Third Quarter 2016: Hotels Exhibit Positive Momentum

Similar documents
Second Quarter 2016: Slowdown for Large Hotels Continues; Small Hotels Have Now Slowed as Well

Second Quarter 2015: Hotel Deals Are Getting Harder to Pencil Out

Third Quarter 2014: Hotel Prices Decline on a Year over Year Basis: Expect this Trend to Continue

Second Quarter 2014: Prices Rise as Expected, Moderate Price Growth Is Anticipated

Fourth Quarter 2018: David Hotels Continue to Dominate the Goliaths

Guide to Using the Free Rent Calculator

Second Quarter 2012: The Trend Is Our Friend

Multifamily Market Commentary February 2018

2013 Arizona Housing Market Mid-Year Report

Housing Price Forecasts. Illinois and Chicago PMSA, January 2018

Presented by: Sheraton Gateway Hotel Los Angeles

Housing Price Forecasts. Illinois and Chicago PMSA, October 2014

Economic and Housing Update

Housing Price Forecasts. Illinois and Chicago PMSA, March 2017

ANALYSIS OF THE CENTRAL VIRGINIA AREA HOUSING MARKET 1st quarter 2013 By Lisa A. Sturtevant, PhD George Mason University Center for Regional Analysis

Housing Price Forecasts. Illinois and Chicago PMSA, September 2016

Minneapolis St. Paul Residential Real Estate Index

Housing Price Forecasts. Illinois and Chicago PMSA, March 2019

Housing Price Forecasts. Illinois and Chicago PMSA, June 2012

Housing Price Forecasts. Illinois and Chicago PMSA, July 2016

Cycle Monitor Real Estate Market Cycles Third Quarter 2017 Analysis

Housing Price Forecasts. Illinois and Chicago PMSA, December 2015

Housing Price Forecasts. Illinois and Chicago PMSA, March 2018

Housing Price Forecasts. Illinois and Chicago PMSA, January 2019

MarketREVIEW INSIGHT TRENDS PERSPECTIVE. Adams County, PA 2nd Quarter 2015

Housing Price Forecasts. Illinois and Chicago PMSA, May 2018

ECONOMIC CURRENTS. Vol. 3, Issue 1. THE SOUTH FLORIDA ECONOMIC QUARTERLY Introduction

Housing Price Forecasts. Illinois and Chicago PMSA, August 2017

Agricultural FINANCE Monitor

Residential May Karl L. Guntermann Fred E. Taylor Professor of Real Estate. Adam Nowak Research Associate

University of St. Thomas Minnesota Commercial Real Estate Survey

Housing Price Forecasts. Illinois and Chicago PMSA, April 2018

2015 First Quarter Market Report

San Francisco Bay Area to Santa Clara and San Benito Counties Housing and Economic Outlook

Course Number Course Title Course Description

Seattle Housing Market Overview January 2019

Informed Decisions Are Based on Actionable Data.

The Corcoran Report 4Q16 MANHATTAN

University of North Carolina at Greensboro Bryan School of Business and Economics M.B.A. Evening Program

Steady as She Goes Texas Apartment Markets Recovering

2018 Greater Toronto Area Economic Outlook

The Residential Market: Impact of Current Conditions on Valuation

San Francisco Bay Area to Marin, San Francisco, and San Mateo Counties Housing and Economic Outlook

A View Like Never Before

Minneapolis St. Paul Residential Real Estate Index

MARKET REPORT. Manhattan Office Sector Continues Recovery as Downtown Breaks Record MANHATTAN SNAPSHOT 4.2% 0.8PP 1.98MM SF MANHATTAN OFFICE

THE ELUSIVE CAP RATE Finding & Supporting Cap Rates in Uncertain Times

Shrinking Supply Continues To Push Rates

17th Annual Real Estate Review & Forecast

San Francisco Bay Area to Alameda and Contra Costa Counties Housing and Economic Outlook

Las Vegas Valley Executive Summary

Introduction. Survey on Real Estate Financing and Distressed Real Estate Debt 16 October 2013

Vacancy Increased Slightly During the First Quarter

Released: February 8, 2011

AGRICULTURAL Finance Monitor

Minneapolis St. Paul Residential Real Estate Index

September 2016 RESIDENTIAL MARKET REPORT

Sekisui House, Ltd. < Presentation >

DATA FOR NOVEMBER Published December 20, Sales are down -2.7% month-over-month. The year-over-year comparison is at 4.0%.

FOR IMMEDIATE RELEASE Contact: Brenda Morton Dulles Area Association of REALTORS

TEXAS HOUSING INSIGHT

The State of the Commercial Real Estate Industry: Mid-Year 2011 Retail Review & Outlook

Technical Description of the Freddie Mac House Price Index

Residential January 2009

San Francisco Bay Area to Sonoma County Housing and Economic Outlook

Housing Price Forecasts. Illinois and Chicago PMSA, August 2016

CALIFORNIA ECONOMIC & MARKET OUTLOOK. October 29,2014 Contra Costa Association of REALTORS Leslie Appleton Young, Chief Economist

DATA FOR SEPTEMBER Published October 13, Sales are down -9.7% month-over-month. The year-over-year comparison is at 0%.

