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Contaduría y administración

versión impresa ISSN 0186-1042

Contad. Adm vol.61 no.2 Ciudad de México abr./jun. 2016

https://doi.org/10.1016/j.cya.2015.11.005 

Artículos

The implicit impact of cross-listing on stock prices: A market microstructure perspective - The case of Latin American markets

El impacto implícito de enlistar ADRs sobre los precios accionarios: una perspectiva de microestructura - El caso de los mercados latinoamericanos

Osmar Hazael Zavaleta Vázqueza  * 

Jaime González Maiz Jiménezb 

aTecnológico de Monterrey, EGADE Business School, Mexico

bUniversidad de las Américas Puebla, Mexico


Abstract:

The objective of this research is to evaluate the unobserved effect of cross-listing on stock prices of companies from Latin America. Particularly, we study the impact of the issuance of ADRs on volatility and efficiency in the local markets. We employ GARCH models to assess the impact on volatility, once the ADR has been issued, and ARMA models to evaluate the impact on efficiency, once the ADR is listed. Overall, we find that in 82% of the analyzed cases, at least one result shows improvement (i.e. lower volatility and/or more efficiency, once the corresponding ADR has been issued). Further, we find that once the electronic trading systems are implemented in emerging markets, there is an improvement in terms of the information environment, thus reducing the effects of cross-listing. This study contributes to the financial literature because it tests the impact of cross-listing on two specified market microstructure variables, namely volatility and efficiency, through a robust methodology.

Keywords Cross-listing; Information environment; Microstructure; Volatility and efficiency

Resumen:

El objetivo de esta investigación es evaluar el efecto no aparente sobre los precios accionarios de Latinoamérica en el momento de emitir ADRs. En particular, se estudia el impacto sobre la volatilidad y la eficiencia en los mercados locales, empleando modelos de la familia GARCH, para medir el impacto sobre la volatilidad, y modelos ARMA, para evaluar el impacto sobre la eficiencia. En general, se encontró que en el 82% de los casos analizados, al menos un resultado muestra mejora (esto es, decremento en la volatilidad y/o mejora en la eficiencia). También se encontró que una vez que los sistemas electrónicos, para comprar y vender activos, son implementados en los mercados bajo estudio, hay una mejora en el ambiente de información, por lo que se reduce el efecto de emisión de los ADR. Finalmente, este estudio contribuye a la literatura financiera porque evalúa el impacto de la emisión de ADR sobre 2 variables específicas de la microestructura de los mercados financieros, volatilidad y eficiencia, mediante el uso de metodologías estadísticas consistentes.

Palabras clave Enlistar en el extranjero; Ambiente de información; Microestructura; Volatilidad y eficiencia

Introduction

There is a trade-off regarding listing a company abroad. On the one hand, Hayward (2002) mentions the two main advantages of listing shares abroad: (a) access to a greater capital market; and (b) an increase in the scope of brand awareness. On the other hand, the main drawbacks of listing abroad include: (c) large accounting and legal fees, and (d) extra disclosure requirements. Following the same line of thought, Lin (2011) highlights the various benefits associated with exchange listing, which potentially outweigh the compliance costs. Additionally, Waweru, Pokhariyal and Mwaura (2012) in a descriptive research design, find that the key reasons for cross-listing are: investor recognition, expansion of business, the boost in shares, and the desire to lower the cost of capital. Beyond these strategic issues, from the financial standpoint there has been a large body of research regarding how cross-listing impacts the stock price on different dimensions. In this paper, and from the market microstructure viewpoint, we are testing the impact of cross-listing on two microstructure variables: volatility and efficiency.

One of the objectives of market microstructure is to study how the trading mechanisms of financial markets influence variables that define its quality, namely transaction costs, volatility, liquidity and efficiency. Transaction costs are usually measured in terms of bid-ask spread; volatility measures the variation of returns over time and it is commonly measured in terms of the variance or standard deviation of stock returns; liquidity, which according to Bodie, Kane, and Marcus (2004), refers to the speed and ease with which an asset can be sold and still get a fair price; and efficiency, which is related to the idea of how close prices are in regards to reflecting all available information. In this work we will focus on two variables: volatility and efficiency. With the intention of gauging the impact on volatility, once the American Depositary Receipt (ADR hereafter ) is issued, we employ Generalized Autoregressive Conditional Heteroskedasticity (GARCH hereafter ) models in two senses: (a) conventional GARCH model and (b) the news impact curve model, which measures the asymmetry of volatility, implying that bad news should increase the volatility in stock returns more than good news do. Additionally, we estimate the proper Autoregressive Moving Average (ARMA hereafter ) model to evaluate the impact on efficiency.

