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Section 6.5: Applications of Exponential and Logarithmic Functions

Section 6.5: Applications of Exponential and Logarithmic Functions

College Algebra Homework
Section 6.5: Applications of Exponential and Logarithmic Functions, from College Algebra: Corrected Edition by Carl Stitz, Ph.D. and Jeff Zeager, Ph.D. is available under a Creative Commons Attribution- NonCommercial-ShareAlike 3.0 license. © 2013, Carl Stitz. UMGC has modified this work and it is available under the original license.

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6.5 Applications of Exponential and Logarithmic Functions 469

6.5 Applications of Exponential and Logarithmic Functions

As we mentioned in Section 6.1, exponential and logarithmic functions are used to model a wide variety of behaviors in the real world. In the examples that follow, note that while the applications are drawn from many different disciplines, the mathematics remains essentially the same. Due to the applied nature of the problems we will examine in this section, the calculator is often used to express our answers as decimal approximations.

6.5.1 Applications of Exponential Functions

Perhaps the most well-known application of exponential functions comes from the financial world. Suppose you have $100 to invest at your local bank and they are offering a whopping 5 % annual percentage interest rate. This means that after one year, the bank will pay you 5% of that $100, or $100(0.05) = $5 in interest, so you now have $105.1 This is in accordance with the formula for simple interest which you have undoubtedly run across at some point before.

Equation 6.1. Simple Interest The amount of interest I accrued at an annual rate r on an investmenta P after t years is

I = Prt

The amount A in the account after t years is given by

A = P + I = P + Prt = P (1 + rt)

aCalled the principal

Suppose, however, that six months into the year, you hear of a better deal at a rival bank.2

Naturally, you withdraw your money and try to invest it at the higher rate there. Since six months is one half of a year, that initial $100 yields $100(0.05)

( 1 2

) = $2.50 in interest. You take your

$102.50 off to the competitor and find out that those restrictions which may apply actually do apply to you, and you return to your bank which happily accepts your $102.50 for the remaining six months of the year. To your surprise and delight, at the end of the year your statement reads $105.06, not $105 as you had expected.3 Where did those extra six cents come from? For the first six months of the year, interest was earned on the original principal of $100, but for the second six months, interest was earned on $102.50, that is, you earned interest on your interest. This is the basic concept behind compound interest. In the previous discussion, we would say that the interest was compounded twice, or semiannually.4 If more money can be earned by earning interest on interest already earned, a natural question to ask is what happens if the interest is compounded more often, say 4 times a year, which is every three months, or ‘quarterly.’ In this case, the money is in the account for three months, or 14 of a year, at a time. After the first quarter, we have A = P (1 + rt) = $100

( 1 + 0.05 · 14

) = $101.25. We now invest the $101.25 for the next three

1How generous of them! 2Some restrictions may apply. 3Actually, the final balance should be $105.0625. 4Using this convention, simple interest after one year is the same as compounding the interest only once.

470 Exponential and Logarithmic Functions

months and find that at the end of the second quarter, we haveA = $101.25 ( 1 + 0.05 · 14

) ? $102.51.

Continuing in this manner, the balance at the end of the third quarter is $103.79, and, at last, we obtain $105.08. The extra two cents hardly seems worth it, but we see that we do in fact get more money the more often we compound. In order to develop a formula for this phenomenon, we need to do some abstract calculations. Suppose we wish to invest our principal P at an annual rate r and compound the interest n times per year. This means the money sits in the account 1n

th of a year

between compoundings. Let Ak denote the amount in the account after the k th compounding. Then

A1 = P ( 1 + r

( 1 n

)) which simplifies to A1 = P

( 1 + rn

) . After the second compounding, we use A1

as our new principal and get A2 = A1 ( 1 + rn

) = [ P ( 1 + rn

)] ( 1 + rn

) = P

( 1 + rn

)2 . Continuing in

this fashion, we get A3 = P ( 1 + rn

)3 , A4 = P

( 1 + rn

)4 , and so on, so that Ak = P

( 1 + rn

)k . Since

we compound the interest n times per year, after t years, we have nt compoundings. We have just derived the general formula for compound interest below.