REAL ESTATE SENTIMENT INDEX 1 st Quarter 2014

University of North Carolina at Greensboro Bryan School of Business and Economics M.B.A. Evening Program

Multifamily Market Commentary February 2017

CHICAGO CBD OFFICE INVESTMENT PROPERTIES GROUP

SELF-STORAGE REPORT VIEWPOINT 2017 / COMMERCIAL REAL ESTATE TRENDS. By: Steven J. Johnson, MAI, Senior Managing Director, IRR-Metro LA. irr.

Chicago s industrial market thrives during the third quarter.

CONSUMER CONFIDENCE AND REAL ESTATE MARKET PERFORMANCE GO HAND-IN-HAND

Chapter 18. Investors have different required yields Different risk assessment Different opportunity cost of equity

Released: April 8, 2011

Bridge Financing & Valuation Trends Amid a Changing CRE Landscape ARBOR.COM 800.ARBOR.10

nd Quarter Market Report

TOP-TIER REAL ESTATE REPORT

DATA FOR NOVEMBER Published December 20, Sales are down -9.3% month-overmonth. comparison is down -7.9%. ARMLS STAT NOVEMBER 2018

Housing Price Forecasts. Illinois and Chicago PMSA, March 2016

Real estate prices bottom, but remain stagnant

The Corcoran Report 3Q17 MANHATTAN

TUCSON and SOUTHERN ARIZONA

A Window Into the World of Condo Investors

Lake Martin Waterfront Residential Report September 2018

Estimating National Levels of Home Improvement and Repair Spending by Rental Property Owners

FINANCIAL OVERVIEW RACHEL GLASER. Analyst & Investor Day 2014 May 22, 2014 CHIEF FINANCIAL OFFICER

RESIDENTIAL MARKET ANALYSIS

Released: June 7, 2010

NAB COMMERCIAL PROPERTY SURVEY Q4 2017

Has The Office Market Reached A Peak? Vacancy. Rental Rate. Net Absorption. Construction. *Projected $3.65 $3.50 $3.35 $3.20 $3.05 $2.90 $2.

ECONOMIC AND MONETARY DEVELOPMENTS

Value Fluctuations in a Real Estate Investment Financed with Debt

1 February FNB House Price Index - Real and Nominal Growth

Housing Watch Ireland

Goods and Services Tax and Mortgage Costs of Australian Credit Unions

Chapter 1 Economics of Net Leases and Sale-Leasebacks

CITI HABITATS. Manhattan Residential Sales Market Report

Transcription:

Cornell University School of Hotel Administration The Scholarly Commons Cornell Real Estate Market Indices Center for Real Estate and Finance 1-27-216 Third Quarter 216: Hotels Exhibit Positive Momentum Crocker H. Liu Cornell University School of Hotel Administration, chl62@cornell.edu Adam D. Nowak West Virginia University Robert M. White Jr. Real Capital Analytics, Inc. Follow this and additional works at: http://scholarship.sha.cornell.edu/cremi Part of the Real Estate Commons Recommended Citation Liu, C. H., Nowak, A. D., & White, R. M. (216). Third quarter 216: Hotels exhibit positive momentum. Center for Real Estate and Finance Reports Hotel Indices, 5(4), 1-22. This Article is brought to you for free and open access by the Center for Real Estate and Finance at The Scholarly Commons. It has been accepted for inclusion in Cornell Real Estate Market Indices by an authorized administrator of The Scholarly Commons. For more information, please contact hlmdigital@cornell.edu.

Third Quarter 216: Hotels Exhibit Positive Momentum Abstract Our Standardized Unexpected Price (SUP) metric showed an uptick in the price of large hotels during the third quarter of 216, with a continued decline in the price of small hotels. Although debt and equity financing for hotels were still relatively inexpensive during this quarter, we remain concerned that the increasing relative riskiness of hotels compared to other commercial real estate suggests that lenders will eventually start to tighten hotel lending standards if this trend continues. Our early warning indicators continue to suggest an eventual downward trend in large hotel prices. This is report number 2 of the index series. Keywords Cornell, commercial real estate, hotel valuation models, HOTVAL, economic value added (EVA), hotel lending, early warning indicators Disciplines Real Estate Comments Required Publisher Statement Cornell University. Reprinted with permission. All rights reserved. ********************************************************************************* Supplemental File: Hotel Valuation Model (HOTVAL) We provide this user friendly hotel valuation model in an excel spreadsheet entitled HOTVAL Toolkit as a complement to this report which is available for download from http://scholarship.sha.cornell.edu/creftools/1/ This article is available at The Scholarly Commons: http://scholarship.sha.cornell.edu/cremi/2