The event of issuing an ADR, also known as cross-listing, is considered a quasi-natural experiment regarding the change in the information environment once companies issue ADRs. Thus, a number of research works has been focused to this observable fact. Broadly speaking, because companies coming from emerging markets are forced to disclose more financial information, it is natural to hypothesize that share prices of companies that cross-list will move closer to their fundamental or intrinsic value. Hence, the purpose of this research is to evaluate the implicit effect that ADR issuance has over two microstructure variables, volatility and efficiency, within the Latin American context. In order to accomplish this objective the paper is organized as follows: Section "Literature review" includes the Literature review. Section "Methodology and data description" describes the methodology to perform the empirical analysis on stock returns, as well as the description of used data. Section "Findings" presents the results from the empirical analysis. Finally, the general conclusions and future lines of research are presented in Section "Conclusions and future research".

Literature review

Because companies are forced to release more quality financial information once they cross-list, such releases are considered quasi-natural experiments in terms of the information-changing environment. Thus, prior studies have hypothesized that once companies cross-list, either their share price is somehow better valued or they experience a change in other market-type measure.

In terms of market efficiency, Bhattacharya, Daouk, Jorgenson, and Kehr (2000), using a sample of Mexican corporate news announcements from July 1994 through June 1996, find that there is nothing unusual about returns, volatility of returns, volume of trade or bid-ask spreads in the event window. The authors show evidence that unrestricted insider trading has caused prices to fully incorporate the information.

On the other hand, Bekaert and Harvey (2002), considering a sample of 20 emerging markets (Argentina, Brazil, Chile, Colombia, Mexico and Venezuela included from Latin America), find that emerging market equity returns have higher serial correlation than developed market returns and that emerging markets returns are less likely to be impacted by company specific news announcements than developed market returns. The evidence suggests that insider trading occurs well before the release of information to the public which, in somewhat, indicates inefficiency in emerging markets.

Additionally, Eaton, Nofsinger, and Weaver (2007) study 20 countries - including Mexico and Chile representing Latin America - and find evidence that firms that cross-list experience a decrease in both disclosure risk and systematic risk. Fernandes and Ferreira (2008), throughout a cross-sectional study to compare the impact on information environment, after cross-listing, between developed and emerging market firms (included firms from Argentina, Brazil, Chile, Colombia, Mexico, Peru and Venezuela for the last group) find that cross-listing improves price informativeness for developed market firms, but cross-listing decreases price informativeness. Moreover, Nowland and Simon (2010), doing an analysis of 31 countries - Argentina, Brazil, Chile, Colombia, Mexico and Venezuela representing Latin America - show that cross-listing is associated with a shift away from less accurate forecasts toward more accurate forecasts. Finally, Salva and Fresard (2012) compare the value of firms that are cross-listed on the US exchanges to that of similar the US firms, and find a sizeable "cross-listing discount". They find that cross-listed firms are valued 14% lower than comparable the US firms. Their study of 38 countries includes Peru, Argentina, Brazil, Chile, Mexico and Venezuela.

From the market microstructure standpoint, Domowitz, Glen, and Madhavan (1998) address the issue of cross-listing within the Mexican stock market, analyzing measures of domestic market quality including the precision of public information. The authors show a systematic change in volatility, liquidity, returns, and bid-ask spreads due to cross-listings being concentrated in share series open to foreign ownership prior to the listing event. Additionally, in a study of the Amman Stock Exchange, Al-Zoubi and Al-Zubi (2007) find evidence that stock returns follows an ARMA (1,1) with significant serial correlation, implying stock market inefficiency. Hailing, Pagano, Randal, and Zechner (2008), using a sample of European countries, find that the fraction of trading that occurs in the US tends to be larger for companies from countries that are geographically close to the US and feature low financial development and poor insider protection. In contrast, Goto, Watanabe, and Xu (2009) in their study, that includes Mexico and Venezuela representing Latin America, find significant shifts in the time-series properties of stock returns for firms that experienced considerable changes in disclosure environments, such as those cross-listed in the US markets. More recently, Abdallah and Mohsen Saad (2011), whose study includes the stock markets from Argentina, Brazil, Chile and Mexico, conclude that the increase in trading volume due to cross-listing is a function of both reducing segmentation and signaling investor protection. In the same vein, Leyuan, Parhizgari, and Srivastava (2012) find a positive cross-listing and negative delisting effect on stock price. No significant changes in the market risk are found for either event. The authors find that foreign cross-listing and delisting are associated with increasing and decreasing long term trading volume respectively. Only one Mexican company was included in this study. Further, using data from Australian firms, Chang and Corbitt (2012), studying only the Australian Stock Exchange, do not reject the bonding hypothesis declaring that once companies cross-list, the insiders' returns are lowered.