Equation 6.2. Compounded Interest: If an initial principal P is invested at an annual rate r and the interest is compounded n times per year, the amount A in the account after t years is

A(t) = P (

1 + r

n

)nt If we take P = 100, r = 0.05, and n = 4, Equation 6.2 becomes A(t) = 100

( 1 + 0.054

)4t which

reduces to A(t) = 100(1.0125)4t. To check this new formula against our previous calculations, we

find A (

1 4

) = 100(1.0125)4(

1 4) = 101.25, A

( 1 2

) ? $102.51, A

( 3 4

) ? $103.79, and A(1) ? $105.08.

Example 6.5.1. Suppose $2000 is invested in an account which offers 7.125% compounded monthly.

1. Express the amount A in the account as a function of the term of the investment t in years.

2. How much is in the account after 5 years?

3. How long will it take for the initial investment to double?

4. Find and interpret the average rate of change5 of the amount in the account from the end of the fourth year to the end of the fifth year, and from the end of the thirty-fourth year to the end of the thirty-fifth year.

Solution.

1. Substituting P = 2000, r = 0.07125, and n = 12 (since interest is compounded monthly) into

Equation 6.2 yields A(t) = 2000 ( 1 + 0.0712512

)12t = 2000(1.0059375)12t.

2. Since t represents the length of the investment in years, we substitute t = 5 into A(t) to find A(5) = 2000(1.0059375)12(5) ? 2852.92. After 5 years, we have approximately $2852.92.

5See Definition 2.3 in Section 2.1.

6.5 Applications of Exponential and Logarithmic Functions 471

3. Our initial investment is $2000, so to find the time it takes this to double, we need to find t when A(t) = 4000. We get 2000(1.0059375)12t = 4000, or (1.0059375)12t = 2. Taking natural

logs as in Section 6.3, we get t = ln(2)12 ln(1.0059375) ? 9.75. Hence, it takes approximately 9 years 9 months for the investment to double.

4. To find the average rate of change of A from the end of the fourth year to the end of the fifth year, we compute A(5)?A(4)5?4 ? 195.63. Similarly, the average rate of change of A from the end of the thirty-fourth year to the end of the thirty-fifth year is A(35)?A(34)35?34 ? 1648.21. This means that the value of the investment is increasing at a rate of approximately $195.63 per year between the end of the fourth and fifth years, while that rate jumps to $1648.21 per year between the end of the thirty-fourth and thirty-fifth years. So, not only is it true that the longer you wait, the more money you have, but also the longer you wait, the faster the money increases.6

We have observed that the more times you compound the interest per year, the more money you will earn in a year. Let’s push this notion to the limit.7 Consider an investment of $1 invested at 100% interest for 1 year compounded n times a year. Equation 6.2 tells us that the amount of money in the account after 1 year is A =

( 1 + 1n

)n . Below is a table of values relating n and A.

n A

1 2

2 2.25

4 ? 2.4414 12 ? 2.6130

360 ? 2.7145 1000 ? 2.7169

10000 ? 2.7181 100000 ? 2.7182

As promised, the more compoundings per year, the more money there is in the account, but we also observe that the increase in money is greatly diminishing. We are witnessing a mathematical ‘tug of war’. While we are compounding more times per year, and hence getting interest on our interest more often, the amount of time between compoundings is getting smaller and smaller, so there is less time to build up additional interest. With Calculus, we can show8 that as n ? ?, A =

( 1 + 1n

)n ? e, where e is the natural base first presented in Section 6.1. Taking the number of compoundings per year to infinity results in what is called continuously compounded interest.

Theorem 6.8. If you invest $1 at 100% interest compounded continuously, then you will have $e at the end of one year.

6In fact, the rate of increase of the amount in the account is exponential as well. This is the quality that really defines exponential functions and we refer the reader to a course in Calculus.

7Once you’ve had a semester of Calculus, you’ll be able to fully appreciate this very lame pun. 8Or define, depending on your point of view.

