Encyclopedia of Machine Learning and Data Mining
Editat de Claude Sammut, Geoffrey I. Webben Limba Engleză Electronic book text – 12 apr 2017
This
authoritative,
expanded
and
updated
second
edition
ofEncyclopedia
of
Machine
Learning
and
Data
Miningprovides
easy
access
to
core
information
for
those
seeking
entry
into
any
aspect
within
the
broad
field
of
Machine
Learning
and
Data
Mining.
A
paramount
work,
its
800
entries
-
about
150
of
them
newly
updated
or
added
-
are
filled
with
valuable
literature
references,
providing
the
reader
with
a
portal
to
more
detailed
information
on
any
given
topic.
Topics
for
theEncyclopedia
of
Machine
Learning
and
Data
Mininginclude
Learning
and
Logic,
Data
Mining,
Applications,
Text
Mining,
Statistical
Learning,
Reinforcement
Learning,
Pattern
Mining,
Graph
Mining,
Relational
Mining,
Evolutionary
Computation,
Information
Theory,
Behavior
Cloning,
and
many
others.
Topics
were
selected
by
a
distinguished
international
advisory
board.
Each
peer-reviewed,
highly-structured
entry
includes
a
definition,
key
words,
an
illustration,
applications,
a
bibliography,
and
links
to
related
literature.
The
entries
are
expository
and
tutorial,
making
this
reference
a
practical
resource
for
students,
academics,
or
professionals
who
employ
machine
learning
and
data
mining
methods
in
their
projects.
Machine
learning
and
data
mining
techniques
have
countless
applications,
including
data
science
applications,
and
this
reference
is
essential
for
anyone
seeking
quick
access
to
vital
information
on
the
topic.
Preț: n/a
Nou
Disponibilitate incertă
Doresc să fiu notificat când acest titlu va fi disponibil:
Se trimite...
Preluare comenzi: 021 569.72.76
Specificații
ISBN-13: 9781489976871
ISBN-10: 1489976876
Ediția:2nd ed. 2017
Editura: Springer Us
Colecția Springer
Locul publicării:New York, NY, United States
ISBN-10: 1489976876
Ediția:2nd ed. 2017
Editura: Springer Us
Colecția Springer
Locul publicării:New York, NY, United States
Public țintă
ResearchCuprins
Abduction.-
Adaptive
Resonance
Theory.-
Anomaly
Detection.-
Bayes
Rule.-
Case-Based
Reasoning.-
Categorical
Data
Clustering.-
Causality.-
Clustering
from
Data
Streams.-
Complexity
in
Adaptive
Systems.-
Complexity
of
Inductive
Inference.-
Computational
Complexity
of
Learning.-
Confusion
Matrix.-
Connections
Between
Inductive
Inference
and
Machine
Learning.-
Covariance
Matrix.-
Decision
List.-
Decision
Lists
and
Decision
Trees.-
Decision
Tree.-
Deep
Learning.-
Density-Based
Clustering.-
Dimensionality
Reduction.-
Document
Classification.-
Dynamic
Memory
Model.-
Empirical
Risk
Minimization.-
Error
Rate.-
Event
Extraction
from
Media
Texts.-
Evolutionary
Clustering.-
Evolutionary
Computation
in
Economics.-
Evolutionary
Computation
in
Finance.-
Evolutionary
Computational
Techniques
in
Marketing.-
Evolutionary
Feature
Selection
and
Construction.-
Evolutionary
Kernel
Learning.-
Evolutionary
Robotics.-
Expectation
Maximization
Clustering.-
Expectation
Propagation.-
Feature
Construction
in
Text
Mining.-
Feature
Selection.-
Feature
Selection
in
Text
Mining.-
Gaussian
Distribution.-
Gaussian
Process.-
Generative
and
Discriminative
Learning.-
Grammatical
Inference.-
Graphical
Models.-
Hidden
Markov
Models.-
Inductive
Inference.-
Inductive
Logic
Programming.-
Inductive
Programming.-
Inductive
Transfer.-
Inverse
Reinforcement
Learning.-
Kernel
Methods.-
K-Means
Clustering.-
K-Medoids
Clustering.-
K-Way
Spectral
Clustering.-
Learning
Algorithm
Evaluation.-
Learning
