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A key strategy in machine learning is to break down a problem into
smaller and more manageable parts, then process data or unknown
variables recursively. Sequential Monte Carlo (SMC) is a technique
for solving statistical inference problems recursively. Over the
last 20 years, SMC has been developed to enabled inference in
increasingly complex and challenging models in Signal Processing
and Statistics. This monograph shows how the powerful technique can
be applied to machine learning problems such as probabilistic
programming, variational inference and inference evaluation to name
a few.Written in a tutorial style, Elements of Sequential Monte
Carlo introduces the basics of SMC, discusses practical issues, and
reviews theoretical results before guiding the reader through a
series of advanced topics to give a complete overview of the topic
and its application to machine learning problems. This monograph
provides an accessible treatment for researchers of a topic that
has recently gained significant interest in the machine learning
community.
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