CORNELL CENTER FOR REAL ESTATE AND FINANCE REPORT CORNELL HOTEL INDICES Third Quarter 216: Hotels Exhibit Positive Momentum Crocker H. Liu, Adam D. Nowak, and Robert M. White, Jr. EXECUTIVE SUMMARY Our Standardized Unexpected Price (SUP) metric showed an uptick in the price of large hotels during the third quarter of 216, with a continued decline in the price of small hotels. Although debt and equity financing for hotels were still relatively inexpensive during this quarter, we remain concerned that the increasing relative riskiness of hotels compared to other commercial real estate suggests that lenders will eventually start to tighten hotel lending standards if this trend continues. Our early warning indicators continue to suggest an eventual downward trend in large hotel prices. This is report number 2 of the index series. CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 1

ABOUT THE AUTHORS Crocker H. Liu is a professor of real estate at the School of Hotel Administration at Cornell, where he is the Robert A. Beck Professor of Hospitality Financial Management. He previously taught at New York University s Stern School of Business (1988 26) and at Arizona State University s W.P. Carey School of Business (26 29) where he held the McCord Chair. His research interests are focused on issues in real estate finance, particularly topics related to agency, corporate governance, organizational forms, market efficiency, and valuation. Liu s research has been published in the Review of Financial Studies, Journal of Financial Economics, Journal of Business, Journal of Financial and Quantitative Analysis, Journal of Law and Economics, Journal of Financial Markets, Journal of Corporate Finance, Review of Finance, Real Estate Economics, Regional Science and Urban Economics, Journal of Real Estate Research and the Journal of Real Estate Finance and Economics. He is the former co-editor of Real Estate Economics, the leading real estate academic journal. He continues to be on the editorial board of Real Estate Economics. He also previously served on the editorial boards of the Journal of Real Estate Finance and Economics, the Journal of Property Research, and the Journal of Real Estate Finance. Liu earned his BBA in real estate and finance from the University of Hawaii, an M.S. in real estate from Wisconsin under Dr. James Graaskamp, and a Ph.D. in finance and real estate from the University of Texas under Dr. Vijay Bawa. Adam D. Nowak is an assistant professor of economics at West Virginia University. He earned degrees in mathematics and economics at Indiana University Bloomington in 26 and a degree in near-east languages and cultures that same year. He received a Ph.D. from Arizona State University. Nowak taught an introduction to macroeconomics course and a survey of international economics at Arizona State. He was the research analyst in charge of constructing residential and commercial real estate indices for the Center for Real Estate Theory and Practice at Arizona State University. Nowak s research has been published in the Journal of Urban Economics, Journal of Applied Econometrics, and the Journal of Real Estate Research. Robert M. White, Jr., CRE, is the founder and president of Real Capital Analytics Inc., an international research firm that publishes the Capital Trends Monthly. Real Capital Analytics provides real time data concerning the capital markets for commercial real estate and the values of commercial properties. White is a noted authority on the real estate capital markets with credits in The Wall Street Journal, Barron s, The Economist, Forbes, New York Times, and Financial Times, among others., and his research has been published in the Journal of Real Estate Finance and Economics. He is the 214 recipient of the James D. Landauer/John R. White Award given by The Counselors of Real Estate. In addition, he was named one of National Real Estate Investor magazine s Ten to Watch in 25, Institutional Investor s 2 Rising Stars of Real Estate in 26, and Real Estate Forum s 1 CEOs to Watch in 27. Previously, White spent 14 years in the real estate investment banking and brokerage industry and has orchestrated billions of commercial sales, acquisitions, and recapitalizations. He was formerly a managing director and principal of Granite Partners LLC and spent nine years with Eastdil Realty in New York and London. White is a Counselor of Real Estate, a Fellow of the Royal Institution of Chartered Surveyors, and a Fellow of the Homer Hoyt Institute. He is also a member of numerous industry organizations and a supporter of academic studies. White is a graduate of the McIntire School of Commerce at the University of Virginia. Acknowledgments We wish to thank Glenn Withiam for copy editing this paper. Disclaimer The Cornell hotel indices are produced by The Center for Real Estate and Finance at the School of Hotel Administration at Cornell University and provided as a free service to academics and practitioners on an as-is, best-effort basis, with no warranties or claims regarding their usefulness. 2 The Center for Real Estate and Finance Cornell University

CORNELL CENTER FOR REAL ESTATE AND FINANCE REPORT CORNELL HOTEL INDICES Exhibit 1 Economic value added (EVA) for hotels.6 E V A S p r e a d ( R O I C W A C C ).4.2 -.2 -.4 -.6 Sources: ACLI, Cornell Center for Real Estate and Finance, NAREIT, Federal Reserve Analysis of Indices through Q3, 216 Hotel investment based on operating performance is still in the black (essentially breakeven). Our Economic Value Added (EVA) indicator is at.2, as shown in Exhibit 1, although it has increased slightly from the previous quarter (216Q1, when it stood at -.8). The EVA is currently at the same level that it was two years ago, back in 214Q3. The cost of debt financing (5.62%) is 127 basis points lower than the hotel cap rate (6.89%), signalling that positive leverage continues to be the norm for hotel deals. CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 3

