Chapter 11: Optimal Portfolio Choice and the Capital Asset Pricing Model

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Chapter 11: Optmal Portolo Choce and the CAPM-1 Chapter 11: Optmal Portolo Choce and the Captal Asset Prcng Model Goal: determne the relatonshp between rsk and return key to ths process: examne how nvestors buld ecent portolos Note: The chapter ncludes a lot o math and there are several places where the authors skp steps. For all o the places where I thought the skpped steps made ollowng the development dcult, I ve added the mssng steps. See Chapter 11 supplement or these addtonal steps. I. The o a Portolo Note: MV x (11.1) MV j j R P xr (11.) R x ER E P (11.3) where: x = percent o portolo nvested n asset MV = market value o asset = number o shares o outstandng prce per share o MV = total value o all securtes n the portolo j j R P = realzed return on portolo R = realzed return on asset E[R P ] = expected return on portolo E[R ] = expected return on asset II. The Volatlty o a Two-Stock Portolo A. Basc dea 1) by combnng stocks, reduce rsk through dverscaton ) need to measure amount o common rsk n stocks n our portolo

Chapter 11: Optmal Portolo Choce and the CAPM- B. Covarance and Correlaton 1 1. Covarance: Cov R R j R, t R R j, t R j, (11.5) T 1 t where: T = number o hstorcal returns Notes: 1) ) 3) Covarance wll be larger : - -. Correlaton: CorrR R Notes: R, R j R SDR Cov, j (11.6) SD 1) Same sgn as covarance so same nterpretaton ) j

Chapter 11: Optmal Portolo Choce and the CAPM-3 3) Correlaton s always between +1 and -1 4) Corr = +1: always move exactly together Corr = -1: always move n exactly opposte drectons C. Portolo Varance and Volatlty R x VarR x VarR x x CovR R Var p (11.8) 1 1 1 1, R x SDR x SDR x x CorrR R SDR SDR Var p (11.9) 1 1 1 1, Ex. Use the ollowng returns on JPMorganChase (JPM) and General Dynamcs (GD) to estmate the covarance and correlaton between JPM and GD and the expected return and volatlty o returns on a portolo o $3, nvested n JPM and $1, nvested n GD. Return on: Year JPM GD 1-1% 36% 7% -34% 3 14% 37% 4-3% 9% 5 3% 18% 6 19% 18% 1

Chapter 11: Optmal Portolo Choce and the CAPM-4 R x1 VarR1 xvarr x1xcovr1, R R x SDR x SDR x x CorrR R SDR SDR Var p (11.8) Var p (11.9) 1 1 1 1, 1 11.8: Var(R P ) = 11.9: Var(R P ) = SD(R p ) = Notes: 1)

Chapter 11: Optmal Portolo Choce and the CAPM-5 ) can acheve wde range o rsk-return combnatons by varyng portolo weghts X(JPM) SD(Rp) E(Rp) 1. 16.3 6.5.9 14.56 7.5.8 13.37 8..7 1.91 8.75.6 13.6 9.5.5 14.35 1.5.4 16.4 11..3 18.17 11.75..59 1.5.1 3.1 13.5. 5.98 14. 3) the ollowng graph shows the volatlty and expected return o varous portolos Graph #1: Volatlty and or Portolos o JPM and GD 16 14 1 1 8 6 4 75% JPM 1% JPM 1% GD 5 1 15 5 3 Volatlty II. Rsk Verses Return: Choosng an Ecent Portolo A. Ecent portolos wth two stocks Ecent portolo:

Chapter 11: Optmal Portolo Choce and the CAPM-6 Graph #: Ecent Portolos o JPM and GD 16 14 1 1 8 6 4 Ecent Portolos 1% JPM 1% GD 5 1 15 5 3 Volatlty B. The Eect o Correlaton Graph #3: The Eect o Correlaton 16 14 1 1 8 6 4 1% GD 1% JPM 5 1 15 5 3 Volatlty Corr= -.8 Corr= -.14 Corr= +.6

