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Mathematics LibreTexts

4.3E: Exercises

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    Exercise \(\PageIndex{1}\)

    For each of the following sequences, if the divergence test applies, either state that \(\displaystyle \lim_{n→∞}a_n\) does not exist or find \(\displaystyle \lim_{n→∞}a_n\). If the divergence test does not apply, state why.

    1) \(\displaystyle a_n=\frac{n}{n+2}\)

    2) \(\displaystyle a_n=\frac{n}{5n^2−3}\)


    Solution: \(\displaystyle \lim_{n→∞}a_n=0\). Divergence test does not apply.

    3) \(\displaystyle a_n=\frac{n}{\sqrt{3n^2+2n+1}}\)

    4) \(\displaystyle a_n=\frac{(2n+1)(n−1)}{(n+1)^2}\)


    Solution: \(\displaystyle \lim_{n→∞}a_n=2\). Series diverges.

    5) \(\displaystyle a_n=\frac{(2n+1)^{2n}}{(3n2+1)^n}\)

    6) \(\displaystyle a_n=\frac{2^n}{3^{n/2}}\)


    Solution: \(\displaystyle \lim_{n→∞}a_n=∞\) (does not exist). Series diverges.

    7) \(\displaystyle a_n=\frac{2^n+3^n}{10^{n/2}}\)

    8) \(\displaystyle a_n=e^{−2/n}\)


    Solution: \(\displaystyle \lim_{n→∞}a_n=1.\) Series diverges.

    9) \(\displaystyle a_n=cosn\)

    10) \(\displaystyle a_n=tann\)


    Solution: \(\displaystyle \lim_{n→∞}a_n\) does not exist. Series diverges

    11) \(\displaystyle a_n=\frac{1−cos^2(1/n)}{sin^2(2/n)}\)

    12) \(\displaystyle a_n=(1−\frac{1}{n})^{2n})\)


    Solution: \(\displaystyle \lim_{n→∞}a_n=1/e^2.\) Series diverges

    13) \(\displaystyle a_n=\frac{lnn}{n}\)

    14) \(\displaystyle a_n=\frac{(lnn)^2}{\sqrt{n}}\)


    Solution: \(\displaystyle \lim_{n→∞}a_n=0.\) Divergence test does not apply.

    Exercise \(\PageIndex{2}\)

    State whether the given \(\displaystyle p\)-series converges.

    1) \(\displaystyle \sum_{n=1}^∞\frac{1}{\sqrt{n}}\)

    2) \(\displaystyle \sum_{n=1}^∞\frac{1}{n\sqrt{n}}\)


    Solution: Series converges, \(\displaystyle p>1\)

    3) \(\displaystyle \sum_{n=1}^∞\frac{1}{\sqrt[3]{n^2}}\)

    4) \(\displaystyle \sum_{n=1}^∞\frac{1}{\sqrt[3]{n^4}}\)


    Solution: Series converges, \(\displaystyle p=4/3>1.\)

    5) \(\displaystyle \sum_{n=1}^∞\frac{n^e}{n^π}\)

    6) \(\displaystyle \sum_{n=1}^∞\frac{n^π}{n^{2e}}\)


    Solution: Series converges, \(\displaystyle p=2e−π>1.\)

    Exercise \(\PageIndex{3}\)

    Use the integral test to determine whether the following sums converge.

    1) \(\displaystyle \sum_{n=1}^∞\frac{1}{\sqrt{n+5}}\)

    2) \(\displaystyle \sum_{n=1}^∞\frac{1}{\sqrt[3]{n+5}}\)


    Solution: Series diverges by comparison with \(\displaystyle ∫^∞_1\frac{dx}{(x+5)^{1/3}}\).

    3) \(\displaystyle \sum_{n=2}^∞\frac{1}{nlnn}\)

    4) \(\displaystyle \sum_{n=1}^∞\frac{n}{1+n^2}\)


    Solution: Series diverges by comparison with \(\displaystyle ∫^∞_1\frac{x}{1+x^2}dx.\)

    5) \(\displaystyle \sum_{n=1}^∞\frac{e^n}{1+e^{2n}}\)

    6) \(\displaystyle \sum_{n=1}^∞\frac{2n}{1+n^4}\)


    Solution: Series converges by comparison with \(\displaystyle ∫^∞_1\frac{2x}{1+x^4}dx.\)

    7) \(\displaystyle \sum_{n=2}^∞\frac{1}{nln^2n}\)

    Exercise \(\PageIndex{4}\)

    Express the following sums as \(\displaystyle p\)-series and determine whether each converges.

    1) \(\displaystyle \sum_{n=1}^∞2^{−lnn}\) (Hint: \(\displaystyle 2^{−lnn}=1/n^{ln2}.)\)


    Solution: \(\displaystyle 2^{−lnn}=1/n^{ln2}.\) Since \(\displaystyle ln2<1\), diverges by \(\displaystyle p\)-series.