Exhibit 2 Return on investment capital versus cost of debt financing.3 R O I C a n d C o s t o f D e b t.25.2.15.1.5 Sources: ACLI, Cornell Center for Real Estate and Finance About the Cornell Hotel Indices In our inaugural issue of the Cornell Hotel Index series, we introduced three new quarterly metrics to monitor real estate activity in the hotel market. These are a large hotel index (hotel transactions of $1 million or more), a small hotel index (hotels under $1 million), and a repeat sales index (RSI) that tracks actual hotel transactions. These indices are constructed using the CoStar and Real Capital Analytics (RCA) commercial real estate databases. For the repeat-sale index, we compare the sales and resales of the same hotel over time. All three measures provide a more accurate representation of the current hotel real estate market conditions than does reporting average transaction prices, because the average-price index doesn t account for differences in the quality of the hotels, which also is averaged. A more detailed description of these indices is found in the first edition of this series, Cornell Real Estate Market Indices, which is available at no charge from the Cornell Center for Real Estate and Finance (CREF). In this fourth edition, we present updates and revisions to our three hotel indices along with commentary and supporting evidence from the real estate market. The loosening of the spread of the cap rate over mortgage financing, as shown in Exhibit 2, suggests that the magnification of hotel property returns due to debt financing has increased. In summary, these two exhibits signal that the market is heading into positive territory. Hotel transaction volume falls for both large and small hotels, with the median price of large hotels rising and that of small hotels remaining flat on a year-over-year basis. The total volume of 286 recorded transactions in the third quarter (both large hotels and small hotels combined), as reported in Exhibit 3B, was lower than the previous quarter (which saw 324 transactions). It is also the same level as the first quarter of 27 (also at 286 transactions). On a year-over-year basis (215Q3 to 216Q3), both the volume of hotel transactions and the median price of hotels declined (volume dropped 4.7%, and median prices, 3.7%). Although the volume of transactions also declined year over year for both large (-6.9%) and small (-1.4%) hotel transactions, the median sale price increased for both sizes of property, with small hotels experiencing a 6.6-percent rise and large hotels having a 2.5-percent year-over-year increase. 1 On a quarter-over-quarter basis, however, larger hotels had a large price bump (6.7%), 1 The number of transactions is limited to the sales that are included in the hedonic index. As such, it should not be construed as being the total market activity. 4 The Center for Real Estate and Finance Cornell University

Exhibit 3a Transaction volume (obs) and median sale price (part 1: 1995 24) CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 5

Exhibit 3b Transaction volume (obs) and median sale price (part 2: 25 216) 6 The Center for Real Estate and Finance Cornell University

Exhibit 4 Median sale price and number of sales for high-price hotels (sale prices of $1 million or more) 12 Number of transactions Median sale price $7 1 6 Number of transactions 8 6 4 5 4 3 2 Median sale price ($millions) 2 1 Sources: CoStar, Real Capital Analytics Exhibit 5 Median sale price and number of sales for low-price hotels (sale prices of less than $1 million) 3 Number of transactions Median sale price $4.5 4. 25 3.5 Number of transactions 2 15 1 5 3. 2.5 2. 1.5 1..5 Median sale price ($millions) Sources: CoStar, Real Capital Analytics CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 7

Exhibit 6 Hotel indices through 216, quarter 3 8 The Center for Real Estate and Finance Cornell University

Exhibit 7 Hedonic hotel indices for large and small hotel transactions 18 16 14 12 Hotel price indices 1 8 6 4 2 Low-price (small) hotels (< hotels $1 MM) (<$1 million) High-price hotels (> $1 MM) High-price (large) hotels (>$1 million) Quarter Sources: Cornell Center for Real Estate and Finance, CoStar, Real Capital Analytics while the median price of smaller hotels remained essentially flat (-.8%). Exhibit 4 and Exhibit 5 show this year-over-year trend in the number of transactions for large hotels and small hotels. Large hotels exhibit positive price momentum, while small hotels continue to revert to the mean, according to our Standardized Unexpected Price (SUP) metric. Exhibit 7, which graphs the prices reported in Exhibit 6, shows that the large-hotel price index increased 4.2 percent, CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 9

Exhibit 8 Year-over-year change in high-price (large) hotel index, with moving-average trendline 1% 8% Year over year change in large-hotel index 6% 4% 2% -2% -4% Sources: Cornell Center for Real Estate and Finance, CoStar, Real Capital Analytics while the small-hotel price index remained relatively stationary at.6 percent on a quarter-over-quarter basis. Exhibit 8 and Exhibit 9 reveal that on a year-over-year basis, large hotels experienced a 2.3-percent decrease in price, while smaller hotels gained 4 percent. These two exhibits also reveal that the moving average trend lines for the price of both large and small hotels continue to decline on a year-over-year basis. Our SUP metric, displayed in Exhibit 1, shows that the price of large hotels, which was reverting to the standardized mean of zero, reversed direction this quarter, turning upwards. 1 The Center for Real Estate and Finance Cornell University

