: Shlomo Dubnov, Kevin Burns, Shlomo Argamon
: Shlomo Argamon, Kevin Burns, Shlomo Dubnov
: The Structure of Style Algorithmic Approaches to Understanding Manner and Meaning
: Springer-Verlag
: 9783642123375
: 1
: CHF 87.20
:
: Informatik
: English
: 338
: Wasserzeichen
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Style is a fundamental and ubiquitous aspect of the human experience: Everyone instantly and constantly assesses people and things according to their individual styles, academics establish careers by researching musical, artistic, or architectural styles, and entire industries maintain themselves by continuously creating and marketing new styles. Yet what exactly style is and how it works are elusive: We certainly know it when we see it, but there is no shared and clear understanding of the diverse phenomena that we call style.

The Structure of Style explores this issue from a computational viewpoint, in terms of how information is represented, organized, and transformed in the production and perception of different styles. New computational techniques are now making it possible to model the role of style in the creation of and response to human artifacts-and therefore to develop software systems that directly make use of style in useful ways.

Argamon, Burns, and Dubnov organize the research they have collected in this book according to the three roles that computation can play in stylistics. The first section of the book, Production, provides conceptual foundations by describing computer systems that create artifacts-musical pieces, texts, artworks-in different styles. The second section, Perception, explains methods for analyzing different styles and gleaning useful information, viewing style as a form of communication. The final section, Interaction, deals with reciprocal interaction between style producers and perceivers, in areas such as interactive media, improvised musical accompaniment, and game playing.

The Structure of Style is written for researchers and practitioners in areas including information retrieval, computer art and music, digital humanities, computational linguistics, and artificial intelligence, who can all benefit from this comprehensive overview and in-depth description of current research in this active interdisciplinary field.



Shlomo Argamon is Associate Professor of Computer Science at the Illinois Institute of Technology, Chicago, IL, USA, since 2002. Prior to that, he had held academic positions at Bar-Ilan University, where he held a Fulbright Postdoctoral Fellowship (1994-96), and at the Jerusalem College of Technology. Dr. Argamon received his B.S. (1988) in Applied Mathematics from Carnegie-Mellon University, and his M.Phil. (1991) and Ph.D. (1994) in Computer Science from Yale University, where he was a Hertz Foundation Fellow. His current research interests lie mainly in the use of machine learning methods to aid in functional analysis of natural language, with particular focus on questions of style. During his career, Dr. Argamon has worked on a variety of problems in experimental machine learning, including robotic map-learning, theory revision, and natural language processing, and has published numerous research papers in these areas.

Kevin Burns is a Principal Scientist at the MITRE Corporation. His interest is in computational modeling of cognitive processing, including strategic decisions and visual perception, to improve the design of decision support systems. Kevin holds engineering degrees from the Massachusetts Institute of Technology where he also studied cognitive science and media arts.

Shlomo Dubnov is an Associate Professor in music technology at UCSD. Prior to this he served as invited researcher at the Institute for Research and Coordination of Acoustics and Music (IRCAM) in Paris and was a senior lecturer in the department of communication systems engineering at Ben-Gurion-University in Israel. He holds a PhD in Computer Science from Hebrew University in Jerusalem. His research topics include music improvisation systems, machine learning of musical style, computational aesthetics and questions of human perception and experience of fun.

Preface5
References11
Contents12
Contributors14
Part I Production16
1 Style as Emergence (from What?) 17
Harold Cohen17
References34
2 Whose Style Is It? 35
George Stiny35
2.1 What Makes a Style?35
2.2 An Example You Have to See43
2.3 Changing Styles47
2.4 Whose Style Is It?56
2.5 Background57
3 Style in Music 58
Roger B. Dannenberg58
3.1 Introduction58
3.2 What Is Musical Style?59
3.2.1 An Example: Baroque vs. Classical Style60
3.2.2 Style in Popular Music62
3.3 Computational Approaches to Music Style63
3.3.1 Learning to Recognize Improvisational Styles63
3.3.2 Genre Classification65
3.3.3 Markov Models66
3.3.4 Cope's Experiments in Musical Intelligence67
3.3.5 Emotion and Expression in Music68
3.4 Summary and Conclusion69
References70
4 Generating Texts in Different Styles 71
Ehud Reiter and Sandra Williams71
4.1 Introduction71
4.2 SkillSum72
4.3 Using Style to Make Microplanning Choices75
4.4 Style 1: Explicit Stylistic Control77
4.5 Style 2: Conform to a Genre79
4.5.1 Genre Modelling with Manual Corpus Analysis80
4.5.2 Genre Modelling with Machine Learning and Statistics81
4.6 Style 3: Imitate a Person83
4.6.1 Imitate an Author83
4.6.2 Imitate the Style of the Texts That a Reader Prefers84
4.7 Research Issues85
References86
Part II Perception88
5 The Rest of the Story: Finding Meaning in Stylistic Variation 89
Shlomo Argamon and Moshe Koppel89
5.1 Introduction89
5.1.1 Features90
5.1.2 Overview92
5.2 Style and the Communicative Act92
5.3 Computational Stylistics95
5.3.1 Text Classification96
5.3.2 Classical Features98
5.3.3 Functional Lexical Features98
5.4 Case Study: Author Profiling103
5.4.1 The Corpus103
5.4.2 Classification Accuracy104
5.4.3 Significant Features104
5.5 Case Study: Authorship Verification106
5.6 Case Study: Scientific Rhetoric and Methodology109
5.6.1 Scientific Methodologies109
5.6.2 Experimental and Historical Science111
5.6.3 Geology and Paleontology113
5.7 Discussion114
5.7.1 Case Studies115
5.7.2 Future Directions117
References117
6 Textual Stylistic Variation: Choices, Genres and Individuals 123
Jussi Karlgren123
6.1 Stylistic Variation in Text123
6.2 Detecting Stylistic Variation in Text124
6.3 Genres as Vehicles for Understanding Stylistic Variation125
6.4 Factors Which Determine Stylistic Variation in Text126
6.5 Individual Variation vs Situational Variation128
6.6 Concrete Example: Newsprint and Its Subgenres128
6.7 Measurements and Observanda130
6.8 Aggregation of Measurements131
6.9 Concrete Example: Configurational Features131
6.10 Conclusion: Target Measures134
References134
7 Information Dynamics and Aspects of Musical Perception 136
Shlomo Dubnov136
7.1 Introduction: The Pleasure of Listening136
7.1.1 Structure of Fun?137
7.1.2 Planning and Style: Is Music Emotional or Rational?138
7.1.3 Influential Information and Framing139
7.2 Listening as Analysis of Information Dynamics141
7.2.1 Our Model141
7.2.2 Information Rate as Transmissio