472 Exponential and Logarithmic Functions

Using this definition of e and a little Calculus, we can take Equation 6.2 and produce a formula for continuously compounded interest.

Equation 6.3. Continuously Compounded Interest: If an initial principal P is invested at an annual rate r and the interest is compounded continuously, the amount A in the account after t years is

A(t) = Pert

If we take the scenario of Example 6.5.1 and compare monthly compounding to continuous com- pounding over 35 years, we find that monthly compounding yields A(35) = 2000(1.0059375)12(35)

which is about $24,035.28, whereas continuously compounding gives A(35) = 2000e0.07125(35) which is about $24,213.18 – a difference of less than 1%.

Equations 6.2 and 6.3 both use exponential functions to describe the growth of an investment. Curiously enough, the same principles which govern compound interest are also used to model short term growth of populations. In Biology, The Law of Uninhibited Growth states as its premise that the instantaneous rate at which a population increases at any time is directly proportional to the population at that time.9 In other words, the more organisms there are at a given moment, the faster they reproduce. Formulating the law as stated results in a differential equation, which requires Calculus to solve. Its solution is stated below.

Equation 6.4. Uninhibited Growth: If a population increases according to The Law of Uninhibited Growth, the number of organisms N at time t is given by the formula

N(t) = N0e kt,

where N(0) = N0 (read ‘N nought’) is the initial number of organisms and k > 0 is the constant of proportionality which satisfies the equation

(instantaneous rate of change of N(t) at time t) = kN(t)

It is worth taking some time to compare Equations 6.3 and 6.4. In Equation 6.3, we use P to denote the initial investment; in Equation 6.4, we use N0 to denote the initial population. In Equation 6.3, r denotes the annual interest rate, and so it shouldn’t be too surprising that the k in Equation 6.4 corresponds to a growth rate as well. While Equations 6.3 and 6.4 look entirely different, they both represent the same mathematical concept.

Example 6.5.2. In order to perform arthrosclerosis research, epithelial cells are harvested from discarded umbilical tissue and grown in the laboratory. A technician observes that a culture of twelve thousand cells grows to five million cells in one week. Assuming that the cells follow The Law of Uninhibited Growth, find a formula for the number of cells, N , in thousands, after t days.

Solution. We begin with N(t) = N0e kt. Since N is to give the number of cells in thousands,

we have N0 = 12, so N(t) = 12e kt. In order to complete the formula, we need to determine the

9The average rate of change of a function over an interval was first introduced in Section 2.1. Instantaneous rates of change are the business of Calculus, as is mentioned on Page 161.

6.5 Applications of Exponential and Logarithmic Functions 473

growth rate k. We know that after one week, the number of cells has grown to five million. Since t measures days and the units of N are in thousands, this translates mathematically to N(7) = 5000.

We get the equation 12e7k = 5000 which gives k = 17 ln (

1250 3

) . Hence, N(t) = 12e

t 7

ln( 12503 ). Of course, in practice, we would approximate k to some desired accuracy, say k ? 0.8618, which we can interpret as an 86.18% daily growth rate for the cells.

Whereas Equations 6.3 and 6.4 model the growth of quantities, we can use equations like them to describe the decline of quantities. One example we’ve seen already is Example 6.1.1 in Section 6.1. There, the value of a car declined from its purchase price of $25,000 to nothing at all. Another real world phenomenon which follows suit is radioactive decay. There are elements which are unstable and emit energy spontaneously. In doing so, the amount of the element itself diminishes. The assumption behind this model is that the rate of decay of an element at a particular time is directly proportional to the amount of the element present at that time. In other words, the more of the element there is, the faster the element decays. This is precisely the same kind of hypothesis which drives The Law of Uninhibited Growth, and as such, the equation governing radioactive decay is hauntingly similar to Equation 6.4 with the exception that the rate constant k is negative.

