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A Cognition Inspired Approach to Capturing Data Sequences

A Cognition Inspired Approach to Capturing Data Sequences PDF Author: Upuli Pushpika Gunasinghe
Publisher:
ISBN:
Category :
Languages : en
Pages : 342

Book Description
Data in the form of sequences accumulate in many domains such as engineering, health, finance and marketing. Therefore, it is important that models and techniques are developed and utilised to effectively capture and analyse sequential information. Capturing sequences of variable length, capturing the substructure of sequences and extracting useful frequent sequential patterns are three main challenges in the domain of sequence analysis. Furthermore, it is important that the developed techniques can handle sequences with diverse characteristics. It can be observed that humans have the ability to effortlessly comprehend, capture and utilise sequential information in everyday cognitive tasks such as vision, language, motor control and problem solving. It has also been demonstrated in the literature that one of the key factors behind human intelligence is the ability to store and utilise sequences. The work undertaken and reported on in this thesis focuses on building learning models and techniques for sequence analysis through incorporating theories on human cognition. In addition, the application of the proposed techniques to effectively capture and analyse sequences in multiple and diverse application areas is also demonstrated.Addressing the problems of capturing frequent, variable length sequences and their substructure, the Adaptive Suffix Trie (ASTrie) algorithm is first introduced in the thesis. The ASTrie algorithm incorporates the biologically inspired Hebbian learning rule into the suffix trie data structure and transforms it into a flexible learning tool for capturing sequences. Next, the Adaptive Suffix Tree (ASTree) algorithm is introduced as a space efficient successor to the ASTrie. %Both algorithms can capture discrete, long/short, dense/sparse and single dimensional sequences. These are based on the suffix trie and suffix tree data structures which can capture variable length sequences and their substructure. However, these are static data structures which store all suffixes of a given sequence. For most data analysis and data mining tasks capturing all sequences are not required. Rather the focus is on capturing the interesting or frequent patterns of occurrences. Most sequences indexed by time, such as time series data, are continuous in nature. In addition, elements in sequences could consist of multiple dimensions or attributes. In order to analyse continuous, multidimensional sequences, the ASTrie and ASTree algorithms are extended and the Continuous ASTrie (CASTrie) and Continuous ASTree (CASTree) algorithms are proposed. This is carried out through integrating a discretisation layer composed of the Growing Self Organising Map (GSOM), an unsupervised clustering algorithm which can handle continuous and multidimensional elements, in the ASTrie and ASTree algorithms. One of the main practical problems in sequence analysis techniques is the high processing time requirement. This is due to the exponential increase in the number of sequences when the length of sequences increases. In order to increase the efficiency of sequence analysis techniques, a measure is introduced for evaluating the quality of sequences and extracting only a subset of high quality sequences for analysis.The thesis also reports on the application and the efficiency investigations of the proposed models and techniques in diverse domains. First, the proposed algorithms and the quality measure are utilised in the domain of bioinformatics, for improving the efficiency of alignment free sequence comparison methods. Next, a novel sequence based text clustering model is proposed and it is demonstrated that the proposed model improves both the accuracy and the efficiency of the text clustering process while capturing better semantics. The proposed techniques are also applied to the analysis of geometric datasets at multiple levels of granularity. Finally, all components proposed in the thesis are brought together into a single framework for an integrated sequence capture and analysis suite of tools which could be used in diverse domains.

A Cognition Inspired Approach to Capturing Data Sequences

A Cognition Inspired Approach to Capturing Data Sequences PDF Author: Upuli Pushpika Gunasinghe
Publisher:
ISBN:
Category :
Languages : en
Pages : 342