Exhibit 9 Year-over-year change in small-hotel index, with moving-average trendline 2% 15% Year-over-year change in small-hotel index 1% 5% % -5-1% -15% -2% Sources: Cornell Center for Real Estate and Finance, CoStar, Real Capital Analytics Exhibit 1 Standardized unexpected price (SUP) for high-price hotel index 3 2 Critical value (9%) Price surprise indicator: High-price hotels (12 quarters, 3 yrs) Critical value (9%) Price surprise indicator: High-price hotels (2 quarters, 5 yrs) 1 Standarzied Unexp;ected Price -1-2 -3 Sources: Cornell Center for Real Estate and Finance, CoStar, Real Capital Analytics CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 11

Exhibit 11 Standardized unexpected price (SUP) for small-hotel index 3 2 Standard Unexpected Price 1-1 -2-3 Critical value (9%) Price surprise indicator: Low-price hotels (12 quarters, 3 yrs) Critical value (9%) Price surprise indicator: Low-price hotels (2 quarters, 5 yrs) Sources: Cornell Center for Real Estate and Finance, CoStar, Real Capital Analytics This uptick, however, was not statistically significant. Exhibit 11 shows that the price for smaller hotels, in contrast, continued its decline, reverting to the standardized mean of zero. Repeat sales are dropping at a decreasing rate on a year-over-year basis. Similar to the smaller hotels, both the three-year and five-year SUP indicator for repeat hotel sales in Exhibit 12 continued to decline toward the standardized mean of zero. 2 Exhibit 13 provides a confirmatory perspective 2 We report two repeat-sale indices. The repeat sale full sample index uses all repeat-sale pairs, whereas the repeat-sale index with a base of 1 at 2Q1 uses only those sales that occurred on or after the first quarter of 2. The latter repeat sale index thus doesn t use information on sales prior to the first quarter of 2. As such, if a hotel sold in 1995 and then sold again in 212, it would be included in the full repeat sale index, but not the post-2 index. of the price momentum in the repeat sales. The moving average trend line continues to decline on a year-over-year basis. The year-over-year increase in this quarter of 4.3 percent (215Q3 to 216Q3) is lower than the year-over-year increases in the previous two periods: 1.1 percent from 215Q2 to 216Q2, and 18.5 percent from 215Q1 to 216Q1. Mortgage financing volume declines on a yearover-year basis but has increased quarter over quarter. Exhibit 14 shows that the mortgage origination volume for hotels as reported for 216Q2 is about 11.5 percent lower than the previous year (215Q2). 3 This compares to a 2.8-percent year-over-year increase in the previous period (216Q1 rela- 3 This is the latest information reported by the Mortgage Bankers Association as of the writing of this report. 12 The Center for Real Estate and Finance Cornell University

Exhibit 12 Standardized unexpected price (SUP) for repeat-sale hotels 3 2 Standard Unexpected Price 1-1 -2-3 Critical value (9%) Price surprise indicator: Repeat-sale hotels (12 quarters, 3 yrs) Critical value (9%) Price surprise indicator: Repeat-sale hotels (2 quarters, 5 yrs) Sources: Cornell Center for Real Estate and Finance, CoStar, Real Capital Analytics Exhibit 13 Year-over-year change in repeat-sale index, with moving-average trendline 4% Year-over-year change in repeat-sales index 3% 2% 1% % -1% -2% -3% Sources: Cornell Center for Real Estate and Finance, CoStar, Real Capital Analytics CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 13

Exhibit 14 Mortgage origination volume versus loan-to-value ratio for hotels 35.8 MBAA Hotel Mortgage Origination Volume Index 3 25 2 15 1 5 MBAA Hotel origination volume index (21 avg quarter =1) CWSG Max loan-to-value (full-service hotels).7.6.5.4.3.2.1 Minimum Hotel Loan-to-Value Ratio (LTVR) Sources: Cornell Center for Real Estate and Finance, Mortgage Bankers Association Exhibit 15 Interest rates on Class A hotels versus Class B & C properties 1% 9% 8% 7% Interest-rates 6% 5% 4% 3% 2% Class A interest rate Class B & C interest rate 1% Sources: Cushman Wakefield Sonnenblick Goldman 14 The Center for Real Estate and Finance Cornell University

