What's the best way to estimate exponents by hand? Say for example $(1.07)^{10}$ $\sim2$, or like $(1.07)^{15}$, or $(1.05)^{15}$. Is there any standard way of doing these calculations?
3 Answers
One popular method is using the $\textbf{rule of}$ $\mathbf{7 2}$ for estimating an investment's doubling time. It's a simple way to approximate the effect of compounding interest. According to this rule, you divide 72 by the annual interest rate to find how many years it will take for your investment to double. This method can be loosely adapted to estimate the growth of numbers slightly above 1 raised to high powers.
For a more general approach, especially for numbers that don't conveniently fit the doubling scenario, you can use the linear approximation method from calculus, which is essentially the first term of the Taylor series expansion. For small $x,(1+x)^n \approx 1+n x$, where $x$ is the rate of growth and $n$ is the number of periods.
Applying the Linear Approximation Method:
- For $(1.07)^{10}$, we approximate it as $1+10 \cdot 0.07=1.7$. This is an underestimate because it doesn't account for compounding beyond the first period.
- For $(1.07)^{15}$, it's $1+15 \cdot 0.07=2.05$. Again, a simple linear approximation.
- For $(1.05)^{15}$, it's $1+15 \cdot 0.05=1.75$.
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Nice trick, never seen it before. – Snowball Mar 24 '24 at 03:57
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I wanted to add that the linear approximation used here is called the binomial approximation and it will always be an underestimate in this context by Bernoulli's inequality. – DarkLordOfPhysics Mar 24 '24 at 04:06
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What happens when the exponent gets large? Say (1.01)^100 – John Li Mar 24 '24 at 04:06
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1$e^{nx}$ is an upper bound for $(1+x)^n$ here and becomes more favorable to use to estimate $(1+x)^n$ than the binomial approximation when $n$ is large. Thus, $1.01^{100}$ can be bounded between $1+100 \cdot 0.01 =2$ and $e^{100 \cdot 0.01}=e \approx 2.718$ but is closer to the latter. – DarkLordOfPhysics Mar 24 '24 at 04:32
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Is the annual interest rate measured as a decimal or a percent with this rule? – Nate Mar 24 '24 at 09:35
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3@Nate: the percentage without considering the divide by $100$. If a loan is at $6%$ annual interest it doubles in about $72/6=12$ years. In fact $1.06^{12}\approx 2.012$ The rule works because $\log 2 \approx 0.693$ and multiplying that by $100$ gives about $72$. $72$ has lots of factors so it is easy to divide into – Ross Millikan Mar 24 '24 at 15:34
I wanted to elaborate on my comments in the answer provided by @Cuteshrek in case it would be useful.
Let nonnegative integer $n$ be given and define $f(x)=(1+x)^n$. Then the $N$th order Maclaurin series expansion of $f(x)$ can be shown to be $$\sum_{i=0}^N {n \choose i} x^i.$$ Note that when $N \geq n$, $$\sum_{i=0}^N {n \choose i} x^i=\sum_{i=0}^n {n \choose i} x^i=(1+x)^n=f(x),$$ where we have used the binomial theorem $(y+x)^n = \sum_{i=0}^n {n \choose i} y^{n-i}x^i$ with $y=1$. This makes sense because $f$ is a $n$th degree polynomial.
Moreover, since $x>0$ in our context, the summand is always positive for all integers $0 \leq i \leq n$. Thus, for nonnegative integers $N<n$, the $N$th order Maclaurin series expansion for $f(x)$ can be seen as an underapproximation of $(1+x)^n$ that becomes increasingly more accurate as $N$ increases. The binomial approximation $(1+x)^n \approx 1+nx$ notably corresponds to the $N=1$ Maclaurin series expansion.
Since ${n \choose i}=\frac{n^{\underline{i}}}{i!} \leq \frac{n^i}{i!}$, we also have that $$\sum_{i=0}^N {n \choose i} x^i \leq \sum_{i=0}^N \frac{n^i}{i!} x^i = \sum_{i=0}^N \frac{(nx)^i}{i!},$$ which we recognize as the $N$th order Maclaurin series expansion for $e^{nx}$.
Putting everything together, we can write that for all nonnegative integers $N \leq n$, $$\sum_{i=0}^N {n \choose i} x^i \leq (1+x)^n \leq \sum_{i=0}^n \frac{(nx)^i}{i!} < e^{nx}, \tag{*}$$ where the lower bound has equality if and only if $N=n$ and the upper bound has equality if and only if $n \leq 1$. Increasing $N$ from $0$ to $n$ has the result of tightening the lower bound until it is an equality.
$(1+x)^{n}$ when x is very small: I subsitute $m = nx$ and then the starting expression is $(1+x)^{\frac{m}{x}}$ which is approximately $e^{m}$ so it is about $e^{nx}$.
This is very hard to use alone, merge it with the other methods
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