Equation 6.5. Radioactive Decay The amount of a radioactive element A at time t is given by the formula

A(t) = A0e kt,

where A(0) = A0 is the initial amount of the element and k < 0 is the constant of proportionality which satisfies the equation (instantaneous rate of change of A(t) at time t) = k A(t) Example 6.5.3. Iodine-131 is a commonly used radioactive isotope used to help detect how well the thyroid is functioning. Suppose the decay of Iodine-131 follows the model given in Equation 6.5, and that the half-life10 of Iodine-131 is approximately 8 days. If 5 grams of Iodine-131 is present initially, find a function which gives the amount of Iodine-131, A, in grams, t days later. Solution. Since we start with 5 grams initially, Equation 6.5 gives A(t) = 5ekt. Since the half-life is 8 days, it takes 8 days for half of the Iodine-131 to decay, leaving half of it behind. Hence, A(8) = 2.5 which means 5e8k = 2.5. Solving, we get k = 18 ln ( 1 2 ) = ? ln(2)8 ? ?0.08664, which we can interpret as a loss of material at a rate of 8.664% daily. Hence, A(t) = 5e? t ln(2) 8 ? 5e?0.08664t. We now turn our attention to some more mathematically sophisticated models. One such model is Newton’s Law of Cooling, which we first encountered in Example 6.1.2 of Section 6.1. In that example we had a cup of coffee cooling from 160?F to room temperature 70?F according to the formula T (t) = 70 + 90e?0.1t, where t was measured in minutes. In this situation, we know the physical limit of the temperature of the coffee is room temperature,11 and the differential equation 10The time it takes for half of the substance to decay. 11The Second Law of Thermodynamics states that heat can spontaneously flow from a hotter object to a colder one, but not the other way around. Thus, the coffee could not continue to release heat into the air so as to cool below room temperature. 474 Exponential and Logarithmic Functions which gives rise to our formula for T (t) takes this into account. Whereas the radioactive decay model had a rate of decay at time t directly proportional to the amount of the element which remained at time t, Newton’s Law of Cooling states that the rate of cooling of the coffee at a given time t is directly proportional to how much of a temperature gap exists between the coffee at time t and room temperature, not the temperature of the coffee itself. In other words, the coffee cools faster when it is first served, and as its temperature nears room temperature, the coffee cools ever more slowly. Of course, if we take an item from the refrigerator and let it sit out in the kitchen, the object’s temperature will rise to room temperature, and since the physics behind warming and cooling is the same, we combine both cases in the equation below. Equation 6.6. Newton’s Law of Cooling (Warming): The temperature T of an object at time t is given by the formula T (t) = Ta + (T0 ? Ta) e?kt, where T (0) = T0 is the initial temperature of the object, Ta is the ambient temperature a and k > 0 is the constant of proportionality which satisfies the equation

(instantaneous rate of change of T (t) at time t) = k (T (t)? Ta) aThat is, the temperature of the surroundings.

If we re-examine the situation in Example 6.1.2 with T0 = 160, Ta = 70, and k = 0.1, we get, according to Equation 6.6, T (t) = 70+(160?70)e?0.1t which reduces to the original formula given. The rate constant k = 0.1 indicates the coffee is cooling at a rate equal to 10% of the difference between the temperature of the coffee and its surroundings. Note in Equation 6.6 that the constant k is positive for both the cooling and warming scenarios. What determines if the function T (t) is increasing or decreasing is if T0 (the initial temperature of the object) is greater than Ta (the ambient temperature) or vice-versa, as we see in our next example.

Example 6.5.4. A 40?F roast is cooked in a 350?F oven. After 2 hours, the temperature of the roast is 125?F.

1. Assuming the temperature of the roast follows Newton’s Law of Warming, find a formula for the temperature of the roast T as a function of its time in the oven, t, in hours.

2. The roast is done when the internal temperature reaches 165?F. When will the roast be done?

Solution.

