Index

Abstract

This study investigates the trading dynamics between institutional, foreign and retail investors during Quantitative Easing (QE) Tapering and post-QE exit. An analytical framework is developed to classify all transactions into trading, short-selling or information flow. Notably our results show: Firstly, during QE tapering, there is short-selling by Foreign Investor. Foreign Sales also provides cue to Local Institutional Sales. Net buyers are Local Institution; Secondly, in Post-QE exit, Foreign Sales is the most endogenous variable. Net sellers are Foreign, followed by Local Retail; Thirdly, from 7 to 12 months in Post-QE exit, there are short-selling by Foreign and Local Institution corresponding to sharp market downtrend. Net sellers are Foreign and Retail. Overall, Local Institutional is the net buyer in all sub-periods while Foreign fund is the net seller during Post-QE periods. Our result recognizes the importance of Local Institutional Investors in withstanding the selling pressure of foreign investors during the QE exit periods. This paper contributes to the extant literature by providing the usefulness of trading participant statistics to market players in the backdrop of market uncertainty due to QE exit.  

Keywords: Quantitative easing, Institutional investors, Foreign fund, Market microstructure, Malaysia.

JEL Classification: C10; G11; G14.

Received: 19 August 2019 / Revised: 23 September 2019 / Accepted: 25 October 2019/ Published: 10 December 2019

Contribution/ Originality

This study contributes to the existing literature of trading participant statistics from emerging market during QE and Post-QE periods. Using econometric modelling, this is the first study that analyses the trading dynamics of buying, selling, information flow and short-selling between different market participants in Malaysian stock exchange.


1. INTRODUCTION

A market is a medium that allows buyers and sellers of specific goods and services to interact in order to facilitate an exchange. In the context of a stock market, Harris (2003) suggests that the buy side of the trading industry consists of individuals, funds, firms, and government that use the markets to solve the various problems they face. For the sell side, dealers and brokers will provide exchange services for the buy side. The dealers and brokers will help buy-side traders to trade. Hence, the sell side exists only because the buy side is willing to pay for the services.

The performance of the stock market is highly dependent on the movement of the fund among the trading participants. The outflow of funds will drag down the stock market or vice versa. As per the news report released by Malaysian Industrial Development Finance Berhad (MIDF),  Malaysia bourse recorded the highest net foreign inflow of RM 10.33 billion  (USD2.36 billion)  and the FBM KLCI Index rose by 9.4% to close around 1800 points at the year-end of 2017. 1 This robust scenario was not the case during post-U.S. Quantitative Easing (QE) Period in October 2014 as shown in Figure 1.

The QE policy of which was introduced in early 2009 to alleviate the impact of Lehman Brother’s bankruptcy on financial market have resulted in fund flow to many foreign markets, especially the equity markets. However, the QE policy started to scale down by the Federal Reserve from the fourth quarter of 2013 and officially ended in mid-2014 2. As shown in Figure 1, the KLCI Index declined substantially while USDMYR depreciated during the 12 months post-QE period. The observation was due to the exit of QE policy. This study is motivated to examine the trading behavior of market participants in the pre and post-QE exit, whether foreign institutional investors exert their influence on local market or local investors are more influential in local market.   

Figure-1. Daily trend of USDMYR and KLCI.

Notes: U.S. QE: 28/4/2014 - 28/10/2014. Post-U.S. QE (1 to 6 months): 29/10/2014 - 27/4/2015.
Post-U.S. QE (7 to 12 months): 28/4/2015 – 26/10/2015.
USDMYR denotes USD to MYR exchange rate (USD 1 equal to RM).
KLCI denotes the Kuala Lumpur Composite Index.
Source of USDMYR: MSCI. Source of KLCI: KLSE.

Based on the Bursa Malaysia Trading Participant Statistics, there are mainly three categories of investors, namely local institutional, local retail and foreign investors as shown in Table 1. The microstructure of demand and supply in local bourse is not well documented although the foreign fund has always been linked to the increase or decrease of KLCI Index. Is it true that only foreign fund leads the pack by sending out buying or selling cue?  Does short-selling prevail over profit-taking in the trading activities?  This study aims to fill the gap in this area by answering these questions, especially in the context of pre and post-U.S. QE periods.

Table-1. Bursa Malaysia trading participant statistics.