Chapter 11: Optmal Portolo Choce and the CAPM-7 C. Short Sales I correlaton: +1: portolos le on a straght lne between ponts -1: portolos le on a straght lne that bounces o vertcal axs (rsk-ree) 1. Short sale: sell stock don t own and buy t back later Notes: 1) borrow shares rom broker (who borrows them rom someone who owns the shares) ) sell shares n open market and receve cash rom sale 3) make up any dvdends pad on stock whle have short poston 4) can close out short poston at any tme by purchasng the shares and returnng them to broker 5) broker can ask or shares at any tme to close out short poston must buy at current market prce at that tme. 6) untl return stock to broker, have short poston (negatve nvestment) n stock 7) portolo weghts stll add up to 1% even when have short poston Ex. Assume short-sell $1, o JPM and buy $5, o GD. What s volatlty and expected return on portolo E(R JPM ) = 6.5%, E(R GD ) = 14.%; SD(R JPM ) = 16.3%, SD(R GD ) = 5.98%; and Corr (R JPM, R GD ) =.138? Note: total nvestment = x GD = x JPM = E(R P ) = Notes: 1) Expected dollar gan/loss on JPM = ) Expect dollar gan/loss on GD = 3) Net expected gan =

Chapter 11: Optmal Portolo Choce and the CAPM-8 4) Expected return = R x SDR x SDR x x CorrR R SDR SDR Var p (11.9) 1 1 1 1, 1 Var(R P ) = SD(R P ) = Q: Why s rsk hgher than smply nvestng $4, n GD (wth a standard devaton o returns o 5.98%)? 1) short-sellng JPM creates rsk ) gan/loss on a $5, nvestment n GD s greater than the gan/loss on a $4, nvestment n GD 3) loss o dverscaton: Correlaton between a short and long poston n JPM s -1. Correlaton between short JPM and GD wll be +.138 less dverscaton than between long poston n JPM and GD w/ correlaton o -.138. Impact on graphs curve extends beyond endponts (o 1% n one stock or the other). Graph #4: Portolos o JPM and GD wth Short Sellng 35 3 5 15 1 5-5 -1-15 1% GD 1% JPM X(jpm) = -.5 SS GD, Buy JPM 4 6 8 1 Volatlty SS JPM, Buy GD

Chapter 11: Optmal Portolo Choce and the CAPM-9 Ecent ronter: portolos wth hghest expected return or gven volatlty Graph #5: Ecent Fronter wth JPM and GD and Short Sellng 35 3 5 15 1 5-5 -1-15 4 6 8 1 Volatlty D. Rsk Versus Return: Many Stocks 1. Three stock portolos: long postons only Q: How does addng Sony mpact our portolo? E(R JPM ) = 6.5%, SD(R JPM ) = 16.3%; E(R GD ) = 17%, SD(R GD ) = 6%; E(R Sony ) = 1%, SD(R Sony ) = 3%; Corr(R JPM,R GD ) = -.138; Corr(R Sony, R GD ) =.398; Corr(R Sony, R JPM ) =.4 Graph #6: Portolos o JPM, GD, and SNE 5 15 1 5 Long n all 3 JPM GD SNE 1 3 4 Note: Get area rather than curve when add 3 rd asset

Chapter 11: Optmal Portolo Choce and the CAPM-1. Three Stock Portolos: long and short postons Q: What allow short postons n any o the three stocks? Graph #7: Porolos o 3 stocks (long and short) 35 3 5 15 1 5 Note: possble to acheve any pont nsde the curves w/ 3 or more All 3 JPM GD SNE JPMnGD -5 1 3 4 5 6-1 Volatlty (SD) Graph #8: Ecent ronter wth 3 stocks (long and short) 35 3 5 15 1 5 All 3 JPM GD SNE -5 1 3 4 5 6-1 Volatlty (SD) 3. More than 3 stocks (long and short): Note: addng necent stock (lower expected return and hgher volatlty) may mprove ecent ronter!

