# Intuitive explanation of entropy

I have bumped many times into entropy, but it has never been clear for me why we use this formula:

If $X$ is random variable then its entropy is:

$$H(X) = -\displaystyle\sum_{x} p(x)\log p(x).$$

Why are we using this formula? Where did this formula come from? I'm looking for the intuition. Is it because this function just happens to have some good analytical and practical properties? Is it just because it works? Where did Shannon get this from? Did he sit under a tree and entropy fell to his head like the apple did for Newton? How do you interpret this quantity in the real physical world?

• That was well known in Statistical Mechanics. Max Planck derived it for a phonon gas. Take some visit to Jaynes stuff. – Felix Marin Apr 25 '14 at 5:18
• I just want to point out that there are simple pieces of software around on the Internet claiming to determine (and in fact they do correctly compute according to the formula of Shannon) the "entropy" of a user-given character sequence. However, entropy is a concept relevant to the source of randomness, not to a particular "given" sequence. Hence such calculations are problematical. See the thread crypto.stackexchange.com/questions/33231/entropy-calculation – Mok-Kong Shen Apr 10 '16 at 9:12

## 13 Answers

We want to define a measure of the amount of information a discrete random variable produces. Our basic setup consists of an information source and a recipient. We can think of our recipient as being in some state. When the information source sends a message, the arrival of the message causes the recipient to go to a different state. This "change" is exactly what we want to measure.

Suppose we have a set of $$n$$ events with respectively the following probabilities

$$p_1,p_2,...,p_n.$$

We want a measure of how much choice we are to make, how uncertain are we?

Intuitively, it should satisfy the following four conditions.

Let $$H$$ be our "measure".

1. $$H$$ is continous at every $$p_i$$

2. If $$p_i = 1$$, then $$H$$ is minimum with a value of $$0$$, no uncertainty.

3. If $$p_1 = p_2= \dots = p_n$$, i.e. $$p_i=\frac{1}{n}$$, then $$H$$ is maximum. In other words, when every outcome is equally likely, the uncertainty is greatest, and hence so is the entropy.

4. If a choice is broken down into two successive choices, the value of the original $$H$$ should be the weighted sum of the value of the two new ones.

An example of this condition $$4$$ is that $$H\left(\frac1{2}, \frac1{3}, \frac{1}{6} \right) = H\left(\frac{1}{2}, \frac{1}{2} \right) + \frac{1}{2} H\left(1 \right) + \frac{1}{2} H\left(\frac{2}{3}, \frac{1}{3} \right)$$

The only $$H$$ satisfying the conditions above is:

$$H = −K\sum^n_{i=1}p_i log(pi)$$

To see that this definition gives what we intuitively would expect from a "measure" of information, we state the following properties of $$H$$.

1. $$H = 0 \iff p_i = 1$$ and $$p_j= 0, \forall j \neq i$$
2. $$\forall n \in N$$, $$H$$ is maximum when $$p_1=,\cdots,= p_n$$
3. Suppose $$x$$ and $$y$$ are two events with $$x \in R^n$$, $$y \in R^m$$ and $$p(i,j)$$ is the probability that $$x$$ and $$y$$ jointly occur (i.e. occur at the same time).

• $$H(x, y) = −\sum_{i, j} p(i, j) \log(p(i, j))$$

• $$H(x, y) \leq H(x) + H(y)$$.

With equality only if the occurrences are independent.

• $$H_x(y) = −\sum_{i, j} p_i(j) \log(p_i(j))= H(x, y) − H(x).$$

The entropy of $$y$$ when $$x$$ is known.

• $$H(y) \geq H_x(y)$$.

The entropy of $$y$$ is never increased by knowing $$x$$.

4. Any change towards equalization of the probabilities increases $$H$$. Greater uncertainty $$\Rightarrow$$ greater entropy.

• What does it mean that H is continuous at every p(i)? – confused00 Nov 21 '15 at 14:39
• @confused00 it basically means that if you change p(i) a little bit then H will only change a little bit as well. – An.Ditlev Aug 31 '16 at 18:27
• @nbro, I will leave it as is. That sentence is not supposed to convey any mathematilcal rigor but there is plente of that elsewhere in the answer. – An.Ditlev Mar 30 '18 at 20:19
• H(1/2,1/3,1/2). Why don't the values inside the H sum to one? – Casebash Oct 1 '18 at 14:23
• @Casebash was a copy paste error, fixed now. – user2740 Oct 13 '18 at 0:48

Here's one mildly informal answer.