Methodology and data description

Methodology

GARCH models

Volatility is one of the main variables within the market microstructure context. This variable is a measure of returns variation over time. We test whether there is an impact on this variable as a consequence of the issuance of ADRs. In order to evaluate the impact on returns volatility once the ADR is issued, we employ GARCH models.

The GARCH model was developed independently by Bollerslev (1986) and Taylor (1986). This model allows the conditional variance to be dependent upon previous own lags. In general, a GARCH (1,1) model may be sufficient to capture volatility clustering data but, if necessary, a higher order model could be estimated. The general structure of a GARCH (p , q ) model, adapted to the requirements of this paper, is as follows:

(1)

where θ0>0 and the GARCH (p , q ) is covariance stationary only if indicates that the information set is available until period t−1; D is the coefficient of the dummy variable ADR , and is relevant to evaluate the impact on the volatility due to the ADR issuance. The variable ADR takes the value of 0 before ADR has been issued and takes the value of 1 once the ADR was issued. The coefficient on the qualitative explanatory variable D represents the volatility variation, in absolute terms. In order to evaluate the impact of the ADR issuance, on the volatility of log returns (ln(Pt/Pt-1)), the following set of hypotheses will be tested:

It is important to highlight that this is the structure used to model volatility cluster once the dynamic of the price variations was modeled with an ARMA structure.

ARMA models

Efficiency is another fundamental variable that is part of the market microstructure perspective. According to Fama (1991) a market is efficient when security prices fully reflect all available information, making it impossible to have an economic gain with the information of past returns only. In the context of Latin America, companies do not disclose enough quality financial information before they decide to issue an ADR, implying a certain degree of inefficiency and hence opening the possibility of having an economic gain with the information of past returns. Hence, once companies disclose more quality financial information, as a consequence of the cross-listing, an improvement within the market efficiency continuum is expected. In related studies regarding efficiency, using a variance-ratio methodology, Urrutia (1995) find that Latin American markets are weak-form efficient. Choundry (1997), investigates long-run relationships between Latin American markets and the United States, and find significant causality. On the other hand, within the Mexican Stock market, Domowitz et al. (1998), observe that Mexican shares that issue ADRs do experience a decline in the implicit Bid-Ask Spread, suggesting an improvement in terms of market efficiency. In addition, Bhattacharya et al. (2000), using a sample of Mexican corporate news announcements, find that there is nothing unusual about returns, volatility of returns, volume of trade or bid-ask spreads in the event window. The authors show evidence that unrestricted insider trading, which is a form of market inefficiency, has caused prices to fully incorporate the information. Furthermore, Bekaert and Harvey (2002) argue that emerging markets are relatively inefficient, since they have higher serial correlation than developed markets, and they suggest that insider trading occurs before the release of information to the public.

Specifically, we would expect, before domestic companies cross-list, the log returns of stock prices to take an ARMA (p , q ) structure:

(2)

where Yt=ln(Pt/Pt−1) is the log return of period t .

On the other hand, once companies issue the ADR, we would expect log returns of stock prices to take a random walk form which would imply, in somewhat, that the ADR issuance has induced efficiency. In other words, we would expect an AR(1) model with a unit root, as showed below:

(3)

The news impact curve

According to Brooks (2008), the news impact curve plots the next-period volatility that would rise from various positive and negative values of εt−1. For the purposes of this research, we will test the news curve using both the Glosten, Jaganathan and Runkle (GJR) model and the exponential GARCH (EGARCH) model, proposed by Nelson (1991). In terms of the GJR GARCH model, the conditional variance is given by:

(4)

where:

For a leverage effect 1 γ is greater than 0. This model implies that bad news should increase the volatility in stock returns more than good news do.