Date
Local institution net movement (RM m)
Local retail net movement (RM m)
Foreign net movement (RM m)
Total (RM m)
22 Jan 2018
-812.8
-59.2
872.8
13,612.5
15 Jan 2018
-734.5
32.2
702.2
15,971.8
08 Jan 2018
-938.5
166.4
772.2
19,113.5
02 Jan 2018
-841.1
-74.2
915.3
13,018.5
26- Dec 2017
-23.1
-141.9
165.0
8,463.6
18- Dec 2017
86.2
-47.9
-38.3
10,942.8
11- Dec 2017
-453.3
-42.1
495.4
13,648.2
04- Dec 2017
-470.5
132.7
337.9
12,055.3
Total
-4,187.7
-34.8
4,222.4
106,826.2

Source: http://www.malaysiastock.biz/Market-Statistic.aspx?m=w.

In Figure 2, foreign investors had offloaded their stock holdings a few months before the ending of QE. There was a marked increase in the purchase of local equities in the third and seventh month after the end of QE. However, the activities of purchase and sales occurred simultaneously throughout the period.

Figure-2. Monthly trend of foreign purchase and sale.

Source: Bursa Malaysia.

In Figure 3, it seems that local institutional investors followed the foreign investors by selling their holdings from May to June 2014 in line with QE tapering. However, there were periods where their purchases of equities outpaced the sale and vice versa. They increased their purchases in the seventh month after the QE ended in tandem with the Foreign Purchase as well.

Figure-3. Monthly trend of local institutional purchase and sale.

Source: Bursa Malaysia.

Figure-4. Monthly trend of local retail purchase and sale.

Source: Bursa Malaysia.

Figure 4 shows a different story for local retail investors. There was a marked increase in sales and purchases of local equities in months leading to QE tapering. There was a sharp decline in both sales and purchases once the QE ended, followed by a slow V-shape from the third-month post-QE, where sales seemed to outpace purchases throughout 7th to 12th-month post-QE periods.

The role of local retail investors cannot be ignored. Towards this end, Bursa Malaysia has introduced Regulated Short Selling (RSS) for licensed proprietary traders starting with a list of 100 stocks since 2007. Interestingly, RSS has been extended to retail investors from February 2018. 3 However, the retail investor must have a Stock Borrowing and Lending agreement (SPL) with a Broker in order to become a proprietary day trader (PDT) and involve in intraday short selling (IDSS) activities. In short, the RSS policy has created more depth and liquidity for the market by enabling retail investor to do short-selling like institutional and foreign investors.

To further understand the trading behavior between the investors, Table 2 is constructed to compare the purchases and sales volume of the respective group from April 2014 to October 2015. There are three main observations: First, during U.S. QE period, foreign investor is the net buyer of local equities. However, they are the net seller in post-QE from 1st to 12th month (Panel A); Second, local retail investor has been the net seller of local equities across the three sub-periods (Panel A); Third, local institutional investor has always been an important buyer of local equities as compared to others across QE and post-QE periods (Panel B). However, they are also the main seller of local equities across the three periods (Panel C).

Table-2. Trading volume by type of investors (RM Million).

Panel A:  Comparison between sales and purchases by individual group.

Variables
U.S. QE
Obs
Post-U.S.QE
(1 to 6 months)
Obs
Post-U.S. QE
(7 to 12 months)
Obs
LIP
141458.6
136371.3
139717.02
LIS
140846.2
LIP > LIS
130121.1
LIP > LIS
124835.13
LIP > LIS
LRP
54264.5
46507.7
43314.42
LRS
56080.5
LRS > LRP
47373.3
LRS > LRP
44121.49
LRS > LRP
FP
61135.4
61139.2
57019.79
FS
59899
FP > FS
66513.9
FS > FP
71139.61
FS > FP
Panel B:  Comparison of purchases between institutional, foreign and retail investors.
Variables
U.S. QE
Obs
Post-U.S.QE
(1 to 6 months)
Obs
Post-U.S. QE
(7 to 12 months)
Obs
LIP
141458.6
136371.3
139717.02
FP
61135.4
LIP > FP
61139.2
LIP > FP
57019.79
LIP > FP
FS
59899
LIP > FS
66513.9
LIP > FS
71139.61
LIP > FS
LRP
54264.5
LIP > LRP
46507.7
LIP > LRP
43314.42
LIP > LRP
LRS
56080.5
LIP > LRS
47373.3
LIP > LRS
44121.49
LIP > LRS
Panel C:  Comparison of sales between institutional, foreign and retail investors.
Variables
U.S. QE
Obs
Post-U.S.QE
(1 to 6 months)
Obs
Post-U.S. QE
(7 to 12 months)
Obs
LIS
140846.2
130121.1
124835.13
FP
61135.4
LIS > FP
61139.2
LIS > FP
57019.79
LIS > FP
FS
59899
LIS > FS
66513.9
LIS > FS
71139.61
LIS > FS
LRP
54264.5
LIS > LRP
46507.7
LIS  > LRP
43314.42
LIS > LRP
LRS
56080.5
LIS > LRS
47373.3
LIS > LRS
44121.49
LIS > LRS