How surprising is an event? Informally, the lower probability you would've assigned to an event, the more surprising it is, so surprise seems to be some kind of decreasing function of probability. It's reasonable to ask that it be continuous in the probability. And if event $A$ has a certain amount of surprise, and event $B$ has a certain amount of surprise, and you observe them together, and they're independent, it's reasonable that the amount of surprise adds.

From here it follows that the surprise you feel at event $A$ happening must be a positive constant multiple of $- \log \mathbb{P}(A)$ (exercise; this is related to the Cauchy functional equation). Taking surprise to just be $- \log \mathbb{P}(A)$, it follows that the entropy of a random variable is its expected surprise, or in other words it measures how surprised you expect to be on average after sampling it.

Closely related is Shannon's source coding theorem, if you think of $- \log \mathbb{P}(A)$ as a measure of how many bits you need to tell someone that $A$ happened.

• @QiaochuYuan I'm guessing it's impossible to 'prove' formally why entropy in theory of information is defined this way. Rather, we should start with an intuitive concept and try to define a mathematical formula satisfying the properties we want it to satisfy in the informal sense. So 'informal' answers are the most formal. What do you think? – user4205580 May 5 '15 at 19:07
• How would you intuitively characterize temperature $T$ along these lines if we think of $1/T$ coming from $dS/dE = 1/T$ as giving us something like 'the change in our expected surprise as the random variable changes'? hyperphysics.phy-astr.gsu.edu/hbase/thermo/temper2.html – bolbteppa Sep 24 '15 at 18:39
• First paragraph was useful... the rest got too abstract – CodyBugstein Oct 27 '15 at 17:59
• What does this mean : "It's reasonable to ask that it be continuous in the probability"? – confused00 Nov 21 '15 at 14:40
• why is it that two disjoint events are the ones that their information is added...why is it a property of intersection of events and why does independence matter at all? (at least intuitively when one is coming up with these definitions) – Charlie Parker Apr 26 '18 at 20:38

Let me give you an intuitive (rather than mathematically rigorous) interpretation of entropy, denoted $H(X)$.

Let me start by giving you my interpretation first and then let me justify it.

Entropy can be viewed as the cost of encoding a specific distribution $X$.

Since I will describe it in terms of encoding messages, let me change the notation to make the description more intuitive. We want to transmit some message $(M=m)$ across some channel $C$. Intuitively, the cost of sending a messages across a channel is the length of the encoding of the message $m$. i.e. the longer the message, the more it will cost us to send the message since we have to send more (bits) of information. The frequency (and the probability) of getting each message is dictated by the language $\mathcal{L}$ which the message came from. For example, the language could be $\mathcal{L} = English$, were the word "the" is probably relatively common (i.e. high frequency and high probability) and thus, we should choose wisely how to encode this, since we will have to send it very often (or in the case of English, write it pretty pretty often!). So we want an efficient encoding for "the". By efficient, we want it to mean choosing a encoding that happens to choose less number of "stuff" (or information, bits etc) that we need to send through the channel. Since the messages we have to send are somewhat random, then its seems reasonable that we aim to send the least amount of bits that we can, at least on average. i.e intuitively, we want to minimize:

$$E[ |M|] = \sum_m Pr[M=m]|m|$$

where $|m|$ denotes the length of the encoding of message m.

For example, we might want to encode it this way: for common (high probability) messages lets use fewer bits of information to encode them since we have to send them very frequently. So we can encode them based of the relative frequency dictated by the distribution for $\mathcal{L}$. With a little more thought you can come up with Huffman coding or some other scheme similar to it, if you make sure that the messages can be decoded unambiguously, the main idea in my opinion is to encode frequent words with short code lengths and infrequent ones with longer code lengths.

It turns out that Shannon proved that the notion of entropy provides a precise lower bound for the expected number of bits required to encode instances/messages sampled from $P(M)$. i.e. if we consider any proper codebook for values of $M \in \mathcal{L}$, then the expected code length, relative to the distribution $P(M)$, cannot be less than the entropy $H(M)$:

$$H(M) \leq E[|M|]$$

Since there exists a scheme that makes this inequality tight, then we can expect to encode the messages $M$ as efficiently as possible (on average).

