View source: R/data_simulation.R
generatedata_mpin | R Documentation |
Generates a dataset
object or a data.series
object (a list
of dataset
objects) storing simulation parameters as well as aggregate
daily buys and sells simulated following the assumption of the MPIN
model
of \insertCiteErsan2016PINstimation.
generatedata_mpin(series = 1, days = 60, layers = NULL,
parameters = NULL, ranges = list(), ...,
verbose = TRUE)
series |
The number of datasets to generate. |
days |
The number of trading days for which aggregated buys and
sells are generated. Default value is |
layers |
The number of information layers to be included in the
simulated data. Default value is |
parameters |
A vector of model parameters of size |
ranges |
A list of ranges for the different simulation
parameters having named elements |
... |
Additional arguments passed on to the function
|
verbose |
( |
An information layer refers to a given type of information event existing
in the data. The PIN
model assumes a single type of information events
characterized by three parameters for \alpha
, \delta
, and
\mu
. The MPIN
model relaxes the assumption, by relinquishing the
restriction on the number of information event types. When layers = 1
,
generated data fit the assumptions of the PIN
model.
If the argument parameters
is missing, then the simulation parameters are
generated using the ranges specified in the argument ranges
.
If the argument ranges
is list()
, default ranges are used. Using the
default ranges, the simulation parameters are obtained using the following
procedure:
\alpha()
: a vector of length layers
, where each
\alpha
\subitj is uniformly
distributed on (0, 1)
subject to the condition:
\sum \alpha
\subitj< 1
.
\delta()
: a vector of length layers
, where each
\delta
\subitj uniformly distributed
on (0, 1)
.
\mu()
: a vector of length layers
, where each
\mu
\subitj is uniformly distributed
on the interval (0.5 max(
\eb,
\es), 5 max(
\eb,
\es))
.
The \mu
:s are then sorted so the excess trading increases in the
information layers, subject to the condition that the ratio of two
consecutive \mu
's should be at least 1.25
.
: an integer drawn uniformly from the interval (100, 10000)
with step 50
.
: an integer uniformly drawn from ((3/4)
\eb, (5/4)
\eb) with step
50
.
Based on the simulation parameters parameters
, daily buys and sells are
generated by the assumption that buys and sells
follow Poisson distributions with mean parameters (\eb, \es) on days with no
information; with mean parameters
(\eb + \mu
\subitj, \es) on days
with good information of layer j
and
(\eb, \es + \mu
\subitj) on days
with bad information of layer j
.
Considerations for the ranges of simulation parameters: While
generatedata_mpin()
function enables the user to simulate data series
with any set of theoretical parameters,
we strongly recommend the use of parameter sets satisfying below conditions
which are in line with the nature of empirical data and the theoretical
models used within this package.
When parameter values are not assigned by the user, the function, by default,
simulates data series that are in line with these criteria.
Consideration 1: any \mu
's value separable from \eb and \es
values, as well as other \mu
values. Otherwise, the PIN
and MPIN
estimation would not yield expected results.
[x] Sharp example.1: \eb = 1000
; \mu = 1
. In this case, no
information layer can be captured in a healthy way by the use of the models
which relies on Poisson distributions.
[x] Sharp example.2: \es = 1000
,
\mu
\subit1 = 1000
,
and \mu
\subit2 = 1001
.
Similarly, no distinction can be
made on the two simulated layers of informed trading. In real life, this
entails that there is only one type of information which would also be the
estimate of the MPIN
model. However, in the simulated data properties,
there would be 2 layers which will lead the user to make a wrong
evaluation of model performance.
Consideration 2: \eb and \es being relatively close to each other.
When they are far from each other, that would indicate that there is
substantial asymmetry between buyer and seller initiated trades, being a
strong signal for informed trading.
There is no theoretical evidence to indicate that the uninformed trading in
buy and sell sides deviate much from each other in real life.
Besides, numerous papers that work with PIN
model provide close to
each other uninformed intensities.
when no parameter values are assigned by the user, the function generates
data with the condition of sell side uninformed trading to be in the range of
(4/5):=80%
and (6/5):=120%
of buy side uninformed rate.
[x] Sharp example.3: \eb = 1000
, \es = 10000
. In this
case, the PIN
and MPIN
models would tend to consider some of the trading
in sell side to be informed (which should be the actual case).
Again, the estimation results would deviate much from the simulation
parameters being a good news by itself but a misleading factor in model
evaluation.