Book Description
Data in the form of sequences accumulate in many domains such as engineering, health, finance and marketing. Therefore, it is important that models and techniques are developed and utilised to effectively capture and analyse sequential information. Capturing sequences of variable length, capturing the substructure of sequences and extracting useful frequent sequential patterns are three main challenges in the domain of sequence analysis. Furthermore, it is important that the developed techniques can handle sequences with diverse characteristics. It can be observed that humans have the ability to effortlessly comprehend, capture and utilise sequential information in everyday cognitive tasks such as vision, language, motor control and problem solving. It has also been demonstrated in the literature that one of the key factors behind human intelligence is the ability to store and utilise sequences. The work undertaken and reported on in this thesis focuses on building learning models and techniques for sequence analysis through incorporating theories on human cognition. In addition, the application of the proposed techniques to effectively capture and analyse sequences in multiple and diverse application areas is also demonstrated.Addressing the problems of capturing frequent, variable length sequences and their substructure, the Adaptive Suffix Trie (ASTrie) algorithm is first introduced in the thesis. The ASTrie algorithm incorporates the biologically inspired Hebbian learning rule into the suffix trie data structure and transforms it into a flexible learning tool for capturing sequences. Next, the Adaptive Suffix Tree (ASTree) algorithm is introduced as a space efficient successor to the ASTrie. %Both algorithms can capture discrete, long/short, dense/sparse and single dimensional sequences. These are based on the suffix trie and suffix tree data structures which can capture variable length sequences and their substructure. However, these are static data structures which store all suffixes of a given sequence. For most data analysis and data mining tasks capturing all sequences are not required. Rather the focus is on capturing the interesting or frequent patterns of occurrences. Most sequences indexed by time, such as time series data, are continuous in nature. In addition, elements in sequences could consist of multiple dimensions or attributes. In order to analyse continuous, multidimensional sequences, the ASTrie and ASTree algorithms are extended and the Continuous ASTrie (CASTrie) and Continuous ASTree (CASTree) algorithms are proposed. This is carried out through integrating a discretisation layer composed of the Growing Self Organising Map (GSOM), an unsupervised clustering algorithm which can handle continuous and multidimensional elements, in the ASTrie and ASTree algorithms. One of the main practical problems in sequence analysis techniques is the high processing time requirement. This is due to the exponential increase in the number of sequences when the length of sequences increases. In order to increase the efficiency of sequence analysis techniques, a measure is introduced for evaluating the quality of sequences and extracting only a subset of high quality sequences for analysis.The thesis also reports on the application and the efficiency investigations of the proposed models and techniques in diverse domains. First, the proposed algorithms and the quality measure are utilised in the domain of bioinformatics, for improving the efficiency of alignment free sequence comparison methods. Next, a novel sequence based text clustering model is proposed and it is demonstrated that the proposed model improves both the accuracy and the efficiency of the text clustering process while capturing better semantics. The proposed techniques are also applied to the analysis of geometric datasets at multiple levels of granularity. Finally, all components proposed in the thesis are brought together into a single framework for an integrated sequence capture and analysis suite of tools which could be used in diverse domains.

The Cognition of Sequences

The Cognition of Sequences PDF Author: Snehlata Jaswal
Publisher: Frontiers Media SA
ISBN: 2889453987
Category :
Languages : en
Pages : 132

Book Description
It is impossible to perceive the innumerable stimuli impinging on our senses, all at once. Out of the myriad stimuli, external and internal, a few are selected for further processing; and even among these, we try to put each in some sort of relation with the others, to be able to make some sense about them all. Time, of course, is an elementary dimension we use to organize our experiences. Thus, the perception of sequences is basic to human cognition. Nevertheless, research addressing sequences is rather sparse. Partly, this is due to difficulty in designing experiments in this area due to huge individual differences. Then, there is the assumption that temporal order has more to do with memory than perception. Another problem is that sequences seem endemic to the auditory world. So much so that some researchers have suggested that sound provides the ‘auditory scaffolding’ for sequencing behavior. Little wonder that research studies addressing sequences in modalities other than audition are extremely rare. This research topic aimed to gather a holistic picture of sequencing behaviour among humans by collecting snapshots of the current research on the topic of sequencing. We particularly sought contributions which addressed sequences beyond the auditory modality. The single unifying criteria for these diverse contributions was that they shed new light on previously unexplored empirical relationships and/or provoked new lines of research with incisive ideas regarding sequencing behavior. Seasoned researchers contributed their views on perception, memory, and production of sequences.

Advances in Brain Inspired Cognitive Systems

Advances in Brain Inspired Cognitive Systems PDF Author: Jinchang Ren
Publisher: Springer
ISBN: 3030005631
Category : Computers
Languages : en
Pages : 881

Book Description
This book constitutes the refereed proceedings of the 9th International Conference on Advances in Brain Inspired Cognitive Systems, BICS 2018, held in Xi’an, China, in July 2018. The 83 papers presented in this volume were carefully reviewed and selected from 137 submissions. The papers were organized in topical sections named: neural computation; biologically inspired systems; image recognition: detection, tracking and classification; data analysis and natural language processing; and applications.

Biologically Inspired Cognitive Architectures 2018

Biologically Inspired Cognitive Architectures 2018 PDF Author: Alexei V. Samsonovich
Publisher: Springer
ISBN: 331999316X
Category : Technology & Engineering
Languages : en
Pages : 377

Book Description
The book focuses on original approaches intended to support the development of biologically inspired cognitive architectures. It bridges together different disciplines, from classical artificial intelligence to linguistics, from neuro- and social sciences to design and creativity, among others. The chapters, based on contributions presented at the Ninth Annual Meeting of the BICA Society, held in on August 23-24, 2018, in Prague, Czech Republic, discuss emerging methods, theories and ideas towards the realization of general-purpose humanlike artificial intelligence or fostering a better understanding of the ways the human mind works. All in all, the book provides engineers, mathematicians, psychologists, computer scientists and other experts with a timely snapshot of recent research and a source of inspiration for future developments in the broadly intended areas of artificial intelligence and biological inspiration.