On the other hand, the EGARCH model has the following form:

(5)

Given that companies are required to disclose more quality financial information, we expect that securities in the domestic market will have more visibility once the ADR was issued. Hence, in terms of the news impact curve models, we hypothesize that the leverage effect will decrease after companies cross-list.

In the case of the GJR GARCH model we expect that:

where γb is the coefficient related to the leverage effect before cross-listing and γa is the coefficient related to the leverage effect after cross-listing.

In the case of the E-GARCH model we expect that:

where λb is the coefficient related to the leverage effect before cross-listing and λa is the coefficient related to the leverage effect after cross-listing.

Data description

In order to estimate the models and perform the statistical tests we employed daily closing stock prices from every company, which were obtained from Bloomberg. We selected companies that issued ADRs from six countries, given their economic relevance within Latin America (Argentina, Brazil, Chile, Colombia, Mexico and Peru), which encompasses a total of 72 enterprises. Because of data availability, we could only retrieve relevant data from 34 companies, which belong to 18 industrial sectors (Tables 1 and 2).

Table 1 ADRs issue dates and available data. 

Country/company ADRs issue date Available data
Argentina
Alto Palermo 11/15/2000 Yes
Banco Macro 03/23/2006 Yes
Patagonia 07/19/2007 No
Cresud 03/18/1997 Yes
Emp Distribuidora 04/26/2007 No
BBVA Banco 11/24/1993 No
Grupo Galicia 07/24/2000 No
IRSA 12/20/1994 Yes
Nortel 2/27/1998 No
Pampa 10/0/2009 Yes
Petrobras Argentina 09/30/2009 Yes
Telecom 01/12/1994 Yes
Transport Ga 11/17/1994 No
YPF 06/29/1993 No
Brazil
Agrenco 10/24/2007 No
Ambev 08/01/1996 Yes
Banco Santander 10/06/2009 No
Bradesco 06/13/1997 Yes
Braskem 05/15/1995 Yes
BRF 01/07/1997 No
Cemig 04/17/1995 Yes
Copel 07/30/1997 No
CPFL Energia 09/28/2004 No
Eletrobras 05/15/1995 Yes
Brazil
Embraer 07/20/2000 Yes
Fibria Celulosa 07/06/1995 Yes
Gafisa 03/16/2007 Yes
Gerdau 02/20/1998 Yes
Gol 06/26/2004 No
Itau 07/02/2001 Yes
Net Servi 11/01/1996 No
OI SA 04/02/1997 Yes
PAO Acucar 10/13/1995 No
Petrobras 11/13/1996 Yes
Sabesp 05/10/2002 Yes
SID Nacional 05/15/1995 Yes
Telefonica 11/16/1998 No
TIM Particip 11/16/1998 No
Ultrapar 10/06/1999 No
Vale 05/15/1995 Yes
Mexico
Amércia Móvil 02/07/2001 No
Cemex 09/15/1999 Yes
Coca Cola 09/14/1993 No
Desarrolladora 06/28/2004 No
ICA 04/09/1992 No
Femsa 05/11/1998 Yes
Gruma 44/06/1998 Yes
Grupo Aeropuertario 09/27/2000 No
Mexico
Santander 09/25/2012 No
Grupo Simec 07/01/1993 No
Grupo Televisa 12/14/1993 No
Grupo TMM 06/10/1992 Yes
Chile
Banco Chile 01/02/2002 Yes
Banco Santander 01/13/1997 No
Cencosud 11/17/2005 Yes
Cervezas 09/24/1992 No
Embotelladora Andina 07/06/1994 No
Endesa 07/27/1994 Yes
Enersis 10/20/1993 No
Latam 11/07/1997 Yes
Provida 11/16/1994 No
Quimica 06/13/1994 No
Vino y Concha 10/14/1994 No
Colombia
Bancolombia 07/26/1995 No
Ecopetrol 09/18/2008 Yes
Peru
Buenaventura 05/15/1996 Yes
Cementos Pacasma 02/07/2012 Yes

Table 2 Economic sectors of the analyzed companies. 