Exhibit 16 Interest-rate spreads of hotels versus U.S. Treasury ten-year bonds 7% Interest-rate spread (Hotel - 1-year Tbond) 6% 5% 4% 3% 2% 1% Class A interest-rate spread (Hotel 1-year Tbond) Class B & C interest-rate spread (Hotel 1-year Tbond) Source: Cushman Wakefield Sonnenblick Goldman tive to 215Q1). However, hotel loan originations are up 25.7 percent on a quarter-over-quarter basis (216Q2 compared to 216Q1). The loan-to-value (LTV) ratio for hotels continued to remain at 7 percent. Although the cost of hotel debt financing hasn t changed, the relative risk premium for hotels has increased. The cost of obtaining hotel financing as reported by Cushman Wakefield Sonnenblick Goldman continued to decline slightly for both Class A and Class B&C Hotels. This decline in hotel interest rates partially accounts for the positive momentum in hotel prices. Exhibit 15 shows that at the beginning of September 216, interest rates were at about 4.38 percent for Class A hotels (4.58% for B&C properties) compared to an interest rate of 4.4 percent for Class A properties (4.6% for B&C hotels) in the previous quarter (June 216). 4 Exhibit 16 and Exhibit 17 depict interest rate spreads relative to different benchmarks. Exhibit 16 shows the spread between Class A (and B&C) interest rates on full-service hotels over the ten-year Treasury bond. On this metric, interest rate spreads have remained relative constant over the last five months (from May 216 through September 4 The interest rate reported by Cushman Wakefield Sonnenblick Goldman (CWSG) differs from the interest rate used to calculate our EVA metric which is based on the interest rate reported by the American Council of Life Insurers (ACLI). The ACLI interest rate reflects what life insurers are charging for institutional sized hotel deals. Our EVA calculation is based on property specific cap rates and the associated financing terms. The CWSG interest rate is based on deals that CWSG has brokered as well as their survey of rates on hotel deals. The CWSG deals are not necessarily similar to deals that are reported by ACLI. CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 15

Exhibit 17 Interest-rate spreads of hotels versus non-hotel commercial real estate 1.6% Interest-rate spread (Hotel Commercial real estate) 1.4% 1.2% 1.%.8%.6%.4%.2% -.2% Class A interest-rate spread (Hotel CRE) Class B & C interest-rate spread (Hotel CRE) -.4% Source: Cushman Wakefield Sonnenblick Goldman 216), indicating that lenders compensation for risk associated with hotel loans has remained unchanged. Exhibit 17 shows the hotel real-estate premium, which is the spread between the interest rate on Class A (and B&C) full-service hotels over the interest rate corresponding to non-hotel commercial real estate. 5 The hotel real estate premiums for both higher quality (Class A) and lower quality (Class B&C) hotels have once again reversed direction, turning upward again. The hotel real estate premium for Class A hotels is currently at.47% compared to.38% for 216Q2 and.65% for 216Q1. For Class B&C properties, the premium is now.57%, compared to.48% in the second quarter and.75% in the first quarter of 216). The hotel risk premium for the third quarter of 216 is similar to the premiums assessed in the 215Q3 period. The increase in the premium in the most recent quarter is a signal that the perceived default risk for hotel 5 The interest rate on hotel properties is generally higher than that for apartment, industrial, office, and retail properties in part because hotels cash flow is commonly more volatile than that of other commercial properties. properties has widened relative to other commercial real estate, and hotels are viewed as having more risk than such properties as apartment buildings, offices, or warehouses. Cost of equity financing continues to remain affordable; expect to see higher interest rates and tighter lending standards for hotel financing relative to other commercial real estate in the near future. The cost of using equity financing for hotels as measured using the Capital Asset Pricing Model (CAPM) on hotel REIT returns continues to decline, as shown in Exhibit 18. The cost of using equity funds is currently at 8.1 percent for 216Q2, down from 8.4 percent for 216Q1 and also down from 8.7 percent for 215Q4. This lower cost is due to a reduction in the yield on the 1-year constant-maturity Treasury bond and a relatively stationary systematic risk (beta) of hotel REITs, which has remained relatively constant at 1.4 since the first quarter of 215. However, the total risk of hotel REITs (systematic risk + risk that is unique to hotel REITs) continues to be greater than 16 The Center for Real Estate and Finance Cornell University

Exhibit 18 Cost of equity financing using the Capital Asset Pricing Model and hotel REITs 2.5 16% 14% Beta 2. 1.5 1..5 Cost of equity (lodging REITs) Beta 12% 1% 8% 6% 4% 2% Cost of equity (measured using Hotel REITs) Source: Cornell Center for Real Estate and Finance, NAREIT Exhibit 19 Risk differential between hotel REITs and equity REITs 12 Differential: [σ (Hotel REIT Returns) - σ (Equity REIT Returns)] 1 8 6 4 2-2 Source: Cornell Center for Real Estate and Finance, NAREIT CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 17

