Text Mining: Applications and Theory presents the
state–of–the–art algorithms for text mining from both
the academic and industrial perspectives. The
contributors span several countries and scientific
domains: universities, industrial corporations, and
government laboratories, and demonstrate the use of
techniques from machine learning, knowledge discovery,
natural language processing and information retrieval to
design computational models for automated text analysis
and mining. This volume demonstrates how advancements in
the fields of applied mathematics, computer science,
machine learning, and natural language processing can
collectively capture, classify, and interpret words and
their contexts. As suggested in the preface, text
mining is needed when “words are not enough.” This book:
Provides state–of–the–art algorithms and techniques for
critical tasks in text mining applications, such as
clustering, classification, anomaly and trend detection,
and stream analysis. Presents a survey of text
visualization techniques and looks at the multilingual
text classification problem. Discusses the issue of
cybercrime associated with chatrooms. Features advances
in visual analytics and machine learning along with
illustrative examples. Is accompanied by a supporting
website featuring datasets. Applied mathematicians,
statisticians, practitioners and students in computer
science, bioinformatics and engineering will find this
book extremely useful.
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