Thus, returning to the interpretation I suggested. Since, the cost of encoding something can be thought of as the number of bits we need to send through a channel, and the optimum value (entropy) can be achieved, then entropy becomes the expected cost of encoding a distribution of messages.

(or if you want to view it from the inequalities perspective, its the best/minimum expected cost you can have to encode any known distribution $P(M)$.)

• Well written! I am glad that it is clarified that entropy is property of the language and not the word that we are encoding. Also entropy is all about measure and not random variable. – user1700890 Sep 21 '15 at 15:02
• @user1700890 what do you mean its about measure and not r.v.? If u have some better view on entropy to provide, please do! We all would like to learn :) – Charlie Parker Feb 12 '16 at 1:26
• @CharlieParker well, values of r.v. do not matter for entropy, only distribution (measure) matters. – user1700890 Feb 12 '16 at 20:02
• @user1700890 oh I see what you mean. Yes sure. I guess I tried making an intuitive/conceptual explanation rather than a super rigorous one. If you want to add some supplementary remarks on my answer to point that out, I'd be happy to incorporate them. – Charlie Parker Feb 13 '16 at 1:30

Here is a simple intuitive explanation of Shannon entropy.

The telegraph message "SOS" is encoded as "...---..." in Morse code. The thing to note is that the massage is made up of letters from the alphabet but what is transmitted down the communication line are only dots and dashes. The message is written in the alphabet but transmitted in dots and dashes. Morse code maps letters to dots and dashes.

Text messages, emails and instant messaging are all written in text (i.e. upper and lower case letters, space, tab, decimal digits, punctuation marks, etc) but transmitted as bits {0, 1}. For the mathematician the problem of communication is of finding the most efficient way of mapping text messages to streams of bits. By most efficient I mean the least number of bits. If I have a text message of 100 characters what is the smallest number of bits I need to transmit down the line?

From these examples we can see that message transmission involves 2 sets A and B. The message is a sequence of letters from set A but the communication line can only transmit characters from set B. Let $m_A$ be a message written in A and let $m_B$ be the same message written in B. Let E be an encoding function that maps messages from A to messages from B.

$$m_B = E(m_A)$$

We can measure the size of the message by counting the number of characters in the message. The length of $m_A$ is $L(m_A)$ and the length of $m_B$ is $L(m_B)$.

Clearly a short message will have a sort encoding and a long message will have a long encoding. If we double the length of the message we will double the length of the encoding. The length of the encoding will be proportional to the length of the message.

$$L(m_B) \varpropto L(m_A)$$

By introducing a constant of proportionality k we can turn this into an equation.

$$L(m_B) = kL(m_A)$$

The problem of finding the most efficient encoding reduces to find the minimum possible value of k. This minimum value is the entropy of the set A measured over the set B.

If

$$A = \{A_1, A_2, A_3, ..., A_n\}$$

and the probability of $A_i$ being in the message is $p_i$ and B is the set

$$B = \{B_1, B_2, B_3, ..., B_m\}$$

then the entropy is given by

$$Entropy = \sum_{i=1}^n p_i\log_m(\frac{1}{p_i})$$

Note that log is taken to the base m which is the size of the set B.

So far I have dealt with the most general case but now I will switch to the simple case when each of the n characters in A are equally likely so $p_i = \frac{1}{n} \forall i$.

$$Entropy = \sum_{i=1}^n \frac{1}{n} \log_m(n)$$

This simplifies to

$$Entropy = \log_m(n)$$

In this case the entropy only depends on the of the sizes of A and B.

To prove this is correct function for the entropy we consider an encoding $E: A^r \rightarrow B^s$ that encodes blocks of r letters in A as s characters in B.

$$L(m_A) = r, \space L(m_B) = s, \space m_B = E(m_A)$$

The range of E must be greater than or equal to the size of the domain or otherwise two different messages in the domain would have to map to the same encoding in the range. The size of the domain is $n^r$ and the size of the range is $m^s$. We chose s to satisfy the following inequalities.

$$m^{(s-1)} \lt n^r \le m^s$$

The right hand inequality ensures the range is greater than or equal to the domain. The left hand inequality ensures this is the smallest such s that has this property.