Sector Company/country Company/country Company/country Company/country
Real Estate Apsa (Arg) Ipsa (Arg) Gafisa (Bra)
Banking Banco Macro (Arg) Itau and Bradesco (Bra) Banco Chile CorpBanca (Chile)
Utilities Pampa (Arg) Cemig (Bra) Eletrobras (Bra) Endesa (Chile)
Telecommunications Telecom (Arg) Obir (Bra)
Oil and Gas Petrobras (Arg) Petrobras (Bra) Eco-Petrol (Col)
Food Ambev (Bra) Gruma (Mex)
Petrochemicals Braskem (Bra)
Aircraft Embraer (Bra)
Paper Fibria (Bra)
Steel Gerdau (Bra) Sid Nacional (Bra)
Water Sabesp (Bra)
Mining Vale (Bra) Buenaventura (Peru)
Construction Cemex (Mex) Cementos Pacasma (Peru)
Bottler Femsa (Mex)
Logistics Grupo TMM (Mex)
Retailing Cencosud (Chile)
Airlines Latam (Chile)
Agriculture Cresud (Arg)

Furthermore, it is important to notice that we could not gather the required data even for some well-known companies such as Grupo Televisa in Mexico, because the Group issued ADR in 1993, and there were not data available from that date. In order to execute the tests we considered a window of time of 80 days before the event of cross-listing and 80 days after the event of cross-listing, leaving 20 days before and 20 days after cross-listing without analysis in order to avoid noise effects. On the other hand, to be consistent, the window of 80 days was chosen on the basis that it was the maximum we could retrieve for some companies.

So, we have to recognize that the results obtained from this research are not totally conclusive, given that analyses were performed on less than half of the companies that have issued an ADR in Latin America, but under the robustness of the statistical methodology with which each company was analyzed, we are confident that the findings are enough developers to understand the effect of this financial event on the volatility and efficiency of each company.

Findings

Putting in perspective the raw results, in Fig. 1, we depict the graphs that show a clear decline in volatility after cross-listing (Petrobras Argentina, Braskem, Cemig, Eletrobras, Gerdau, Sid Nacional, Ambev, Fibria Celulosa, Vale, Latam and Ecopetrol), whereas the remaining companies show no apparent effect. As it was described in Methodology section, one of the purposes of this paper is to test whether there is an impact on the volatility as a consequence of the issuance of ADRs. In terms of what has been exposed previously, it is expected that volatility decrease once an ADR has been issued.

Fig. 1 Volatilities of some analyzed companies. 

To better grasp the results of this research, given the large amount of estimations, we show the general results in some tables. In Table 3, we present the broad results and it can be observed that, in the overall, 49% of the results were as expected. In particular, 59% of the tested companies show a decrease in volatility (GARCH model), 32% show improvement in terms of efficiency (ARMA models), and 56% of companies show a decrease in volatility when news impact model is used. In terms of countries, Brazil, with the biggest sample, shows an overall consistency of 60%. However, Mexico is the least consistent with only 25% of expected results. In particular, 46% of tested companies show a decrease in volatility (GARCH model), 8% show an improvement in terms of efficiency (ARMA models), and 54% show a decrease in volatility when facing bad news (news impact curve).

Table 3 General results. 

Country/company GARCH - effect
as expected
Market efficiency test -
effect as expected
News impact curve -
effect as expected
% of results as
expected
Argentina
Alto Palermo No No No 0
Banco Macro No Yes No 33
Cresud Yes No Yesa 67
IRS No No Yes 33
Pampa Yes Yes No 67
Telecom No No No 0
Petrobras Arg Yes Yes Yesa 100
Consistency per country 43% 43% 43% 43
Brazil
Ambev Yes No No 33
Bradesco No Yes No 33
Braskem Yes No Yes 67
Cemig Yes Yes Yes 100
Eletrobras Yes No Yesa 67
Embraer Yes Yes Yesb 100
Fibria Celulosa Yes Yes Yesb 100
Gafisa No No No 0
Gerdau Yes No Yesb 67
Itau Yes No No 33
Oibr Yes No Yesb 67
Petrobras No Yes Yesb 67
Sabesp No No Yes 33
Sid Nacional Yes Yes Yes 100
Vale Yes No No 33
Consistency per country 75% 40% 67% 60
Mexico
Cemex No No No 0
Femsa No No No 0
Gruma Yes Yes No 67
Grupo TMM Yes No No 33
Consistency per country 50% 25% 0% 25
Chile
Banco Chile Yes No Yes 67
Cencosud No No No 0
Corpbanca No No Yesa 33
Endesa No No Yesa 33
Latam Yes No No 33
Consistency per country 40% 0% 60% 40
Colombia
Ecopetrol Yes No Yesa 67
Peru
Buenaventura No No Yes 33
Cementos Pacasma Yes Yes Yes 100
Consistency per country 50% 50% 100% 67
Overall consistency 59% 32% 56% 49

The volatility was tested via the two models: GARCH and EGARCH, thus in some cases only one of the two got the expected result.

a The results were as expected in the GJR GARCH model only: b > a, where b is the coefficient related to the leverage effect before cross-listing and a is the coefficient related to the leverage effect after cross-listing.

b The results were as expected in the EGARCH model only: b > a where b is the coefficient related to the leverage effect before cross-listing and a is the coefficient related to the leverage effect after cross-listing.