Chapter 11: Optmal Portolo Choce and the CAPM-11 III. Rsk-Free Securty A. Ways to change rsk 1. Ways to reduce rsk 1) ). Ways to ncrease rsk 1) ) B. Portolo Rsk and Return Let: x = percent o portolo nvested n rsky portolo P 1-x = percent o portolo nvested n rsk-ree securty 1. ER 1 xr xer r x ER r (11.15) xp P P expected return equals rsk-ree rate plus racton o rsk premum on P based on amount we nvest n P. SD R 1 x Varr x VarR 1 xxcovr, R xp (11.16a) Note: Var(r ) and Cov(r,R p ) both equal! P SD(R xp ) = xsd(r P ) (11.16b) volatlty equals racton o volatlty o rsky portolo 3. Note: ncrease x, ncrease rsk and return proportonally combnatons o rsky portolo P and the rsk-ree securty le on a straght lne between the rsk-ree securty and P. P

Chapter 11: Optmal Portolo Choce and the CAPM-1 Ex. Assume that you nvest $8, n P (75% JPM and 5% n GD) and $3, n Treasures earnng a 4% return. What volatlty and return can you expect? Note: rom earler example: E(R p ) = 8.375%, and SD(R P ) = 13.4% x = $ nvested n JPM and GD: SD(R.P ) = E(R.P ) = Ex. Assume you nvest $36, n P and $4, n Treasures x = $ nvested n JPM and GD: SD(R.9P ) = E(R.9P ) = Graph #9: Combnng P wth rsk-ree securtes 18 16 14 1 1 8 6 4.9P.P P 1 3 4 5 Volatlty

Chapter 11: Optmal Portolo Choce and the CAPM-13 C. Short-sellng the Rsk-ree Securty Remnder: x = percent o portolo nvested n rsky portolo P 1-x = percent o portolo nvested n rsk-ree securty I x > 1 (x > 1%), 1-x < short-sellng rsk-ree securty 11.16b: SD(R xp ) = xsd(r P ) 11:15: ER 1 xr xer r x ER xp P Ex. Assume that n addton to your $4,, you short-sell $1, o Treasures that earn a rsk-ree rate o 4% and nvest $5, n P. What volatlty and return can you expect? Note: E(R P ) = 8.375%, SD(R P ) = 13.4% x = P r $ nvested n JPM and GD: SD(R 1.5P ) = E(R 1.5P ) =

Chapter 11: Optmal Portolo Choce and the CAPM-14 Graph #1: Combnng P wth rsk-ree securtes 18 16 14 1 1 8 6 4 1.5P P Sharpe=.3356 1 3 4 5 Volatlty Q: Can we do better than P? Goal D. Identyng the Optmal Rsky Portolo 1. E RP r Sharpe Rato (11.17) SD RP slope o lne that create when combne rsk-ree nvestment wth rsky P Ex. Sharpe rato when nvest $3, n JPM and $1, n GD. Sharpe Rato = Q: What happens to the Sharpe Rato choose a pont just above P along curve? Q: What s best pont on the curve?

Chapter 11: Optmal Portolo Choce and the CAPM-15. Optmal Rsky Portolo Key Ex. Hghest Sharpe rato when x JPM =.447, x GD = 1.447 =.5578 Note: I solved or x w/ hghest Sharp rato usng Solver n Excel Note: E(R JPM ) = 6.5%, E(R GD ) = 14%; SD(R JPM ) = 16.3%, SD(R GD ) = 6%; and Corr (R JPM, R GD ) =.138 E(R T ) = 1.646% =.447(6.5) +.5578(14) SD.447 16.3.5578 6.447.5578.13816.36 15.18% R T Sharpe Rato (Tangent Portolo) = Graph #11: Tangent Portolo 5 Ecent Fronter w/ Rsky and Rsk-Free 15 1 Xjpm=.447 Ecent Fronter w/ Rsky Tangent Portolo = Ecent Portolo 5 Sharpe=.4378 1 3 4 5 Volatlty

Chapter 11: Optmal Portolo Choce and the CAPM-16 Implcatons: 1) ) Graph #1: Tangent Portolo 5 15 1 5 Tangent Portolo Sharpe=.4378 1 3 4 5 Volatlty IV. The Ecent Portolo and Requred Returns A. Basc Idea Q: Assume I own some portolo P. Can I ncrease my portolo s Sharpe rato by shortsellng rsk-ree securtes and nvestng the proceeds n asset? A: I can the extra return per unt o extra rsk exceeds the Sharpe rato o my current portolo 1. Addtonal return short-sell rsk-ree securtes and nvest proceeds n Use Eq. 11.3: E R x ER P