Taking the log to base m of both side of these inequalities gives us.

$$\log_m(m^{(s-1)}) \lt \log_m(n^r) \le \log_m(m^s)$$

$$(s-1)\log_m(m) \lt r\log_m(n) \le s\log_m(m)$$

$$\frac{(s-1)}{r} \lt \log_m(n) \le \frac{s}{r}$$

The constant of proportionality k we introduced earlier is the ratio $\frac{s}{r}$.

$$k = \frac{s}{r}$$

So the right hand inequality proves

$$\log_m(n) \le k$$

This proves that $\log_m(n)$ is a lower bound for k but how close can an encoding come to the lower bound? We note that

$$\frac{(s-1)}{r} \lt \log_m(n) \le \frac{s}{r}$$

implies

$$\frac{s}{r}-\log_m(n) \lt \frac{s}{r}-\frac{(s-1)}{r}$$

$$\frac{s}{r}-\log_m(n) \lt \frac{1}{r}$$

$$k-\log_m(n) \lt \frac{1}{r}$$

We can make k as close as we like to $\log_m(n)$ by increasing the block size r.

This finishes our treatment of the special case of equal probabilities. Hopefully having proved that in this case the entropy is $\log_m(n)$ the more general formula should not come as too much of a surprise.

I hope you find this simple explanation more intuitive than the usual approach. I searched the internet for an explanation of entropy but didn't like any of the results so I came up with my own. It took me 5 years but now I understand Shannon entropy.

The three postulates in this answer are the ones used in Shannon's original 1948 paper. If you skip over to Appendix II in that paper, you can find the remainder of the derivation.

1. Derive the expression for $H \left(\tfrac{1}{n}, \tfrac{1}{n}, \ldots, \tfrac{1}{n} \right)$ as $-K \log n$.

2. If all the $p_i$'s are rational, we can find an $m$ such that $m p_i \in \mathbb{N}, \forall i$. Now, use postulate $3$ to derive the entropy formula.

3. Using the continuity postulate (first postulate), you can directly extend the formula to the case where the $p_i$'s are not necessarily rational.

The physical meaning of information entropy is:

the minimum number of storage "bits" needed to capture the information.

This can be less than implied by the number of different values a variable can take on. For example, a variable may take on $4$ different values, but if it takes on one of these values more often than the others, then one would need less than $\log(4)=2$ bits to store the information, if we choose an efficient way of storing the information.

We get entropy in terms of "bits" when the base of the log in the entropy equation is $2$. For some other technology, e.g., some esoteric memory based on tri-state devices, we would use log of base $3$ in the entropy equation. And so on.

For a verbose explanation of the intuition behind Shannon's entropy equation, you could check out this document: Understanding Shannon's Entropy metric for Information.

• Log p(x) represents bits that would be needed to store the information. Can you explain what is the intuition of multiplying it with p(x) in formula. @Sriram V – Akki Sep 5 '17 at 17:23

Consider transmitting long numbers, e.g. values between 0 and 999,999 (decimal).

Each value can take one of out of a million possible states, and yet we can transmit each number with only 6 digits.

Noting that:

$$\log_{10}(1,000,000) = 6$$

Note that I've set the log base to match the number of symbols (0 to 9), and that the result is the number of (decimal) digits needed to encode a number with one million possible states.

For binary we get:

$$\log_{2}(1,000,000) \approx 19.93 \text{ bits}$$

So, hopefully, you can see that log({number of possibilities}) inherently gives a measure of how much information (how many digits) we need to encode a variable with $N$ possible states.

It may also be useful to move the minus sign inside the log, recalling that:

$$-\log{x} = \log{\frac{1}{x}}$$

Thus:

$$H(X) = \sum{p(x)}\log{\frac{1}{p(x)}}$$

So, in the above discussion, it looks like we just equated these two terms:

$$\{\text{number of possibilities}\} = \frac{1}{p(x)}$$

Which sort of makes sense. For example, if $p(x) = 1$, then $x$ can be the only possible value; if $p(x) = 0.5$, then there may be lots of other values, but there can be only one other at most with that same share of the probability, i.e. $0.5$.

So, $\log \left(\frac{1}{p(x)} \right)$ is giving us an amount of information fitting for a value with probability $p(x)$. We then multiply that amount of information by the probability of that value actually occurring, effectively calculating a weighted sum over all of the possible values. Giving:

$$H(X) = \sum{p(x)}\log \left( \frac{1}{p(x)} \right)$$

I see entropy as a number that gives you an idea of how random an outcome will be based on the probability values of each of the possible outcomes in a situation.