In the search for the determinants of differences of outputs across countries, we divide the results before and after the introduction of electronic trading systems in each country2 and, interestingly, we find that, in general, before the introduction of electronic trading systems, there was consistency of 54% of expected results for the whole region, whereas after the introduction of electronic systems, there was a consistency of 38% of expected results. These results suggest that the introduction of electronic systems produces an implicit improvement - in terms of the information environment. Thus, information environment efficiency is improved only slightly due to ADR effects after the mentioned systems are implemented (Table 4). On the other hand, in terms of sectors, and considering only the companies that issued ADRs before the introduction of electronic trading systems, we find that the most consistent sectors are aircraft and paper with 100%, whereas construction and bottling has a 0% consistency. In sum, all tables show the general results regarding the proposed models to test the event of cross-listing through the use of two market microstructure variables: volatility and efficiency, where in 82% of the cases, at least one test resulted as expected. It would be interesting to study the reasons why differences exist across nations and industrial sectors. Moreover, variables such as analyst' coverage and/or valuation could be analyzed in order to further the scope of this study.

Table 4 General results, discerning results regarding the introduction of the electronic system. 

Country/company GARCH - effect
as expected
Market efficiency
test - effect as
expected
News impact
curve - effect as
expected
% of results as
expected
Argentina
Issue ADRs before the system
Banco Macro No Yes No 33
Pampa Yes Yes No 67
Petrobras Arg Yes Yes Yes 100
Consistency 67% 100% 33% 67
Issue ADRs after the system
Alto Palermo No No No 67
Cresud Yes No Yesa 67
IRS No No Yes 33
Telecom No No No 0
Consistency 25% 0% 50% 25
Overall consistency 43% 43% 43% 43
Brazil
Issue ADRs before the system
Ambev Yes No No 33
Bradesco No Yes No 33
Braskem Yes No Yes 67
Cemig Yes Yes Yes 100
Eletrobras Yes No Yesa 67
Embraer Yes Yes Yesb 100
Fibria Celulosa Yes Yes Yesb 100
Gerdau Yes No Yesb 67
Petrobras No Yes Yesb 67
Sid Nacional Yes Yes Yes 100
Vale Yes No No 33
Consistency 82% 55% 73% 70
Issue ADRs after the system
Gafisa No No No 0
Oibr Yes No Yesb 67
Itau Yes No No 33
Sabesp No No Yes 33
Consistency 50% 0% 50% 33
Overall consistency 73% 40% 67% 60
Mexico
Issue ADRs before the system
Cemex No No No 0
Femsa No No No 0
Gruma Yes Yes No 67
Grupo TMM Yes No No 33
Consistency 50% 25% 0% 25
Chile
Issue ADRs after the system
Banco Chile Yes No Yes 67
Cencosud No No No 0
Corpbanca No No Yesa 33
Endesa No No Yesa 33
Latam Yes No No 33
Consistency 40% 0% 60% 40
Colombia
Issue ADRs after the system
Ecopetrol Yes No Yesa 67
Peru
Issue ADRs after the system
Buenaventura No No Yes 33
Cementos Pacasma Yes Yes Yes 100
Overall consistency before the system 72% 55% 50% 54
Overall consistency after the system 44% 6% 63% 38
Overall consistency 59% 32% 56% 49

a The results were as expected in the GARCH model only.

b The results were as expected in the EGARCH model only.

Even though the results obtained from this research are not totally conclusive, given that the analyses were performed on less than a half of the companies that have issued an ADR in Latin America, we have found robust evidence that shows an improvement in the efficiency and volatility in most of the analyzed companies. These results suggest, in general terms, that the information disclosure required in the issuance of an ADR contributes to improve the quality of the microstructure variables. Moreover, these results could suggest that, in somewhat, the stock trading in some Latin American markets is not totally efficient, which could discourage investors to fund productive projects through the stock markets.