Notes: All values are in MYR Million. U.S. QE: 28/4/2014 - 28/10/2014.
Post-U.S. QE (1 to 6 months): 29/10/2014 - 27/4/2015.
Post-U.S. QE (7 to 12 months): 28/4/2015 – 26/10/2015. LIP denotes Local Institutional Purchase.
LRP denotes Local Retail Purchase. FP denotes Foreign Purchase.
LIS denotes Local Institutional Sale. LRS denotes Local Retail Sale. FS denotes Foreign Sale.

Studies on the interaction between local and foreign investors are scarce in Malaysia. How was the trading behavior between the three groups of investors? How they interact with each other? Is there any information flow between them? These questions will be addressed by the analytical framework set out in Table 3. The remainder of the paper is organized as follows. Section two develops the theoretical framework for the trading activities, followed by the review of existing literature. Section three describes the data and methodology. Section four discusses the results, and the last section concludes the paper.  

2. LITERATURE REVIEW

Earlier study by Bosworth and Collins (1999) demonstrates the importance of capital flows to developing countries, especially to their savings and investment.  However, study on the interaction between the buyers and sellers of the stock market can be traced back to the work done by Choe et al. (2001). Using intraday data from the Korea Stock Exchange, the study found that domestic individual investors possess more information than foreign and domestic institutional investors over individual stocks. This information advantage can be explained by thefact that foreign investors sell to domestic investors before a stock has a large positive abnormal return and buy from domestic investors before a stock has a large negative abnormal return.

In another study, Choe et al. (2001) reaffirms that the domestic investors in Korean possess more information as relative to foreign investors in trading domestic stocks. Results indicate that stock prices move more against foreign investors than against domestic investors before trades. 

However, in the case of the Taiwan Stock Exchange, Seasholes (2000) found that foreign investors have an information advantage over local investors in Taiwan. As such, foreign investors buy (sell) ahead of good (bad) earnings announcement while local investors do the opposite.

Subsequently, a study done by Huang and Shiu (2005) reveal that foreign institutional investors in Taiwan outperform than local individual and institutional investors. Results demonstrate that foreign institutional investors are better at forecasting local firm performance, and active at monitoring management and demanding regulatory improvements. Therefore, they are information efficient relative to the local investors.

Next, Agudelo (2010) investigates the investors’ behavior in six Asian markets and the Johannesburg Stock Exchange. Results indicate that foreign investors tend to demand liquidity more aggressively than local investors in short term. As such, foreign trade has a negative but transitory impact on the overall liquidity of the market on a daily basis. However, in the longer term, foreign investors can improve liquidity in the domestic market. They are active at monitoring management and transparency of the market. Therefore, foreign investors are information efficient relative to local investors in Asian and Johannesburg Stock Exchange.

Recently, Kim and Yi (2015) employ a large sample of firms listed on the Korea Stock Exchange over 1998 to 2007 to investigate whether and how trading by foreign and domestic institutional investors improves the firm-specific information. Their study defines that the firm-specific information is captured by stock price synchronicity. Results indicate that foreign and domestic institutional investors able to facilitate firm-specific information flow to the market via their trading activities and able to reduce the accrual mispricing. 

In the case of Malaysia, Liew et al. (2018) find that foreign institutional investors are liquidity demander while local institution and local proprietary day traders are liquidity provider. Since the sell side exists only because of the buy side is willing to pay for its services, therefore their study concludes that foreign institutional investors are the main drivers in Bursa Malaysia. Thus, foreign institutional investors possess more information relative to local institutional and retail investors.

The influence of foreign investors on Japanese financial market has been explored by Lau and Yip (2019). Their studies show the dominance of foreign investors, followed by local institutional investors during the QE tapering and post-QE period in 2014 and 2015.