Exhibit 2 Hotel repeat sales index versus NAREIT lodging/resort price index 25 2 15 Price index 1 5 Repeat sales (full sample) NAREIT Lodging/Resort Price Index Source: Cornell Center for Real Estate and Finance, NAREIT the total risk of equity REITs as a whole (see Exhibit 19). 6 This is consistent with Exhibit 17, which shows that the perceived default risk for hotels is currently increasing relative to other types of commercial real estate. This situation suggests that lenders will eventually start to tighten hotel lending standards if this trend towards higher risk continues. Negative signals continue to persist on the direction in the expected price of large hotels, while small hotels are expected to do better in the near term, according to the tea leaves. Exhibit 2 compares the performance of the repeat sales index relative to the NAREIT Lodging/Resort Price Index. The repeat sales index tends to lag the NAREIT index by at least one quarter or more. This is 6 We calculate the total risk for hotel REITs using a 12-month rolling window of monthly returns on hotel REITs. consistent with prior academic studies which find that securitized real estate is a leading indicator of underlying real estate performance, since the stock market is forward looking. Looking ahead, the NAREIT lodging index declined 1.2 percent in the third quarter compared to a decrease of 4.2 percent in the prior quarter. The NAREIT lodging index has been on a downward trend since the fourth quarter of 214. Year over year, the NA- REIT lodging index continues its downward trend, down 4.5 percent from 215Q3 to 216Q3, compared to a 17.5-percent drop in 215Q2 to 216Q2 and a 2-percent reduction in 215Q1 to 216Q1. In terms of the SUP for the NAREIT Hotel Index shown in Exhibit 21, which provides a complementary perspective, the hotel REIT index continues to decline below its standardized mean of zero. Consequently, expect hotel prices to fall in the future. 18 The Center for Real Estate and Finance Cornell University

Exhibit 21 Standardized unexpected price (SUP) for NAREIT lodging/resort index 3 Standardized Unexpected Price (Hotel REITs) 2 1-1 -2-3 Critical value (9%) Price surprise indicator (12 quarters, 3 yrs) Critical value (9%) Price surprise indicator (2 quarters, 5 yrs) Source: Cornell Center for Real Estate and Finance, NAREIT Exhibit 22 Hotel repeat sales index versus architecture billings index 3 7 25 6 Repeat sales (full sample) 2 15 1 5 Repeat sales Architecture Billings Index 4-quarter average moving index 5 4 3 2 1 Architecture Billings Index (ABI) Sources: Cornell Center for Real Estate and Finance, American Institute of Architects CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 19

Exhibit 23 Business confidence index (National Association of Purchasing Managers) and high-price hotel index 2 7 18 16 6 High-price hotels hedonic index 14 12 1 8 6 4 2 High-price hotels ISM Purchasing Managers Index (Diffusion index, SA) 5 4 3 2 1 ISM Purchasing Managers Index Sources: Cornell Center for Real Estate and Finance, Institute for Supply Management (ISM) The architecture billings index (ABI) for commercial and industrial property, which represents another forward-looking metric, increased imperceptibly this quarter from the previous quarter, as shown in Exhibit 22 (5.8 versus 5.3). 7 The fourquarter moving average of the ABI, shown in blue, indicates that the ABI has generally been flat for the last two quarters. The National Association of Purchasing Managers (NAPM) index shown in Exhibit 23, which is an indicator of anticipated business confidence and thus business traveler demand, also remained relatively stationary in September from the prior quarter (51.2 vs 51.8). 8 Based on the NAPM index, we expect 7 As of September 21, 216, see: www.aia.org/practicing/economics/ aias76265 8 The ISM: Purchasing Managers Index (Diffusion index, SA), also known as the National Association of Purchasing Managers (NAPM) index, is based on a survey of over 25 companies in twenty-one industries covering all 5 states. It not only measures the health of the manufacturing sector but is a proxy for the overall economy. It is calculated by surveying purchasing managers for data about new orders, production, employment, deliveries, and inventory, in descending order of importance. A reading over 5 percent indicates that manufacturing is growing, while a reading below 5 percent means it is shrinking. 2 The Center for Real Estate and Finance Cornell University

Exhibit 24 Consumer confidence index and low-price hotel index 18 16 16 14 14 12 12 Low-price hotels hedonic index 1 8 6 4 Low-price hotels Consumer confidence index 1 8 6 4 Consumer confidence index 2 Three-month moving average of consumer confidence index 2 Sources: Cornell Center for Real Estate and Finance, Conference Board the price of large hotels remain relatively constant for the next quarter. The Consumer Confidence Index from the Conference Board, graphed in Exhibit 24, which we use as a proxy for anticipated consumer demand for leisure travel and a leading indicator of the hedonic index for low-price hotels, rose about 6.2 percent in September (216Q3) quarter over quarter. The index also rose approximately 1.5 percent on a year-over-year basis. Thus, we expect the price of small hotels to rise, based on the index s four-quarter moving average. Hotel Valuation Model (HOTVAL) Has Been Updated. We have updated our hotel valuation regression model to include the transaction data used to generate this report. We provide this user friendly hotel valuation model in an Excel spreadsheet entitled HOTVAL Toolkit as a complement to this report. HOTVAL is available for download from our digital library. CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 21