Let's start with a simple case. Suppose only a single outcome is possible, then there is only one value of $$i$$ ($$=1$$) and $$p_{1}=1$$. From the formula, the entropy is then zero:

$$-p_{1} \log(p_{1}) = p_{1} \log \left(\frac{1}{p_{1}} \right) = 1 * 0 = 0$$

This is cool! When the outcome will be the same every single time, the "randomness" is zero, and so the entropy does indeed correspond to a measure of randomness.

Now, before moving to more complicated cases, let's look at a plot of the factors involved in the entropy formula. Let me rewrite the formula first as follows:

$$- \sum_{i} p_{i} \log(p_{i}) = \sum_{i} p_{i} \log \left(\frac{1}{p_{i}} \right)$$ Looking at this plot you see that there is nothing really special about $$\log \left( \frac{1}{p} \right)$$, really any function of $$p$$ such that $$f(1) = 0$$ would have done the trick.

Now, you might wonder, what if I have two possible outcomes, one that is nearly certain and one that is very unlikely; for example $$p_{1} = 0.999$$ and $$p_{2} = 0.001$$. This case is tricky!

For the first outcome, we see that $$p_{1} \log\left(\frac{1}{p_{1}} \right)$$ is a number very close to zero. That first outcome is not too different from the single-outcome situation we looked at before.

For the second outcome, $$p_{2} = 0.001$$, let's think about the limit of the product $$p\log(\frac{1}{p})$$ as $$p \rightarrow 0$$. Intuitively, we know that if we add an extremely unlikely event, such as the one with $$p_{2} = 0.001$$, the "randomness" situation should not really be that different from our original single-outcome process.

Let's look at a graph to see what the definition of entropy does for us in this case: Beautiful! This means that an extremely unlikely event contributes nearly zero to the entropy of the system. Extremely likely and extremely unlikely are similar in terms of their "randomness": they have pretty much none of it!

### Why the logarithm?

At this point you might be wondering, what is so special about the logarithm? It does seem kind of an arbitrary choice. There certainly must be other functions of $$p$$ that have the same convergence properties as $$p$$ goes to $$0$$ and $$p$$ goes to $$1$$.

So, I'll give you a situation to think about. Suppose you have a system where there are two equally likely choices $$1$$ and $$2$$, with probabilities $$p_{1} = p_{2} = \frac{1}{2}$$. That situation will have some entropy, let's call it $$S_{2}$$. Consider also a second system with an entropy $$S_{3}$$ where there are three equally likely choices $$A$$, $$B$$ and $$C$$, with probabilities $$p_{A} = p_{B} = p_{C} = \frac{1}{3}$$.

It would be nice if the entropy were a function such that if I considered the union of the two independent systems, the resulting entropy of the global system would be additive, that is

$$S_{g} = S_{2} + S_{3}$$

In simpler words, it would be nice for our measure of "randomness" to be additive.

Let's be explicit here and write down the full expression for $$S_{g}$$, assuming that the events from one system are completely independent from events in the other system.

\begin{align} S_{g} = p_{1} p_{A} \log \left (\frac{1}{p_{1}p_{A}} \right) + p_{1}p_{B} \log \left(\frac{1}{p_{1}p_{B}} \right) + p_{1}p_{C} \log \left( \frac{1}{p_{1}p_{C}} \right) + \\ p_{2}p_{A} \log \left( \frac{1}{p_{2}p_{A}} \right) + p_{2}p_{B} \log \left( \frac{1}{p_{2}p_{B}} \right) + p_{2}p_{C} \log \left( \frac{1}{p_{2}p_{C}} \right) \end{align}

The property of the logarithm that makes it a good choice for defining entropy is then more clear:

$$\log \left( \frac{1}{p_{1}p_{A}} \right) = \log \left( \frac{1}{p_1} \right) + \log \left( \frac{1}{p_A} \right)$$

Given this property, we can simplify $$S_{g}$$ as

$$S_{g} = p_{1}\log\left( \frac{1}{p_{1}} \right) (p_{A} + p_{B} + p_{C}) + p_{1} S_{3} + p_{2} \log \left( \frac{1}{p_{2}} \right) (p_{A} + p_{B} + p_{C}) + p_{2} S_{3}$$

$$S_{g} = S_{2} (p_{A} + p_{B} + p_{C}) + S_{3} (p_{1} + p_{2})$$

Since probabilities add up to $$1$$, this gives us the desired property:

$$S_{g} = S_{2} + S_{3}$$

This culminates our motivation for why the formula for entropy is what it is!