1. The initial temperature of the roast is 40?F, so T0 = 40. The environment in which we are placing the roast is the 350?F oven, so Ta = 350. Newton’s Law of Warming tells us T (t) = 350 + (40? 350)e?kt, or T (t) = 350? 310e?kt. To determine k, we use the fact that after 2 hours, the roast is 125?F, which means T (2) = 125. This gives rise to the equation 350? 310e?2k = 125 which yields k = ?12 ln

( 45 62

) ? 0.1602. The temperature function is

T (t) = 350? 310e t 2

ln( 4562) ? 350? 310e?0.1602t.

6.5 Applications of Exponential and Logarithmic Functions 475

2. To determine when the roast is done, we set T (t) = 165. This gives 350? 310e?0.1602t = 165 whose solution is t = ? 10.1602 ln

( 37 62

) ? 3.22. It takes roughly 3 hours and 15 minutes to cook

the roast completely.

If we had taken the time to graph y = T (t) in Example 6.5.4, we would have found the horizontal asymptote to be y = 350, which corresponds to the temperature of the oven. We can also arrive at this conclusion by applying a bit of ‘number sense’. As t ? ?, ?0.1602t ? very big (?) so that e?0.1602t ? very small (+). The larger the value of t, the smaller e?0.1602t becomes so that T (t) ? 350 ? very small (+), which indicates the graph of y = T (t) is approaching its horizontal asymptote y = 350 from below. Physically, this means the roast will eventually warm up to 350?F.12

The function T is sometimes called a limited growth model, since the function T remains bounded as t ? ?. If we apply the principles behind Newton’s Law of Cooling to a biological example, it says the growth rate of a population is directly proportional to how much room the population has to grow. In other words, the more room for expansion, the faster the growth rate. The logistic growth model combines The Law of Uninhibited Growth with limited growth and states that the rate of growth of a population varies jointly with the population itself as well as the room the population has to grow.

Equation 6.7. Logistic Growth: If a population behaves according to the assumptions of logistic growth, the number of organisms N at time t is given by the equation

N(t) = L

1 + Ce?kLt ,

where N(0) = N0 is the initial population, L is the limiting population, a C is a measure of how

much room there is to grow given by

C = L

N0 ? 1.

and k > 0 is the constant of proportionality which satisfies the equation

(instantaneous rate of change of N(t) at time t) = kN(t) (L?N(t)) aThat is, as t??, N(t)? L

The logistic function is used not only to model the growth of organisms, but is also often used to model the spread of disease and rumors.13

Example 6.5.5. The number of people N , in hundreds, at a local community college who have heard the rumor ‘Carl is afraid of Virginia Woolf’ can be modeled using the logistic equation

N(t) = 84

1 + 2799e?t ,

12at which point it would be more toast than roast. 13Which can be just as damaging as diseases.

476 Exponential and Logarithmic Functions

where t ? 0 is the number of days after April 1, 2009.

1. Find and interpret N(0).

2. Find and interpret the end behavior of N(t).

3. How long until 4200 people have heard the rumor?

4. Check your answers to 2 and 3 using your calculator.

Solution.

1. We find N(0) = 84 1+2799e0

= 842800 = 3

100 . Since N(t) measures the number of people who have heard the rumor in hundreds, N(0) corresponds to 3 people. Since t = 0 corresponds to April 1, 2009, we may conclude that on that day, 3 people have heard the rumor.14

2. We could simply note that N(t) is written in the form of Equation 6.7, and identify L = 84. However, to see why the answer is 84, we proceed analytically. Since the domain of N is restricted to t ? 0, the only end behavior of significance is t ? ?. As we’ve seen before,15 as t ? ?, we have 1997e?t ? 0+ and so N(t) ? 84

1+very small (+) ? 84. Hence, as t ? ?,

N(t)? 84. This means that as time goes by, the number of people who will have heard the rumor approaches 8400.

3. To find how long it takes until 4200 people have heard the rumor, we set N(t) = 42. Solving 84

1+2799e?t = 42 gives t = ln(2799) ? 7.937. It takes around 8 days until 4200 people have heard the rumor.