See for example \insertCiteChengLai2021;textualPINstimation as a
misinterpretation of comparative performances. The paper's findings highly
rely on the simulations with extremely different \eb and \es values
(813-8124 pair and 8126-812).
Returns an object of class dataset
if series=1
, and an
object of class data.series
if series>1
.
# ------------------------------------------------------------------------ #
# There are different scenarios of using the function generatedata_mpin() #
# ------------------------------------------------------------------------ #
# With no arguments, the function generates one dataset object spanning
# 60 days, containing a number of information layers uniformly selected
# from `{1, 2, 3, 4, 5}`, and where the parameters are chosen as
# described in the details.
sdata <- generatedata_mpin()
# The number of layers can be deduced from the simulation parameters, if
# fed directly to the function generatedata_mpin() through the argument
# 'parameters'. In this case, the output is a dataset object with one
# information layer.
givenpoint <- c(0.4, 0.1, 800, 300, 200)
sdata <- generatedata_mpin(parameters = givenpoint)
# The number of layers can alternatively be set directly through the
# argument 'layers'.
sdata <- generatedata_mpin(layers = 2)
# The simulation parameters can be randomly drawn from their corresponding
# ranges fed through the argument 'ranges'.
sdata <- generatedata_mpin(ranges = list(alpha = c(0.1, 0.7),
delta = c(0.2, 0.7),
mu = c(3000, 5000)))
# The value of a given simulation parameter can be set to a specific value by
# setting the range of the desired parameter takes a unique value, instead of
# a pair of values.
sdata <- generatedata_mpin(ranges = list(alpha = 0.4, delta = c(0.2, 0.7),
eps.b = c(100, 7000),
mu = c(8000, 12000)))
# If both arguments 'parameters', and 'layers' are simultaneously provided,
# and the number of layers detected from the length of the argument
# 'parameters' is different from the argument 'layers', the former is used
# and a warning is displayed.
sim.params <- c(0.4, 0.2, 0.9, 0.1, 400, 700, 300, 200)
sdata <- generatedata_mpin(days = 120, layers = 3, parameters = sim.params)
# Display the details of the generated data
show(sdata)
# ------------------------------------------------------------------------ #
# Use generatedata_mpin() to compare the accuracy of estimation methods #
# ------------------------------------------------------------------------ #
# The example below illustrates the use of the function 'generatedata_mpin()'
# to compare the accuracy of the functions 'mpin_ml()', and 'mpin_ecm()'.
# The example will depend on three variables:
# n: the number of datasets used
# l: the number of layers in each simulated datasets
# xc : the number of extra clusters used in initials_mpin
# For consideration of speed, we will set n = 2, l = 2, and xc = 2
# These numbers can change to fit the user's preferences
n <- l <- xc <- 2
# We start by generating n datasets simulated according to the
# assumptions of the MPIN model.
dataseries <- generatedata_mpin(series = n, layers = l, verbose = FALSE)
# Store the estimates in two different lists: 'mllist', and 'ecmlist'
mllist <- lapply(dataseries@datasets, function(x)
mpin_ml(x@data, xtraclusters = xc, layers = l, verbose = FALSE))
ecmlist <- lapply(dataseries@datasets, function(x)
mpin_ecm(x@data, xtraclusters = xc, layers = l, verbose = FALSE))
# For each estimate, we calculate the absolute difference between the
# estimated mpin, and empirical mpin computed using dataset parameters.
# The absolute differences are stored in 'mldmpin' ('ecmdpin') for the
# ML (ECM) method,
mldpin <- sapply(1:n,
function(x) abs(mllist[[x]]@mpin - dataseries@datasets[[x]]@emp.pin))
ecmdpin <- sapply(1:n,
function(x) abs(ecmlist[[x]]@mpin - dataseries@datasets[[x]]@emp.pin))
# Similarly, we obtain vectors of running times for both estimation methods.
# They are stored in 'mltime' ('ecmtime') for the ML (ECM) method.
mltime <- sapply(mllist, function(x) x@runningtime)
ecmtime <- sapply(ecmlist, function(x) x@runningtime)
# Finally, we calculate the average absolute deviation from empirical PIN
# as well as the average running time for both methods. This allows us to
# compare them in terms of accuracy, and speed.
accuracy <- c(mean(mldpin), mean(ecmdpin))
timing <- c(mean(mltime), mean(ecmtime))
comparison <- as.data.frame(rbind(accuracy, timing))
colnames(comparison) <- c("ML", "ECM")
rownames(comparison) <- c("Accuracy", "Timing")
show(round(comparison, 6))
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