Using the above-mentioned observation as our starting point, this study investigates whether this plausibly exogenous shock of global capital flow brought by the QE policy has implications for emerging market economic activity, especially on equity market of Malaysia.

2.1. Analytical Framework

In terms of trading activities, there could be a different combination of flow between sellers and buyers.  This study develops the following theoretical framework in Table 3 to further analyze the interaction between the investors. A typical transaction from 1 to 8 is for trading purposes. Hypothesis H1 to H10 are set up to test whether there is information flow between different groups of investors.  H11 and H12 are set up to ascertain whether there is short-selling between the group.

Table-3. Analytical framework.

Panel A: Trading between different investor

Type Flow of transaction Nature
1 Local Institutional Purchase followed by Local Institutional Sale Trading
2 Local Institutional Purchase followed by Local Retail Sale Trading
3 Local Institutional Purchase followed by Foreign Sale Trading
4 Foreign Purchase followed by Local Institutional Sale Trading
5 Foreign Purchase followed by Local Retail Sale Trading
6 Foreign Purchase followed by Foreign Sale Trading
7 Local Retail Purchase followed by Local Institutional Sale Trading
8 Local Retail Purchase followed by Local Retail Sale Trading
9 Local Retail Purchase followed by Foreign Sale Trading
Panel B:  Information flow between investor group
Hypotheses Flow of transaction Information
H1 Local Institutional Sale followed by Foreign Sale LIS--->FS
H2 Local Institutional Purchase followed by Foreign Purchase LIP--->FP
H3 Local Institutional Sale followed by Local Retail Sale LIS--->LRS
H4 Local Institutional Purchase followed by Local Retail Purchase LIP--->LRP
H5 Foreign Sale followed by Local Institutional Sale FS--->LIS
H6 Foreign Purchase followed by Local Institutional Purchase FP--->LIP
H7 Local Retail Sale followed by Local Institutional Sale LRS--->LIS
H8 Local Retail Purchase followed by Local Institutional Purchase LRP--->LIP
H9 Local Retail Sale followed by Foreign Sale LRS--->FS
H10 Local Retail Purchase followed by Foreign Purchase LRP--->FP
Panel C: Short-selling within investor group  
Hypotheses Flow of transaction Nature
H11 Local Institutional Sale followed by Local Institutional Purchase (LISàLIP) Short-selling
H12 Foreign Sale followed by Foreign Purchase (FSàFP) Short-selling


It is often argued by literature that local institutional investors have privy to certain information disseminated in a local language, they should have better access to information and resources to build the necessary monitoring capabilities than foreign investors. Hence, H1 and H2 are set up to test for such possibilities and the reverse flow (H5 and H6). Likewise, any sales and purchases by local institutional investors may trigger similar activities by local retail investors (H3 and H4). On the contrary, any purchases and sales by local retail investors would influence the trading activities of institutional and foreign investors. Therefore, H7 to H10 is set to confirm such causality.

3. DATA AND METHODOLOGY

3.1. Data

Daily data from the Bursa Malaysia (formerly known as Kuala Lumpur Stock Exchange) has been used. Sample period from 28 April 2014 to 26 October 2015 has selected  for this study. The sample period is further divided into three sub-periods. The first sub-period is from 28 April 2014 to 28 October 2014. It captures the trading activities during U.S. QE period. The second sub-period is from 29 October 2014 to 27 April 2015 which marks the first six months after the QE ended. The third sub-period is from 28 April 2015 to 26 October 2015 which captures the subsequent six months post-QE period. Table 4 shows the variables used in this study.

Table-4. List of variables.

Variables
Descriptions
Unit of measurement
Sources
LIP
Local institutional purchase
MYR million
Bursa Malaysia
LRP
Local retail purchase
MYR million
Bursa Malaysia
FP
Foreign purchase
MYR million
Bursa Malaysia
LIS
Local institutional sale
MYR million
Bursa Malaysia
LRS
Local retail sale
MYR million
Bursa Malaysia
FS
Foreign sale
MYR million
Bursa Malaysia

Source: Bursa Malaysia.

3.2. Unit Root Test

3.2.1. Augmented-Dickey Fuller (ADF) Test

The Augmented-Dickey Fuller (ADF) test is an extension of the Dickey-Fuller test of which is used to test the unit root a series by adding lagged terms of dependent variables to ensure that error terms are not correlated. Furthermore, by adding the lagged difference term of variable yt, the ADF test enables higher-order serial correlation to be avoided.