4. We graph y = N(x) using the calculator and see that the line y = 84 is the horizontal asymptote of the graph, confirming our answer to part 2, and the graph intersects the line y = 42 at x = ln(2799) ? 7.937, which confirms our answer to part 3.

y = f(x) = 84 1+2799e?x and y = f(x) =

84 1+2799e?x and

y = 84 y = 42

14Or, more likely, three people started the rumor. I’d wager Jeff, Jamie, and Jason started it. So much for telling your best friends something in confidence!

15See, for example, Example 6.1.2.

6.5 Applications of Exponential and Logarithmic Functions 477

If we take the time to analyze the graph of y = N(x) above, we can see graphically how logistic growth combines features of uninhibited and limited growth. The curve seems to rise steeply, then at some point, begins to level off. The point at which this happens is called an inflection point or is sometimes called the ‘point of diminishing returns’. At this point, even though the function is still increasing, the rate at which it does so begins to decline. It turns out the point of diminishing returns always occurs at half the limiting population. (In our case, when y = 42.) While these concepts are more precisely quantified using Calculus, below are two views of the graph of y = N(x), one on the interval [0, 8], the other on [8, 15]. The former looks strikingly like uninhibited growth; the latter like limited growth.

y = f(x) = 84 1+2799e?x for y = f(x) =

84 1+2799e?x for

0 ? x ? 8 8 ? x ? 16

6.5.2 Applications of Logarithms

Just as many physical phenomena can be modeled by exponential functions, the same is true of logarithmic functions. In Exercises 75, 76 and 77 of Section 6.1, we showed that logarithms are useful in measuring the intensities of earthquakes (the Richter scale), sound (decibels) and acids and bases (pH). We now present yet a different use of the a basic logarithm function, password strength.

Example 6.5.6. The information entropy H, in bits, of a randomly generated password consisting of L characters is given by H = L log2(N), where N is the number of possible symbols for each character in the password. In general, the higher the entropy, the stronger the password.

1. If a 7 character case-sensitive16 password is comprised of letters and numbers only, find the associated information entropy.

2. How many possible symbol options per character is required to produce a 7 character password with an information entropy of 50 bits?

Solution.

1. There are 26 letters in the alphabet, 52 if upper and lower case letters are counted as different. There are 10 digits (0 through 9) for a total of N = 62 symbols. Since the password is to be

7 characters long, L = 7. Thus, H = 7 log2(62) = 7 ln(62)

ln(2) ? 41.68. 16That is, upper and lower case letters are treated as different characters.

478 Exponential and Logarithmic Functions

2. We have L = 7 and H = 50 and we need to find N . Solving the equation 50 = 7 log2(N) gives N = 250/7 ? 141.323, so we would need 142 different symbols to choose from.17

Chemical systems known as buffer solutions have the ability to adjust to small changes in acidity to maintain a range of pH values. Buffer solutions have a wide variety of applications from maintaining a healthy fish tank to regulating the pH levels in blood. Our next example shows how the pH in a buffer solution is a little more complicated than the pH we first encountered in Exercise 77 in Section 6.1.

Example 6.5.7. Blood is a buffer solution. When carbon dioxide is absorbed into the bloodstream it produces carbonic acid and lowers the pH. The body compensates by producing bicarbonate, a weak base to partially neutralize the acid. The equation18 which models blood pH in this situation is pH = 6.1+log

( 800 x

) , where x is the partial pressure of carbon dioxide in arterial blood, measured

in torr. Find the partial pressure of carbon dioxide in arterial blood if the pH is 7.4.

Solution. We set pH = 7.4 and get 7.4 = 6.1 + log (

800 x

) , or log

( 800 x

) = 1.3. Solving, we find

x = 800 101.3

? 40.09. Hence, the partial pressure of carbon dioxide in the blood is about 40 torr.

Another place logarithms are used is in data analysis. Suppose, for instance, we wish to model the spread of influenza A (H1N1), the so-called ‘Swine Flu’. Below is data taken from the World Health Organization (WHO) where t represents the number of days since April 28, 2009, and N represents the number of confirmed cases of H1N1 virus worldwide.

t 1 2 3 4 5 6 7 8 9 10 11 12 13

N 148 257 367 658 898 1085 1490 1893 2371 2500 3440 4379 4694

t 14 15 16 17 18 19 20

N 5251 5728 6497 7520 8451 8480 8829

Making a scatter plot of the data treating t as the independent variable and N as the dependent variable gives

Which models are suggested by the shape of the data? Thinking back Section 2.5, we try a Quadratic Regression, with pretty good results.

