Data Mining: Practical Machine Learning Tools and Techniques with Java Implementations

Cover
Morgan Kaufmann, 2000 - 371 Seiten

"This is a milestone in the synthesis of data mining, data analysis, information theory, and machine learning."

-Jim Gray, Microsoft Research


This book offers a thorough grounding in machine learning concepts as well as practical advice on applying machine learning tools and techniques in real-world data mining situations. Inside, you'll learn all you need to know about preparing inputs, interpreting outputs, evaluating results, and the algorithmic methods at the heart of successful data mining-including both tried-and-true techniques of the past and Java-based methods at the leading edge of contemporary research. If you're involved at any level in the work of extracting usable knowledge from large collections of data, this clearly written and effectively illustrated book will prove an invaluable resource.


Complementing the authors' instruction is a fully functional platform-independent Java software system for machine learning, available for download. Apply it to the sample data sets provided to refine your data mining skills, apply it to your own data to discern meaningful patterns and generate valuable insights, adapt it for your specialized data mining applications, or use it to develop your own machine learning schemes.


Features



* Helps you select appropriate approaches to particular problems and to compare and evaluate the results of different techniques.


* Covers performance improvement techniques, including input preprocessing and combining output from different methods.


* Comes with downloadable machine learning software: use it to master the techniques covered inside, apply it to your own projects, and/or customize it to meet special needs.

 

Inhalt

III
xvii
V
xviii
VI
xx
VII
xxi
VIII
xxiii
IX
xxiv
XI
1
XII
3
CVI
156
CVII
157
CVIII
158
CIX
159
CX
160
CXI
161
CXII
162
CXIII
163

XIII
5
XIV
6
XV
7
XVI
10
XVII
11
XVIII
11
XIX
11
XX
12
XXI
13
XXII
14
XXIII
15
XXIV
16
XXV
17
XXVI
20
XXVII
22
XXVIII
25
XXIX
26
XXX
29
XXXI
33
XXXII
36
XXXIII
37
XXXIV
39
XXXV
40
XXXVI
41
XXXVII
42
XXXVIII
43
XXXIX
45
XLI
46
XLII
47
XLIII
51
XLIV
52
XLV
55
XLVI
58
XLVII
60
XLVIII
63
XLIX
64
L
65
LI
66
LII
68
LIII
69
LIV
70
LV
73
LVI
76
LVII
77
LVIII
81
LIX
82
LX
85
LXII
86
LXIV
91
LXV
92
LXVI
93
LXVIII
96
LXIX
99
LXX
100
LXXII
101
LXXIV
102
LXXVI
103
LXXVII
104
LXXVIII
107
LXXIX
108
LXXX
111
LXXXI
113
LXXXII
115
LXXXIV
116
LXXXV
117
LXXXVI
121
LXXXVII
122
LXXXVIII
123
LXXXIX
124
XC
125
XCI
127
XCII
129
XCIII
132
XCIV
133
XCV
135
XCVI
138
XCVII
142
XCVIII
143
XCIX
145
CI
147
CII
149
CIII
150
CIV
152
CV
155
CXIV
165
CXV
166
CXVI
169
CXVII
172
CXVIII
175
CXIX
176
CXX
177
CXXI
179
CXXII
181
CXXIII
182
CXXV
183
CXXVI
184
CXXVII
185
CXXVIII
187
CXXIX
188
CXXX
189
CXXXI
190
CXXXII
191
CXXXIII
192
CXXXIV
193
CXXXV
196
CXXXVI
197
CXXXVII
198
CXXXVIII
199
CXXXIX
200
CXL
205
CXLI
206
CXLII
209
CXLIII
211
CXLIV
213
CXLV
214
CXLVI
217
CXLVIII
220
CXLIX
221
CL
223
CLI
224
CLII
226
CLIII
227
CLIV
231
CLV
232
CLVI
234
CLVII
235
CLIX
236
CLX
237
CLXI
238
CLXII
239
CLXIII
242
CLXIV
246
CLXV
248
CLXVI
251
CLXVII
253
CLXIX
255
CLXX
259
CLXXI
260
CLXXII
262
CLXXIII
264
CLXXIV
265
CLXXVI
267
CLXXVII
270
CLXXVIII
271
CLXXIX
274
CLXXX
277
CLXXXI
282
CLXXXII
284
CLXXXIII
285
CLXXXIV
287
CLXXXVI
294
CLXXXVII
302
CLXXXIX
304
CXC
305
CXCI
309
CXCIII
310
CXCIV
313
CXCVI
315
CXCVII
317
CXCVIII
319
CC
321
CCI
322
CCII
323
CCIII
324
CCIV
327
CCV
339
CCVI
359
Urheberrecht

Andere Ausgaben - Alle anzeigen

Häufige Begriffe und Wortgruppen

Beliebte Passagen

Seite ii - Management of Heterogeneous and Autonomous Database Systems Edited by Ahmed Elmagarmid, Marek Rusinkiewicz, and Amit Sheth Object-Relational DBMSs: Tracking the Next Great Wave, Second Edition Michael Stonebraker and Paul...
Seite xv - This chapter contains part of the research on non-standard work that has been funded by the New Zealand Foundation for Research, Science and Technology and I acknowledge, with gratitude, that support.
Seite ii - Edited by Francois Bancilhon, Claude Delobel, and Paris Kanellakis Database Transaction Models for Advanced Applications Edited by Ahmed K. Elmagarmid A Guide to Developing Client/Server SQL Applications Setrag Khoshafian, Arvola Chan, Anna Wong, and Harry KT Wong The Benchmark Handbook for Database and Transaction Processing Systems, Second Edition Edited by Jim Gray Camelot and Avalon: A Distributed Transaction Facility Edited by Jeffrey L. Eppinger, Lily B. Mummert, and Alfred Z. Spector Readings...

Autoren-Profil (2000)

Ian H. Witten is a professor of computer science at the University of Waikato in New Zealand. He directs the New Zealand Digital Library research project. His research interests include information retrieval, machine learning, text compression, and programming by demonstration. He received an MA in Mathematics from Cambridge University, England; an MSc in Computer Science from the University of Calgary, Canada; and a PhD in Electrical Engineering from Essex University, England. He is a fellow of the ACM and of the Royal Society of New Zealand. He has published widely on digital libraries, machine learning, text compression, hypertext, speech synthesis and signal processing, and computer typography.

Bibliografische Informationen