Appendix SUP: The Standardized Unexpected Price Metric The standardized unexpected price metric (SUP) is similar to the standardized unexpected earnings (SUE) indicator used to determine whether earnings surprises are statistically significant. An earnings surprise occurs when the firm s reported earnings per share deviates from the street estimate or the analysts consensus forecast. To determine whether an earnings surprise is statistically significant, analysts use the following formula: SUE Q = (A Q m Q )/s Q where SUE Q = quarter Q standardized unexpected earnings, A Q = quarter Q actual earnings per share reported by the firm, m Q = quarter Q consensus earnings per share forecasted by analysts in quarter Q-1, and s Q = quarter Q standard deviation of earnings estimates. SUP data and σ calculation for high-price hotels (12 quarters/3 years) Quarter High-price hotels m Moving average σ Price surprise indicator (SUP) From statistics, the SUE Q is normally distributed with a mean of zero and a standard deviation of one (~N(,1)). This calculation shows an earnings surprise when earnings are statistically significant, when SUE Q exceeds either ±1.645 (9% significant) or ±1.96 (95% significant). The earnings surprise is positive when SUE Q > 1.645, which is statistically significant at the 9% level assuming a two-tailed distribution. Similarly, if SUE Q < -1.645 then earnings are negative, which is statistically significant at the 9% level. Intuitively, SUE measures the earnings surprise in terms of the number of standard deviations above or below the consensus earnings estimate. From our perspective, using this measure complements our visual analysis of the movement of hotel prices relative to their three-year and five-year moving average (µ). What is missing in the visual analysis is whether prices diverge significantly from the moving average in statistical terms. In other words, we wish to determine whether the current price diverges at least one standard deviation from µ, the historical average price. The question we wish to answer is whether price is reverting to (or diverging from) the historical mean. More specifically, the question is whether this is price mean reverting. To implement this model in our current context, we use the three- or five-year moving average as our measure of µ and the rolling three- or five-year standard deviation as our measure of σ. Following is an example of how to calculate the SUP metric using high price hotels with regard to their three-year moving average. To calculate the three-year moving average from quarterly data we sum 12 quarters of data then divide by 12: Average (µ) = (7.6+63.11+58.11+9.54+95.24+99.7 +18.38+99.66+11.62+15.34+19.53+115.78) 12 = 93.13 Standard Deviation (σ) = 18.99 Standardized Unexp Price (SUP) = (115.78-93.13) = 1.19 18.99 22 The Center for Real Estate and Finance Cornell University

CREF Advisory Board Center for Real Estate and Finance Reports, Vol. 5 No. 4 (October 216) Arthur Adler 78 Managing Director and CEO- Americas Jones Lang LaSalle Hotels Richard Baker 88 Governor and CEO Hudson s Bay Company Michael Barnello 87 President & COO LaSalle Hotel Properties Robert Buccini 9 Co-founder and President The Buccini/Pollin Group Rodney Clough 94 Managing Director HVS Howard Cohen 89 President & Chief Executive Officer Atlantic Pacific Companies Navin Dimond P 14 President & CEO Stonebridge Companies Joel Eisemann, MPS 8 SVP & CEO InterContinental Hotels Group Russell Galbut 74 Managing Principal Crescent Heights Kate Henrikson 96 Senior Vice President Investments RLJ Lodging Trust Jeff Horwitz Partner, Head of Lodging and Gaming Group and Private Equity Real Estate Proskauer Rose LLP David Jubitz 4 Principal Clearview Hotel Capital Rob Kline 84 President & Co-Founder The Chartres Lodging Group Michael Medzigian 82 Chairman & Managing Partner Watermark Capital Partners and Carey Watermark Investors Sanjeev Misra 98 Senior Managing Director Paramount Lodging Advisors Alfonso Munk 96 Managing Director and Americas Chief Investment Officer Prudential Real Estate Investors Chip Ohlsson Executive Vice President and Chief Development Officer, North America Wyndham Hotel Group Daniel Peek 92 Senior Managing Director HFF David Pollin 9 Co-founder and President The Buccini/Pollin Group Michael Profenius Senior Partner, Head of Business Development Grove International Partners Jay Shah 9 Chief Executive Officer Hersha Hospitality Trust Seth Singerman 99 Managing Partner Singerman Real Estate, LLC ( SRE ) Robert Springer 99 Senior Vice President Acquisitions Sunstone Hotel Investors Alan Tantleff 87 Senior Managing Director Corporate Finance/Restructuring Practice Leader, Hospitality Gaming and Leisure FTI Consulting 216 Cornell University. This report may not be reproduced or distributed without the express permission of the publisher. The CREF Report series is produced for the benefit of the hospitality real estate and finance industries by The Center for Real Estate and Finance at Cornell University Daniel Quan, Arthur Adler 78 and Karen Newman Adler 78 Academic Director Alicia Michael, Program Manager Glenn Withiam, Executive Editor Kate Walsh, Interim Dean, School of Hotel Administration Center for Real Estate and Finance Cornell University School of Hotel Administration 389 Statler Hall Ithaca, NY 14853 Phone: 67-255-625 Fax: 67-254-2922 www.cref.cornell.edu Sush S. Torgalkar 99 Chief Operating Officer Westbrook Partners Robert White President Real Capital Analytics Conley Wolfsinkel Strategic Management Consultant W Holdings Dexter Wood 87 SVP, Global Head Business & Investment Analysis Hilton Worldwide Jon S. Wright President and CEO Access Point Financial Lanhee Yung 97 Managing Director of Global Fundraising Starwood Capital Group CREF Hotel Indices October 216 www.cref.cornell.edu Vol. 5 No. 4 23