    2) \(\displaystyle \sum_{n=1}^∞3^{−lnn}\) (Hint: \(\displaystyle 3^{−lnn}=1/n^{ln3}.)\)

    3) \(\displaystyle \sum_{n=1}^n2^{−2lnn}\)


    Solution: \(\displaystyle 2^{−2lnn}=1/n^{2ln2}.\) Since \(\displaystyle 2ln2−1<1\), diverges by \(\displaystyle p\)-series.

    4) \(\displaystyle \sum_{n=1}^∞n3^{−2lnn}\)

    Exercise \(\PageIndex{5}\)

    Use the estimate \(\displaystyle R_N≤∫^∞_Nf(t)dt\) to find a bound for the remainder \(\displaystyle R_N=\sum_{n=1}^∞a_n−\sum_{n=1}^Na_n\) where \(\displaystyle a_n=f(n).\)

    1) \(\displaystyle \sum_{n=1}^{1000}\frac{1}{n^2}\)


    Solution: \(\displaystyle R_{1000}≤∫^∞_{1000}\frac{dt}{t^2}=−\frac{1}{t}∣^∞_{1000}=0.001\)

    2) \(\displaystyle \sum_{n=1}^{1000}\frac{1}{n^3}\)

    3) \(\displaystyle \sum_{n=1}^{1000}\frac{1}{1+n^2}\)


    Solution: \(\displaystyle R_{1000}≤∫^∞_{1000}\frac{dt}{1+t^2}=tan^{−1}∞−tan^{−1}(1000)=π/2−tan^{−1}(1000)≈0.000999\)

    4) \(\displaystyle \sum_{n=1}^{100}n/2^n\)

    Exercise \(\PageIndex{6}\)

    [T] Find the minimum value of \(\displaystyle N\) such that the remainder estimate \(\displaystyle ∫^∞_{N+1}f<R_N<∫^∞_Nf\) guarantees that \(\displaystyle \sum_{n=1}^Na_n\) estimates \(\displaystyle \sum_{n=1}^∞a_n,\) accurate to within the given error.

    1) \(\displaystyle a_n=\frac{1}{n^2},\) error \(\displaystyle <10^{−4}\)


    Solution: \(\displaystyle R_N<∫^∞_N\frac{dx}{x^2}=1/N,N>10^4\)

    2) \(\displaystyle a_n=\frac{1}{n^{1.1}},\) error \(\displaystyle <10^{−4}\)

    3) \(\displaystyle a_n=\frac{1}{n^{1.01}},\) error \(\displaystyle <10^{−4}\)


    Solution:\(\displaystyle R_N<∫^∞_N\frac{dx}{x^{1.01}}=100N^{−0.01},N>10^{600}\)

    4) \(\displaystyle a_n=\frac{1}{nln^2n},\) error \(\displaystyle <10^{−3}\)

    5) \(\displaystyle a_n=\frac{1}{1+n^2},\) error \(\displaystyle <10^{−3}\)


    Solution: \(\displaystyle R_N<∫^∞_N\frac{dx}{1+x^2}=π/2−tan^{−1}(N),N>tan(π/2−10^{−3})≈1000\)

    Exercise \(\PageIndex{7}\)

    In the following exercises, find a value of \(\displaystyle N\) such that \(\displaystyle R_N\) is smaller than the desired error. Compute the corresponding sum \(\displaystyle \sum_{n=1}^Na_n\) and compare it to the given estimate of the infinite series.

    1) \(\displaystyle a_n=\frac{1}{n^{11}},\) error \(\displaystyle <10^{−4}, \sum_{n=1}^∞\frac{1}{n^{11}}=1.000494…\)

    2) \(\displaystyle a_n=\frac{1}{e^n},\) error \(\displaystyle <10^{−5}, \sum_{n=1}^∞\frac{1}{e^n}=\frac{1}{e−1}=0.581976…\)


    Solution: \(\displaystyle R_N<∫^∞_N\frac{dx}{e^x}=e^{−N},N>5ln(10),\) okay if \(\displaystyle N=12;\sum_{n=1}^{12}e^{−n}=0.581973....\) Estimate agrees with \(\displaystyle 1/(e−1)\) to five decimal places.

    3) \(\displaystyle a_n=\frac{1}{e^{n^2}},\) error \(\displaystyle <10^{−5}. \sum_{n=1}^∞n/e^{n^2}=0.40488139857…\)

    4) \(\displaystyle a_n=1/n^4,\) error \(\displaystyle <10^{−4}, \sum_{n=1}^∞1/n^4=π^4/90=1.08232...\)


    Solution: \(\displaystyle R_N<∫^∞_Ndx/x^4=4/N^3,N>(4.10^4)^{1/3},\) okay if \(\displaystyle N=35\); \(\displaystyle \sum_{n=1}^{35}1/n^4=1.08231….\) Estimate agrees with the sum to four decimal places.