17Since there are only 94 distinct ASCII keyboard characters, to achieve this strength, the number of characters in the password should be increased.

18Derived from the Henderson-Hasselbalch Equation. See Exercise 43 in Section 6.2. Hasselbalch himself was studying carbon dioxide dissolving in blood – a process called metabolic acidosis.

6.5 Applications of Exponential and Logarithmic Functions 479

However, is there any scientific reason for the data to be quadratic? Are there other models which fit the data equally well, or better? Scientists often use logarithms in an attempt to ‘linearize’ data sets – in other words, transform the data sets to produce ones which result in straight lines. To see how this could work, suppose we guessed the relationship between N and t was some kind of power function, not necessarily quadratic, say N = BtA. To try to determine the A and B, we can take the natural log of both sides and get ln(N) = ln

( BtA

) . Using properties of logs to expand the right

hand side of this equation, we get ln(N) = A ln(t)+ ln(B). If we set X = ln(t) and Y = ln(N), this equation becomes Y = AX + ln(B). In other words, we have a line with slope A and Y -intercept ln(B). So, instead of plotting N versus t, we plot ln(N) versus ln(t).

ln(t) 0 0.693 1.099 1.386 1.609 1.792 1.946 2.079 2.197 2.302 2.398 2.485 2.565

ln(N) 4.997 5.549 5.905 6.489 6.800 6.989 7.306 7.546 7.771 7.824 8.143 8.385 8.454

ln(t) 2.639 2.708 2.773 2.833 2.890 2.944 2.996

ln(N) 8.566 8.653 8.779 8.925 9.042 9.045 9.086

Running a linear regression on the data gives

The slope of the regression line is a ? 1.512 which corresponds to our exponent A. The y-intercept b ? 4.513 corresponds to ln(B), so that B ? 91.201. Hence, we get the model N = 91.201t1.512, something from Section 5.3. Of course, the calculator has a built-in ‘Power Regression’ feature. If we apply this to our original data set, we get the same model we arrived at before.19

19Critics may question why the authors of the book have chosen to even discuss linearization of data when the calculator has a Power Regression built-in and ready to go. Our response: talk to your …

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1. Professional & Expert Writers: Homework Free only hires the best. Our writers are specially selected and recruited, after which they undergo further training to perfect their skills for specialization purposes. Moreover, our writers are holders of masters and Ph.D. degrees. They have impressive academic records, besides being native English speakers.

2. Top Quality Papers: Our customers are always guaranteed of papers that exceed their expectations. All our writers have +5 years of experience. This implies that all papers are written by individuals who are experts in their fields. In addition, the quality team reviews all the papers before sending them to the customers.

3. Plagiarism-Free Papers: All papers provided by Homework Free are written from scratch. Appropriate referencing and citation of key information are followed. Plagiarism checkers are used by the Quality assurance team and our editors just to double-check that there are no instances of plagiarism.

4. Timely Delivery: Time wasted is equivalent to a failed dedication and commitment. Homework Free is known for timely delivery of any pending customer orders. Customers are well informed of the progress of their papers to ensure they keep track of what the writer is providing before the final draft is sent for grading.

5. Affordable Prices: Our prices are fairly structured to fit in all groups. Any customer willing to place their assignments with us can do so at very affordable prices. In addition, our customers enjoy regular discounts and bonuses.

6. 24/7 Customer Support: At Homework Free, we have put in place a team of experts who answer to all customer inquiries promptly. The best part is the ever-availability of the team. Customers can make inquiries anytime.

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Your one stop solution for all your online studies solutions. Hire some of the world's highly rated writers to handle your writing assignments. And guess what, you don't have to break the bank.

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