The ADF test  as shown in Equation 1 can be explained below:

The test for stationarity can be further explained based on the hypothesis below:

3.2.2. Kwiatkowski-Phillips-Schmidt-Shin (KPSS) Test

However, the power of ADF tests is low if the root is close to a non-stationary boundary. In order to confirm the result of the unit root test, stationarity tests have also been carried out. In this instance, KPSS test by Kwiatkowski et al. (1992) as shown in Equation 2 is used.

To further explain the KPSS test, it could be argued that KPSS is another unit root test with time trend, t, where:

Where μ is constant, ut is a stationary process and the past error Ɛt-1 ~ i.i.d (0,1).

Under the null hypothesis, the series yt is assumed to be stationary. On the contrary, under the alternative hypothesis, yt is non-stationary. So that by default under the null the series will appear stationary.

3.3. Vector Autoregression (VAR)

Vector autoregression model VAR (p) as shown in Equation 3, is an extension of the univariate autoregression model to model multivariate time series model. In the case where the k variables are not cointegrated, a VAR model with lag p is defined as:

3.4. Granger Causality Test

The Granger causality test is used to determine whether one of chosen variable helps in explaining the other. This test will be performed based on Granger (1969) bivariate framework, where if variable x Granger-causes variable y, the mean square error (MSE) of a forecast of y based on prior values of both variable x and y should be lower than the MSE of the forecast which only uses past value of y. The Granger causality is further explained in Equation 5 below:

And testing the joint hypothesis:

H0 : γ1 = γ2 = …..= γp = 0
H1 : At least one of the γ1 is not equal to zero

The asymptotic chi-square test will then determine the Granger causality between variable x and y. If the asymptotic chi-square test rejects H0, therefore short-run dynamics exist from variable x to variable y. Furthermore, if the test statistic is significant, therefore it could be argued that variable x has predictive value for forecasting movement in variable y.

Furthermore, the joint significance of the lagged independent variables can be tested using the F-statistics (the null hypothesis is  H0:βj=α1= 0 in Eq. 1 and H0:βi=α2= 0 in Equation 6.

The test statistics are as below:

Which is computed where RSSR is the residual sum square of the restricted model while the RSSu is the residual sum square of the unrestricted model; n represents a number of observations and p is the order of the VAR model. Based on the hypotheses Ho is rejected if F>Fα,n-kp-1. The outcomes of the Granger Causality test are either unidirectional causality, bidirectional causality or no causality.

3.5. Cross-Correlation Analysis

4. RESULTS

4.1. Descriptive Statistics

In panel A of Table 5, Foreign Purchase (FP) exhibits the highest standard deviation among the purchases and sales of local equity. However, Local Institutional Sale (LIS) is found to have the highest standard deviation in post-U.S. QE period (1 to 12 months in Panel B and C). This implies that LIS is highly volatile relative to retail and foreign investors.

Table-5. Descriptive statistics.

Variables/Periods
Mean
Std. Dev
Skewness
Kurtosis
Jarque-Bera
Obs
Panel A: U.S. QE
LIP
1150.070
215.370
0.279
2.969
1.600 (0.449)
123
LRP
441.175
119.940
1.166
6.529
91.701 (0.000)
123
FP
497.036
344.413
8.033
79.513
31325.850 (0.000)
123
LIS
1145.091
241.942
0.790
5.725
50.849 (0.000)
123
LRS
455.939
119.036
1.358
7.796
155.672 (0.000)
123
FS
486.984
293.674
7.736
75.989
28529.910 (0.000)
123
Panel B: Post-U.S. QE (1 to 6 months)
LIP
1108.710
217.572
0.101
4.054
5.900 (0.052)
123
LRP
378.111
85.643
0.295
4.019
7.101 (0.029)
123
FP
497.067
212.279
2.726
16.529
1090.355 (0.000)
123
LIS
1057.895
228.588
0.390
4.522
14.998 (0.000)
123
LRS
385.149
88.522
0.149
3.266
0.816 (0.665)
123
FS
540.763
198.169
1.120
6.301
81.561 (0.000)
123
Panel C: Post-U.S. QE (7 to 12 months)
LIP
1135.911
215.763
-0.001
2.934
0.023 (0.989)
123
LRP
352.150
62.704
0.287
3.012
1.686 (0.430)
123
FP
463.576
224.865
2.463
11.354
482.024 (0.000)
123
LIS
1014.920
240.389
0.908
4.676
31.297 (0.000)
123
LRS
358.711
70.209
0.502
2.905
5.217 (0.074)
123
FS
578.371
200.793
2.938
20.366
1722.617 (0.000)
123

Notes: All statistics are based on original data values. Values in parentheses are p-value.

