocontent;
}
Upvotes: 2
Reputation: 6423
Without any additional information entropy of a file is (by definition) equal to its size*8 bits. Entropy of text file is roughly size*6.6 bits, given that:
Entropy of text file in English is estimated to be around 0.6 to 1.3 bits per character (as explained here).
In general you cannot talk about entropy of a given file. Entropy is a property of a set of files.
If you need an entropy (or entropy per byte, to be exact) the best way is to compress it using gzip, bz2, rar or any other strong compression, and then divide compressed size by uncompressed size. It would be a great estimate of entropy.
Calculating entropy byte by byte as Nick Dandoulakis suggested gives a very poor estimate, because it assumes every byte is independent. In text files, for example, it is much more probable to have a small letter after a letter than a whitespace or punctuation after a letter, since words typically are longer than 2 characters. So probability of next character being in a-z range is correlated with value of previous character. Don't use Nick's rough estimate for any real data, use gzip compression ratio instead.
Upvotes: -1
Reputation: 43110
- At the end: Calculate the "average" value for the array.
- Initialize a counter with zero, and for each of the array's entries: add the entry's difference to "average" to the counter.
With some modifications you can get Shannon's entropy:
rename "average" to "entropy"
(float) entropy = 0
for i in the array[256]:Counts do
(float)p = Counts[i] / filesize
if (p > 0) entropy = entropy - p*lg(p) // lgN is the logarithm with base 2
Edit: As Wesley mentioned, we must divide entropy by 8 in order to adjust it in the range 0 . . 1 (or alternatively, we can use the logarithmic base 256).
Upvotes: 52
Reputation: 10852
To calculate the information entropy of a collection of bytes, you'll need to do something similar to tydok's answer. (tydok's answer works on a collection of bits.)
The following variables are assumed to already exist:
byte_counts
is 256-element list of the number of bytes with each value in your file. For example, byte_counts[2]
is the number of bytes that have the value 2
.
total
is the total number of bytes in your file.
I'll write the following code in Python, but it should be obvious what's going on.
import math
entropy = 0
for count in byte_counts:
# If no bytes of this value were seen in the value, it doesn't affect
# the entropy of the file.
if count == 0:
continue
# p is the probability of seeing this byte in the file, as a floating-
# point number
p = 1.0 * count / total
entropy -= p * math.log(p, 256)
There are several things that are important to note.
The check for count == 0
is not just an optimization. If count == 0
, then p == 0
, and log(p) will be undefined ("negative infinity"), causing an error.
The 256
in the call to math.log
represents the number of discrete values that are possible. A byte composed of eight bits will have 256 possible values.
The resulting value will be between 0 (every single byte in the file is the same) up to 1 (the bytes are evenly divided among every possible value of a byte).
An explanation for the use of log base 256
It is true that this algorithm is usually applied using log base 2. This gives the resulting answer in bits. In such a case, you have a maximum of 8 bits of entropy for any given file. Try it yourself: maximize the entropy of the input by making byte_counts
a list of all 1
or 2
or 100
. When the bytes of a file are evenly distributed, you'll find that there is an entropy of 8 bits.
It is possible to use other logarithm bases. Using b=2 allows a result in bits, as each bit can have 2 values. Using b=10 puts the result in dits, or decimal bits, as there are 10 possible values for each dit. Using b=256 will give the result in bytes, as each byte can have one of 256 discrete values.
Interestingly, using log identities, you can work out how to convert the resulting entropy between units. Any result obtained in units of bits can be converted to units of bytes by dividing by 8. As an interesting, intentional side-effect, this gives the entropy as a value between 0 and 1.
In summary:
Upvotes: 34
Reputation: 2725
Is this something that ent
could handle? (Or perhaps its not available on your platform.)
$ dd if=/dev/urandom of=file bs=1024 count=10
$ ent file
Entropy = 7.983185 bits per byte.
...
As a counter example, here is a file with no entropy.
$ dd if=/dev/zero of=file bs=1024 count=10
$ ent file
Entropy = 0.000000 bits per byte.
...
Upvotes: 22
Reputation: 400274
There's no such thing as the entropy of a file. In information theory, the entropy is a function of a random variable, not of a fixed data set (well, technically a fixed data set does have an entropy, but that entropy would be 0 — we can regard the data as a random distribution that has only one possible outcome with probability 1).
In order to calculate the entropy, you need a random variable with which to model your file. The entropy will then be the entropy of the distribution of that random variable. This entropy will equal the number of bits of information contained in that random variable.
Upvotes: 10
Reputation: 6894
If you use information theory entropy, mind that it might make sense not to use it on bytes. Say, if your data consists of floats you should instead fit a probability distribution to those floats and calculate the entropy of that distribution.
Or, if the contents of the file is unicode characters, you should use those, etc.
Upvotes: 5
Reputation: 10275
A simpler solution: gzip the file. Use the ratio of file sizes: (size-of-gzipped)/(size-of-original) as measure of randomness (i.e. entropy).
This method doesn't give you the exact absolute value of entropy (because gzip is not an "ideal" compressor), but it's good enough if you need to compare entropy of different sources.
Upvotes: 38