|
|
Showing 1 - 2 of
2 matches in All Departments
The type of research methodologies used in analysing stock returns
in the book is outlined in this technical chapter. The chapter
begins with definitions of useful summary statistics, such as the
mean, standard deviation, coefficient of variation, and their
interpretation. Tests statistics for inferences on population
means, proportions and differences of means, among others, are also
presented. A summary of single equation regression techniques and
the way these are applied through estimation and inference are
outlined, focusing on the interpretation of standard output and
diagnostic tests. The single equation methodology is then extended
to multiple equation systems; the methods of Multivariate Least
Square (MLSQ) of Seemingly Unrelated Regression Equations (SURE)
are Regressions as well as those considered. Time series, ARlMA,
models form also part of the discussion. This is a chapter, which
is aimed at readers who are interested in understanding the
technical background used in deriving results later in the book.
2.2. Summary Statistics for a set of Data A set of numbers which
are generated by agents' actions in the market, and which can take
different values if the agents were to repeat their actions, are
known as random variables. For example, prices of shares in the
stock exchange are determined at each point in time from the
collective actions of agents operating in the market through their
demand and supply decisions. The price of a share is thus a random
variable, and so is the return of the share.
The type of research methodologies used in analysing stock returns
in the book is outlined in this technical chapter. The chapter
begins with definitions of useful summary statistics, such as the
mean, standard deviation, coefficient of variation, and their
interpretation. Tests statistics for inferences on population
means, proportions and differences of means, among others, are also
presented. A summary of single equation regression techniques and
the way these are applied through estimation and inference are
outlined, focusing on the interpretation of standard output and
diagnostic tests. The single equation methodology is then extended
to multiple equation systems; the methods of Multivariate Least
Square (MLSQ) of Seemingly Unrelated Regression Equations (SURE)
are Regressions as well as those considered. Time series, ARlMA,
models form also part of the discussion. This is a chapter, which
is aimed at readers who are interested in understanding the
technical background used in deriving results later in the book.
2.2. Summary Statistics for a set of Data A set of numbers which
are generated by agents' actions in the market, and which can take
different values if the agents were to repeat their actions, are
known as random variables. For example, prices of shares in the
stock exchange are determined at each point in time from the
collective actions of agents operating in the market through their
demand and supply decisions. The price of a share is thus a random
variable, and so is the return of the share.
|
You may like...
Loot
Nadine Gordimer
Paperback
(2)
R367
R340
Discovery Miles 3 400
|