4.2. Unit Root Test Results

As shown in panel A of Table 6, during U.S. QE period, LLIP, LFP, LLIS, and LFS are stationary at level. Next, LLRP and LLRS are found to become stationary after taking the first difference. Hence, they are integrated of order one.

Next, in panel B of Table 6, all the purchasers and sellers of local equity are stationary at level. In the subsequent 7 to 12 months after QE ended panel C of Table 6, LLIP and LFS are stationary at level and the rest of the series follow I(1) process. 

4.3. Granger Causality Results

As observed in panel A of Table 7, during QE tapering, there is short-selling by Foreign Investor (H12: FSàFP). There is also information flow from Foreign Sales to Local Institutional Sales (H5: FSàLIS) as well as Local Institutional Purchase to Foreign Purchase (H2: LIPàFP). Interesting to note that Retail Sales also Granger causes Local Institutional Sales (H7)

Table-6.  Unit root and stationary test results.

Variables
ADF test
KPSS test
No trend (Constant)
With trend
No trend (Constant)
With trend
Level
First difference
Level
First difference
Level
First difference
Level
First difference
Panel A: U.S. QE
LLIP
-3.97(1)***
-4.13(1) ***
0.38(8)
0.14(10)
LLRP
-2.63(1)
-10.04(2) ***
-3.09(1)
-10.05(2) ***
0.59(9) **
0.09(6)
0.21(9) **
0.09(7)
LFP
-8.90(0) ***
-9.06(0) ***
0.33(1)
0.09(3)
LLIS
-4.41(1) ***
-4.39(1) ***
0.11(7)
0.11(7)
LLRS
-1.77(3)
-10.03(2) ***
-1.56(3)
-10.02(2) ***
0.53(9) **
0.09(4)
0.22(9) **
0.07(5)
LFS
-8.04(0) ***
-8.20(0) ***
0.34(1)
0.06(2)
Panel B: Post –U.S. QE (1 to 6 months)
LLIP
-6.46(0) ***
-6.45(0) ***
0.09(6)
0.06(6)
LLRP
-4.94(0) ***
-4.99(0) ***
0.20(8)
0.13(8)
LFP
-7.15(0) ***
-7.34(0) ***
0.35(6)
0.08(6)
LLIS
-6.33(0) ***
-6.39(0) ***
0.21(7)
0.10(7)
LLRS
-5.09(0) ***
-5.28(0) ***
0.34(8)
0.13(8)
LFS
-6.40(0) ***
-6.39(0) ***
0.15(7)
0.13(7)
Panel C: Post –U.S. QE (7 to 12 months)
LLIP
-6.01(0) ***
-6.05(0) ***
0.20(7)
0.12(7)
LLRP
-2.89(8)
-15.32(0) ***
-6.98(0) ***
-15.27(0) ***
0.97(7) **
0.11(12)
0.07(5)
0.08(12)
LFP
-2.60(8)
-8.86(0) ***
-3.18(8)
-8.82(3) ***
0.60(6) **
0.16(39)
0.23(4) **
0.15(39)
LLIS
-2.69(8)
-14.91(0) ***
-3.09(7)
-9.27(0) ***
0.48(5) **
0.12(17)
0.19(7) **
0.08(17)
LLRS
-2.90(10)
-14.56(0) ***
-6.80(0) ***
-14.51(0) ***
0.83(7) **
0.04(5)
0.06(5)
0.03(5)
LFS
-7.60(0) ***
-7.60(0) ***
0.22(6)
0.12(6)

Notes:** and *** denote statistical significance at 5% and 1% level respectively.
All estimates are asymptotic Granger Chi-squared statistics. Values in parentheses are the optimal lag length.
L denotes all series have transformed to the natural logarithm.

Table-7. The result of granger causality during U.S. QE and Post-QE.

Panel A: Granger causality test results. U.S. QE: 28/4/2014 - 28/10/2014.