### Key takeaway

I will summarize by saying that the key point is that "randomness" is hard thing to quantify. We can choose a measure for "randomness" (such as Shannon's entropy formula), and that choice is only informed by the properties that we want the measure to have.

When you look at

$$S = - \sum_{i} p_{i} \log(p_{i})$$

for the first time in your life you might think: where on earth did they pull this out from? But it turns out that it was a definition only informed by the properties that it holds.

An informal enumeration of these properties is given below:

1. An extremely likely event should not contribute much to the randomness measure.

2. An extremely unlikely event should not contribute much to the randomness measure.

3. Randomness should be additive.

• That's the answer I was looking for!! Thank you so much for such a clear explanation! Greetings – Phatee P Feb 24 at 21:26

Entropy is often too abstract to me! The following perspective from statistical physics (instead of informational entropy) is what I got so far.

Let $N = n_1 + ... + n_k$ and $p_i = \frac{n_i}{N}$. $$\log \left( \frac{N!}{n_1 ! \cdots n_k ! } \right) \approx - N \sum_i p_i \log p_i$$ by Stirling's formula.

I wonder if this was the first time ever in human history that such an expression $$\sum_i p_i \log p_i$$ appeared!

The approximation above is a link between counting combinations and entropy, and it seems to provide the most concrete grasp. This is the genius of Boltzmann, Maxwell and Gibbs which leads to the development of statistical mechanics.

If you understand expected value $\mathbb{E}$ of a random variable $X$, then the concept of entropy should be easier to understand. With no mathematical rigor, I'll express the entropy $H$ (of a discrete random variable $X$) in the following way:

$$H(X) = \mathbb{E}[\text{surprise from outcome encoded in 2-bits}] = \mathbb{E}[\log(\text{surprise from outcome})].$$

For an event $A$ with probability $p$, the surprise is inversely proportional to the probability of the event, $\frac{1}{p}$.

There is an easy to understand video that illustrates, in layman terms, how to arrive at the formula for entropy:

https://www.khanacademy.org/computing/computer-science/informationtheory/moderninfotheory/v/information-entropy

The context of the video is information theory.

As a physicist, I can confess that not many people grasp what entropy is (regardless of the different attempts to nail it with mathematical definitions)!

There are also other definitions of entropy flying around in the physics community which, for certain situations, are more consistent than the standard definition.

• How does this answer the questions? This should be a comment. – nbro Mar 1 '18 at 11:08

Let me try to answer to part of your question where you ask how it's related to the "physical world" taking the same direction as MichaelNgelo's answer.

Let's say you have $N$ objects, out of them there are $n_1$ many $A$s and $n_2$ many $B$s.

How many ways can you order them? For example for $N = 4$, with one $A$ and three $B$s we have: $$ABBB$$ $$BABB$$ $$BBAB$$ $$BBBA$$

This is a combinatorics problem and we can find the formula: $$\frac{N!}{n_1!n_2!}$$

Note that there are more cases with $N=4$ and a arbitrarly number of $A$s and $B$s ($16$ cases) or with $N=4$ and with two $A$s and two $B$s ($6$ cases).

Given the proportions of $A$s and $B$s, it reduces the number of possibilities and we just need a way to differentiate between them.

This is where the logarithm comes in to tell the least amount of bits to differentiate between these $M$ cases. Explicitly we need $\log_2(M)$ bits.

Now divide by $N$ to find the number of bits needed per symbol in the sequence. So if put all together, the formula becomes:

$$\frac{\log_2(\frac{N!}{n_1!n_2!})}{N}$$

and for convenience instead of talking about $n_1$ and $n_2$ in absolute number, we talk about the fraction of $N$, respectively $f_1$ and $f_2$. Finally tending $N$ to infinity gives the shannon entropy.

Example with $f_1 = 0.25$ and $f_2 = 0.75$: Someone experienced can probably derive the Shannon entropy formula from the formula above with $N$ tending to infinity.

So a possible interpretation of the Shannon formula would be: The number of bits needed per symbol given the proportions of each symbol in advance in an infinite sequence.