    5) \(\displaystyle a_n=1/n^6\), error \(\displaystyle <10^{−6}, \sum_{n=1}^∞1/n^4=π^6/945=1.01734306...,\)

    6) Find the limit as \(\displaystyle n→∞\) of \(\displaystyle \frac{1}{n}+\frac{1}{n+1}+⋯+\frac{1}{2n}\). (Hint: Compare to \(\displaystyle ∫^{2n}_n\frac{1}{t}dt.\))


    Solution: \(\displaystyle ln(2)\)

    7) Find the limit as \(\displaystyle n→∞\) of \(\displaystyle \frac{1}{n}+\frac{1}{n+1}+⋯+\frac{1}{3n}\)

    Exercise \(\PageIndex{8}\)

    The next few exercises are intended to give a sense of applications in which partial sums of the harmonic series arise.

    1) In certain applications of probability, such as the so-called Watterson estimator for predicting mutation rates in population genetics, it is important to have an accurate estimate of the number \(\displaystyle H_k=(1+\frac{1}{2}+\frac{1}{3}+⋯+\frac{1}{k})\). Recall that \(\displaystyle T_k=H_k−lnk\) is decreasing. Compute \(\displaystyle T=\lim_{k→∞}T_k\) to four decimal places. (Hint: \(\displaystyle \frac{1}{k+1}<∫^{k+1}_k\frac{1}{x}dx\).)


    Solution: \(\displaystyle T=0.5772...\)

    2) [T] Complete sampling with replacement, sometimes called the coupon collector’s problem, is phrased as follows: Suppose you have \(\displaystyle N\) unique items in a bin. At each step, an item is chosen at random, identified, and put back in the bin. The problem asks what is the expected number of steps \(\displaystyle E(N)\) that it takes to draw each unique item at least once. It turns out that \(\displaystyle E(N)=N.H_N=N(1+\frac{1}{2}+\frac{1}{3}+⋯+\frac{1}{N})\). Find \(\displaystyle E(N)\) for \(\displaystyle N=10,20,\) and \(\displaystyle 50\).

    3) [T] The simplest way to shuffle cards is to take the top card and insert it at a random place in the deck, called top random insertion, and then repeat. We will consider a deck to be randomly shuffled once enough top random insertions have been made that the card originally at the bottom has reached the top and then been randomly inserted. If the deck has \(\displaystyle n\) cards, then the probability that the insertion will be below the card initially at the bottom (call this card \(\displaystyle B\)) is \(\displaystyle 1/n\). Thus the expected number of top random insertions before \(\displaystyle B\) is no longer at the bottom is \(\displaystyle n\). Once one card is below \(\displaystyle B\), there are two places below \(\displaystyle B\) and the probability that a randomly inserted card will fall below \(\displaystyle B\) is \(\displaystyle 2/n\). The expected number of top random insertions before this happens is \(\displaystyle n/2\). The two cards below \(\displaystyle B\) are now in random order. Continuing this way, find a formula for the expected number of top random insertions needed to consider the deck to be randomly shuffled.


    Solution: The expected number of random insertions to get \(\displaystyle B\) to the top is \(\displaystyle n+n/2+n/3+⋯+n/(n−1).\) Then one more insertion puts \(\displaystyle B\) back in at random. Thus, the expected number of shuffles to randomize the deck is \(\displaystyle n(1+1/2+⋯+1/n).\)

    4) Suppose a scooter can travel \(\displaystyle 100\) km on a full tank of fuel. Assuming that fuel can be transferred from one scooter to another but can only be carried in the tank, present a procedure that will enable one of the scooters to travel \(\displaystyle 100H_N\) km, where \(\displaystyle H_N=1+1/2+⋯+1/N.\)

    5) Show that for the remainder estimate to apply on \(\displaystyle [N,∞)\) it is sufficient that \(\displaystyle f(x)\) be decreasing on \(\displaystyle [N,∞)\), but \(\displaystyle f\) need not be decreasing on \(\displaystyle [1,∞).\)


    Solution: Set \(\displaystyle b_n=a_{n+N}\) and \(\displaystyle g(t)=f(t+N)\) such that \(\displaystyle f\) is decreasing on \(\displaystyle [t,∞).\)

    6) [T] Use the remainder estimate and integration by parts to approximate \(\displaystyle \sum_{n=1}^∞n/e^n\) within an error smaller than \(\displaystyle 0.0001.\)

    7) Does \(\displaystyle \sum_{n=2}^∞\frac{1}{n(lnn)^p}\) converge if \(\displaystyle p\) is large enough? If so, for which \(\displaystyle p\)?


    Solution: The series converges for \(\displaystyle p>1\) by integral test using change of variable.

    8) [T] Suppose a computer can sum one million terms per second of the divergent series \(\displaystyle \sum_{n=1}^N\frac{1}{n}\). Use the integral test to approximate how many seconds it will take to add up enough terms for the partial sum to exceed \(\displaystyle 100\).

    9) [T] A fast computer can sum one million terms per second of the divergent series \(\displaystyle \sum_{n=2}^N\frac{1}{nlnn}\). Use the integral test to approximate how many seconds it will take to add up enough terms for the partial sum to exceed \(\displaystyle 100.\)


    Solution: \(\displaystyle N=e^{e^{100}}≈e^{10^{43}}\) terms are needed.

    4.3E: Exercises is shared under a CC BY-NC-SA license and was authored, remixed, and/or curated by LibreTexts.

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