Dependent Variables
Variables
LLIP
∆LLRP
LFP
LLIS
∆LLRS
LFS
LLIP
6.765
(0.454)
5.991
(0.541)
4.855
(0.678)
9.487
(0.219)
5.367
(0.615)
∆LLRP
7.026
(0.426)
7.402
(0.388)
7.111
(0.417)
5.677
(0.578)
8.171
(0.318)
LFP
12.277*
(0.092)
6.553
(0.477)
9.784
(0.201)
8.751
(0.271)
12.233*
(0.093)
LLIS
14.792**
(0.039)
9.387
(0.226)
15.280**
(0.033)
13.601*
(0.059)
17.354**
(0.0153)
∆LLRS
6.265
(0.509)
11.904
(0.104)
11.045
(0.137)
7.458
(0.383)
8.817
(0.266)
LFS
4.433
(0.729)
6.204
(0.516)
2.625
(0.917)
2.397
(0.935)
6.691
(0.462)

Panel B: Granger causality test results. Post-U.S. QE (1 to 6 months): 29/10/2014 - 27/4/2015.

Dependent Variables
Variables
LLIP
LLRP
LFP
LLIS
LLRS
LFS
LLIP
5.516**
(0.019)
0.713
(0.399)
0.786
(0.375)
2.543
(0.111)
0.471
(0.492)
LLRP
0.036
(0.849)
0.017
(0.898)
0.005
(0.941)
0.349
(0.555)
0.004
(0.948)
LFP
2.060
(0.151)
3.259*
(0.071)
2.156
(0.142)
1.592
(0.207)
2.079
(0.149)
LLIS
0.125
(0.724)
3.452*
(0.063)
0.493
(0.483)
0.816
(0.366)
0.648
(0.421)
LLRS
0.117
(0.733)
3.030*
(0.082)
0.565
(0.452)
0.462
(0.497)
0.264
(0.607)
LFS
6.849***
(0.008)
7.364***
(0.006)
5.124**
(0.024)
6.427**
(0.011)
6.328**
(0.012)

Panel C: Granger causality test results. Post-U.S. QE (7 to 12 months): 28/4/2015 – 26/10/2015.

Dependent Variables
Variables
LLIP
∆LLRP
∆LFP
∆LLIS
∆LLRS
LFS
LLIP
0.169
(0.680)
0.954
(0.329)
3.106*
(0.078)
0.450
(0.502)
2.529
(0.112)
∆LLRP
9.246***
(0.002)
2.242
(0.134)
0.134
(0.714)
2.523
(0.112)
1.286
(0.257)
∆LFP
6.450**
(0.011)
0.122
(0.727)
1.567
(0.211)
0.539
(0.463)
18.183***
(0.000)
∆LLIS
1.941
(0.164)
0.214
(0.644)
1.527
(0.217)
3.287*
(0.069)
1.642
(0.199)
∆LLRS
7.714***
(0.005)
0.155
(0.694)
1.764
(0.184)
0.026
(0.872)
2.122
(0.145)
LFS
3.410*
(0.065)
0.015
(0.902)
0.596
(0.440)
0.011
(0.916)
0.049
(0.824)

Notes: *,** and *** denote statistical significance at 10%, 5% and 1% level respectively.
All estimates are asymptotic Granger Chi-squared statistics. Values in parentheses are p-values.
L denotes all series have been transformed into the natural logarithm. ∆ denotes first difference.
 Optimal Lag length selection of VAR for panel A is 7; Panel B is 1, and Panel C is 1.

On Panel B, in the first 6 months Post-QE exit, Foreign Sales (FS) is the most endogenous variable. The sales from Retail and Institutional Investor trigger Foreign Sales (H1 and H9). Interesting to note that Retail Purchases also Granger causes Local Institutional Purchases (H8) and Foreign Purchases (H10). This result concurs with an earlier result in Table 2 that Foreign Sales is more than Foreign Purchases in second sub-period.

On Panel C, there are short-selling activities for Foreign and Institutional Investors (H11 and H12), from 7 to 12 months Post-QE Exit, corresponding to a sharp downward trend of KLCI. Retail sales Granger causes Institutional Sales (H7). Nonetheless, there is some support in buying activities in Local Retail and Foreign Purchases (H4 and H12).  Table 8 summarizes all the results of hypothesis testing conducted from the above tables.