Conclusions and future research

It is important to highlight the role that the financial markets have in the development and growth of a country's productive base. Due to the needs of growth and expansion of businesses, financial markets (both capital and debt) represent an important source of financing to promote and foster productive projects that generate wealth and welfare for the society as a whole. Because of this, it is really important that investors feel confident about the quality of a financial market. Efficiency and volatility, among others, are two variables that reflect the quality of a financial market.

This study measures the impact of the issuance of ADRs of Latin American companies over two microstructure variables, volatility and efficiency. For volatility, we estimate two kinds of GARCH models: the traditional GARCH model, which models variation on volatility over time, and the news impact curve, which analyzes the asymmetry of volatility. For efficiency, we estimate ARMA family models in order to determine the predictability of log returns. In related studies, Domowitz et al. (1998) address the issue of cross-listing within the Mexican stock market context, and find a systematic change in volatility, liquidity, returns, and bid-ask spreads result after the cross-listing event. Leyuan et al. (2012) note that foreign cross-listing and delisting are associated with increasing and decreasing long term trading volume, respectively. Chang and Corbitt (2012) do not reject the bonding hypothesis declaring that once companies cross-list, the insiders' returns are lowered.

In regards to the findings, in 82% of the cases, at least one result is as expected. Overall, 49% of the results are as expected, with 59% of companies showing a decrease in volatility, 32% showing improvements in efficiency, and 56% showing a decrease in volatility when facing bad news. Brazil, with the biggest sample, shows an overall consistency of 60%, whereas Mexico is the least consistent with 25%. However, breaking down the findings by sector, the oil and gas exploration sector has a consistency of 78%, and real estate sector has consistency of only 25%. We give further detail regarding efficiency tests, dividing the results into three parts: effect as expected, effect opposite of expected, and no effect, observing that when results are not as expected, the remaining results are not the opposite of what was expected, but rather has no effect. Additionally, dividing the findings before and after the introduction of electronic trading systems in each country, we find that before the introduction of electronic systems, in general, there is a consistency of 54% of expected results in the whole region, whereas after the introduction of electronic systems, there is a consistency of only 38% of expected results, suggesting that with the introduction of electronic systems, there is an implicit improvement in terms of the information environment, which accounts for the reduction of the information environment efficiency due to ADR effects. Further research should examine the reasons for differences across nations and industrial sectors, in addition to the proposed market microstructure variables. For example, analysts' coverage and/or valuation could be added up to such research.

It can be said that this study empirically tests the unobserved effect of a changing information environment event such as cross-listing over two Microstructure variables: volatility and efficiency within the Latin American context, finding novel results throughout the use of innovative models. Nevertheless, further investigation from the market microstructure standpoint on the cross-listing event within a proposed region should be conducted. Furthermore, the proposed measures in this work can be tested with regards to another changing-information environment event, such as the SOX act.

Despite the results obtained from this research are not totally conclusive, given that the analyses were performed on less than a half of the companies that have issued an ADR in Latin America, we have found robust evidence that shows an improvement in the efficiency and volatility in most of the analyzed companies suggesting, in general terms, that the information disclosure required in the issuance of an ADR contributes to improve the behavior of these variables. In addition, these results could suggest that, in somewhat, the stock trading in some Latin American markets is not totally efficient, which could discourage investors to fund productive projects through the stock markets. So, this paper provides some evidence to recognize that the financial markets analyzed in this work should be improved regarding information disclosure, which is a fundamental aspect to foster investors' confidence in order to finance productive projects that foster country's economic growth. This is a pending task for the government authorities.

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1 Enders (2010) defines the leverage effect as the tendency for volatility to decline when returns rise and to rise when returns fall.

2Implementation date of the electronic trading system, in the stock market, for each country included in this research: Argentina: March, 1999. Source: http://www.bcba.sba.com.ar. Brazil: June 1997. Source: http://www.bmfbovespa.com.br/. Chile: November, 1989. Source: http://www.bolchile.cl. Colombia: October, 2001. Source: https://www.bvc.com.co. Mexico: January, 1999. Source: http://www.bmv.com.mx. Peru: October, 1997. Source: http://www.bvl.com.pe.

Received: January 30, 2015; Accepted: November 04, 2015

* Corresponding author.ozavaleta@itesm.mx

Peer Review under the responsibility of Universidad Nacional Autónoma de México.

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