THESIS
2019
xiv, 111 pages : illustrations ; 30 cm
Abstract
In this thesis, our target is to build a model which can simulate intra-day financial market movement by generating tick-level high frequent data based on
historical information (either real or simulated). Such a model can be very
useful in the research of market dynamics and practical areas such as risk management
and trading strategy generation. Previous studies of financial market
simulation usually focus on the settings of hypothesis on micro market dynamics.
Instead, we apply deep learning techniques to build a totally data-driven
market simulation model which is made up by two sub-models. The first one
is a summarization-prediction model, which can predict multi-time-scope future
stock price movement based on historical transaction information with arbitrary
length of pe...[
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In this thesis, our target is to build a model which can simulate intra-day financial market movement by generating tick-level high frequent data based on
historical information (either real or simulated). Such a model can be very
useful in the research of market dynamics and practical areas such as risk management
and trading strategy generation. Previous studies of financial market
simulation usually focus on the settings of hypothesis on micro market dynamics.
Instead, we apply deep learning techniques to build a totally data-driven
market simulation model which is made up by two sub-models. The first one
is a summarization-prediction model, which can predict multi-time-scope future
stock price movement based on historical transaction information with arbitrary
length of period. We also consider the connection between different stocks within
the same market. The second one is the core part of this thesis. It uses outputs
from the summarization-prediction model to generate order data thus simulate
future transaction movement and order book. Our designed model can make
generated orders not only reflect micro market dynamics, but also contain some
sights about longer-term market movement information. Besides, the generation
process is variational, which means even given identical historical data, the
simulated future market movement can be quite diverse.
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