Table-8. Summary results for the hypothesis. testing

Hypotheses Information flow U.S. QE Post- U.S. QE (1 to 6 months) Post- U.S. QE (7 to 12 months)
H1 LIS-->FS - Supported -
H2 LIP-->FP Supported - Supported
H3 LIS-->LRS - - -
H4 LIP-->LRP - - Supported
H5 FS-->LIS Supported - -
H6 FP-->LIP - - -
H7 LRS-->LIS Supported - Supported
H8 LRP-->LIP - Supported -
H9 LRS-->FS - Supported -
H10 LRP-->FP - Supported -
H11 LIS-->LIP(short-selling) - - Supported
H12 FS-->FP (short-selling) Supported - Supported

Notes: U.S. QE: 28/4/2014 - 28/10/2014. Post-U.S. QE (1 to 6 months): 29/10/2014 - 27/4/2015.
Post-U.S. QE (7 to 12 months): 28/4/2015 – 26/10/2015. LIP denotes Local Institutional Purchase.
LRP denotes Local Retail Purchase. FP denotes Foreign Purchase.
LIS denotes Local Institutional Sale. LRS denotes Local Retail Sale. FS denotes Foreign Sale.

5. CROSS-CORRELATION ANALYSIS

This study proceeds to cross-correlation analysis as to investigate the lead-lag relationship between the respective series identified in above hypothesis. In Table 9, all the lead-lag relationship shows positive results with the strongest lead at lag 1 in all cases. These results are consistent with the Granger’ causality test results.

Table-9.  Cross-correlation results.

Hypotheses
Variables
U.S. QE
Post-U.S. QE
Post-U.S. QE
(1 to 6 months)
(7 to 12 months)
Lead
Lag
Day
Strongest
Day
Strongest
Day
Strongest
lead at
lead at
lead at
H1 (sell cue)
LIS
FS
-
-
1
1
-
-
H2 (buy cue)
LIP
FP
1
1
-
-
1-2
1
H4  (buy cue)
LIP
LRP
-
-
-
-
1-3
1
H5 (sell cue)
FS
LIS
1
1
-
-
-
-
H7
LRS
LIS
1-6
1
-
-
1-3
1
H8
LRP
LIP
-
-
1-5
1
-
-
H9
LRS
FS
-
-
1-2
1
-
-
H10
LRP
FP
-
-
1-2
1
-
-

Notes: The approximate critical values at 5% significant level are ±2/√n.

6. CONCLUSION

This study investigates the trading behavior of institutional, foreign and retail investors during pre and post-U.S. QE period in Malaysian stock market. One major contribution of the paper is to provide the theoretical framework on all the possible transaction and classify them into either trading, short-selling and information flow. In addition, this paper provides a definition of how to measure short-selling in the context of information flow. 

Contrary to popular belief that only high-frequency data of 10 minutes in nature can be used, this study uses daily data to model the market microstructure of demand and supply of the various group of trading participants in Malaysian stock market.

This study also provides interesting observations. Firstly, during QE tapering, there is short-selling by Foreign Investor. There is also information flow from Foreign Sales to Institutional Sales as well as Institutional Purchase to Foreign Purchase. Net buyers are Local Institution followed by Foreign Fund. Secondly, in Post-QE exit, Foreign Sales is the most endogenous variable. Net sellers are Foreign, followed by Local Retail Investor; Thirdly, from 7 to 12 months in Post-QE exit, there are short-selling activities for Foreign and Institutional Investors corresponding to KLCI downtrend. Net sellers are Foreign, followed by Local Retail. Overall, Institutional Investor has provided market support as the net buyer in all sub-periods. Due to local advantage, Local Institution provides buying cue while Foreign fund triggers selling cue during the QE tapering. As policy suggestion, local retail investors should be provided with more incentive to trade in local bourse as they also have the role in disseminating information as shown in the post-QE in 2nd sub-period.

Funding: This study received no specific financial support.   
Competing Interests: The authors declare that they have no competing interests. 
Acknowledgement: Both authors contributed equally to the conception and design of the study.

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Views and opinions expressed in this article are the views and opinions of the author(s), Humanities and Social Sciences Letters shall not be responsible or answerable for any loss, damage or liability etc. caused in relation to/arising out of the use of the content.


Footnotes:

1. https://www.klsescreener.com/v2/news/view/325467/First_annual_foreign_net_inflow_since_2013, accessed on 12 October 2019.

2. https://www.clearias.com/quantitative-easing-federal-tapering/, accessed on 12 October 2019.

3. The Edge, May 03, 2018, refer to https://www.klsescreener.com/v2/news/view/373975/investors-allowed-to-short-sell-again