Chapter 11: Optmal Portolo Choce and the CAPM-17. Addtonal rsk short-sell rsk-ree securtes and nvest proceeds n Use Eq. 11.13 (rom text):,, 3. Addtonal return per rsk = 4. Improvng portolo,, I mprove my portolo by short-sellng rsk-ree securtes and nvestng the proceeds n :, Or (equvalently): E R r SDR CorrR, R P E R SD P R r P (11.18) B. Impact o people mprovng ther portolos 1. As I (and lkely other people) start to buy asset, two thngs happen 1) ). Opposte happens or any asset or whch 11.15 has < rather than > C. Equlbrum 1) people wll trade untl 11.18 becomes an equalty ) when 11.18 s an equalty, the portolo s ecent and can t be mproved by buyng or sellng any asset E R r SDR CorrR, R E E RE SD R r E (11.A)

Chapter 11: Optmal Portolo Choce and the CAPM-18 3) I rearrange 11.A and dene a new term, the ollowng must hold n equlbrum E R r r ER E E r (11.1) where: E SD R CorrR, RE SDRE (11.B) r = requred return on = expected return on necessary to compensate or the rsk the assets adds to the ecent portolo V. The Captal Asset Prcng Model A. Assumptons (and where 1 st made smlar assumptons) 1. Investors can buy and sell all securtes at compettve market prces (Ch 3). Investors pay no taxes on nvestments (Ch 3) 3. Investors pay no transacton costs (Ch 3) 4. Investors can borrow and lend at the rsk-ree nterest rate (Ch 3) 5. Investors hold only ecent portolos o traded securtes (Ch 11) 6. Investors have homogenous (same) expectatons regardng the volatltes, correlatons, and expected returns o securtes (Ch 11) Q: Why even study a model based on such unrealstc assumptons? 1) ) 3) B. The Captal Market Lne 1. Basc dea: Ratonale: 1) By assumpton, all nvestors have the same expectatons )

Chapter 11: Optmal Portolo Choce and the CAPM-19 3) 4) 5). Captal Market Lne: Optmal portolos or all nvestors: Graph #13: CML 15 Tangent Portolo or all nvestors = market x > 1 1 5 x < 1 Ecent Fronter o rsky assets or all nvestors 1 3 4 Volatlty C. Market Rsk and Beta I the market portolo s ecent, then the expected and requred returns on any traded securty are equal as ollows: E R r r ER Mkt r (11.) where: R CorrR, RMkt SDR Mkt SD Cov, RMkt (11.3) Var R Mkt R Mkt Notes: Mkt 1) substtutng or ) wll use rather than E Mkt and E[R Mkt ] or E[R E ] nto 11.1

Chapter 11: Optmal Portolo Choce and the CAPM- 3) rather than usng equaton 11.3, can estmate beta by regressng excess returns (actual returns mnus rsk-ree rate) on securty aganst excess returns on the market beta s slope o regresson lne Ex. Assume the ollowng returns on JPM and the market. What s the beta o JPM? What s the expected and requred return on JPM the rsk-ree rate s 4% and the expected return on the market s 9%? Return on: Year JPM Market 1-1% -19% 7% -% 3 14% 17% 4-3% 4% 5 3% 7% 6 19% 18% R JPM Var R JPM SD R JPM 6.5 66. 3 16. 3 see pages 3 and 4 or these calculatons Cov R βjmp Var Cov JPM R,R Mkt Mkt 1 RJPM,RMkt RJPM,t RJPM R MKT,t RMkt T 1 t

Chapter 11: Optmal Portolo Choce and the CAPM-1 D. The Securty Market Lne (SML) 1. Denton: graph o equaton 11.: ER r r ER Mkt r lnear relatonshp between beta and expected (and requred) return Graph #14: SML 15% 1% E[Rmkt] Market 5% %..5 1. 1.5. Beta. All securtes must le on the SML expected return equals the requred return or all securtes Reason: JPM wll le on the SML just above and to the rght o the market 3. Betas o portolos P x (11.4) Note: see Equaton (11.1) on separatng out x

Chapter 11: Optmal Portolo Choce and the CAPM- Ex. Assume beta or JPM s 1.13 and that beta or GD s.159. What s beta o portolo where nvest $3, n JPM and $1, n GD? x JPM =.75, x GD =.5 P =