Graphical
Models.-
Learning
Models
of
Biological
Sequences.-
Learning
to
Rank.-
Learning
Using
Privileged
Information.-
Linear
Discriminant.-
Linear
Regression.-
Locally
Weighted
Regression
for
Control.-
Machine
Learning
and
Game
Playing.-
Manhattan
Distance.-
Maximum
Entropy
Models
for
Natural
Language
Processing.-
Mean
Shift.-
Metalearning.-
Minimum
Description
Length
Principle.-
Minimum
Message
Length.-
Mixture
Model.-
Model
Evaluation.-
Model
Trees.-
Multi
Label
Learning.-
Naïve
Bayes.-
Occam's
Razor.-
Online
Controlled
Experiments
and
A/B
Testing.-
Online
Learning.-
Opinion
Stream
Mining .-
PAC
Learning.-
Partitional
Clustering.-
Phase
Transitions
in
Machine
Learning.
Recenzii
“The
topics
covered
in
the
revised
edition
include
applications,
data
mining,
evolutionary
computation,
graph
mining,
information
theory,
learning
and
logic,
pattern
mining,
reinforcement
learning,
relational
mining,
statistical
learning,
and
text
mining.
…
I
recommend
the
encyclopedia
as
a
valuable
resource
for
libraries
…
.”
(S.
V.
Nagaraj,
Computing
Reviews,
January,
2018)
Notă biografică
Claude
Sammut
is
a
Professor
of
Computer
Science
and
Engineering
at
the
University
of
New
South
Wales,
Australia,
and
Head
of
the
Artificial
Intelligence
Research
Group.
He
is
the
UNSW
node
Director
of
the
ARC
Centre
of
Excellence
for
Autonomous
Systems
and
a
member
of
the
joint
ARC/NH&MRC
project
on
Thinking
Systems.
He
is
on
the
editorial
boards
of
the
Journal
of
Machine
Learning
Research,
the
Machine
Learning
Journal
and
New
Generation
Computing,
and
was
the
chairman
of
the
2007
International
Conference
on
Machine
Learning.
Geoffrey I. Webb is research professor in the faculty of Information Technology at Monash University, Melbourne, Australia. He has published more than 150 scientific papers and is the author of the data mining software package Magnum Opus. His research areas include strategies for strengthening the Naïve Bayes machine learning technique, K-optimal pattern discovery, and work on Occam’s razor. He is editor-in-chief of Springer’s Data Mining and Knowledge Discovery journal, as well as being on the editorial board of Machine Learning.
Geoffrey I. Webb is research professor in the faculty of Information Technology at Monash University, Melbourne, Australia. He has published more than 150 scientific papers and is the author of the data mining software package Magnum Opus. His research areas include strategies for strengthening the Naïve Bayes machine learning technique, K-optimal pattern discovery, and work on Occam’s razor. He is editor-in-chief of Springer’s Data Mining and Knowledge Discovery journal, as well as being on the editorial board of Machine Learning.
Caracteristici
Presents
800
entries
covering
key
concepts
and
terms
in
the
broad
field
of
machine
learning
Updates and informs through in-depth essays and definitions, historical background, key applications, and bibliographies
Supports quick and efficient discovery of information through extensive cross-references
Opens the field to those inquiring into this fast-growing area of research
Includes supplementary material: sn.pub/extras
Updates and informs through in-depth essays and definitions, historical background, key applications, and bibliographies
Supports quick and efficient discovery of information through extensive cross-references
Opens the field to those inquiring into this fast-growing area of research
Includes supplementary material: sn.pub/extras