Advances in Brain Inspired Cognitive Systems

Advances in Brain Inspired Cognitive Systems PDF Author: Cheng-Lin Liu
Publisher: Springer
ISBN: 3319496859
Category : Computers
Languages : en
Pages : 379

Book Description
This book constitutes the refereed proceedings of the 8th International Conference on Brain Inspired Cognitive Systems, BICS 2016, held in Beijing, China, in November 2016. The 32 full papers presented were carefully reviewed and selected from 43 submissions. They discuss the emerging areas and challenges, present the state of the art of brain-inspired cognitive systems research and applications in diverse fields by covering many topics in brain inspired cognitive systems related research including biologically inspired systems, cognitive neuroscience, models consciousness, and neural computation.

Brain-Inspired Cognitive Architectures for Artificial Intelligence: BICA*AI 2020

Brain-Inspired Cognitive Architectures for Artificial Intelligence: BICA*AI 2020 PDF Author: Alexei V. Samsonovich
Publisher: Springer Nature
ISBN: 3030655962
Category : Technology & Engineering
Languages : en
Pages : 613

Book Description
The book focuses on original approaches intended to support the development of biologically inspired cognitive architectures. It bridges together different disciplines, from classical artificial intelligence to linguistics, from neuro- and social sciences to design and creativity, among others. The chapters, based on contributions presented at the Eleventh Annual Meeting of the BICA Society, held on November 10-14, 2020, in Natal, Brazil, discuss emerging methods, theories and ideas towards the realization of general-purpose humanlike artificial intelligence or fostering a better understanding of the ways the human mind works. All in all, the book provides engineers, mathematicians, psychologists, computer scientists and other experts with a timely snapshot of recent research and a source of inspiration for future developments in the broadly intended areas of artificial intelligence and biological inspiration.

Biologically Inspired Cognitive Architectures (BICA) for Young Scientists

Biologically Inspired Cognitive Architectures (BICA) for Young Scientists PDF Author: Alexei V. Samsonovich
Publisher: Springer
ISBN: 3319639404
Category : Technology & Engineering
Languages : en
Pages : 373

Book Description
This book includes papers from the second year of the prestigious First International Early Research Career Enhancement School (FIERCES) series: a successful, new format that puts a school in direct connection with a conference and a social program, all dedicated to young scientists. Reflecting the friendly, social atmosphere of excitement and opportunity, the papers represent a good mixture of cutting-edge research focused on advances towards the most inspiring challenges of our time and first ambitious attempts at major challenges by as yet unknown, talented young scientists. In this second year of FIERCES, the BICA Challenge (to replicate all the essential aspects of the human mind in the digital environment) meets the Cybersecurity Challenge (to protect all the essential assets of the human mind in the digital environment), which is equally important in our age. As a result, the book fosters lively discussions on today’s hot topics in science and technology, and stimulates the emergence of new cross-disciplinary, cross-generation and cross-cultural collaboration. FIERCES 2017, or the First International Early Research Career Enhancement School on Biologically Inspired Cognitive Architectures and Cybersecurity, was held on August 1–5 at the Baltschug Kempinski in Moscow, Russia.

Biologically Inspired Approaches to Advanced Information Technology

Biologically Inspired Approaches to Advanced Information Technology PDF Author: Auke Jan Ijspeert
Publisher: Springer Science & Business Media
ISBN: 3540233393
Category : Computers
Languages : en
Pages : 527

Book Description
The evolution of the Internet has led us to the new era of the information infrastructure. As the information systems operating on the Internet are getting larger and more complicated, it is clear that the traditional approaches based on centralized mechanisms are no longer meaningful. One typical example can be found in the recent growing interest in a P2P (peer-to-peer) computing paradigm. It is quite different from the Web-based client-server systems, which adopt essentially centralized management mechanisms. The P2P computing environment has the potential to overcome bottlenecks in Web computing paradigm, but it introduces another difficulty, a scalability problem in terms of information found, if we use a brute-force flooding mechanism. As such, conventional information systems have been designed in a centralized fashion. As the Internet is deployed on a world scale, however, the information systems have been growing, and it becomes more and more difficult to ensure fau- free operation. This has long been a fundamental research topic in the field. A complex information system is becoming more than we can manage. For these reasons, there has recently been a significant increase in interest in biologically inspired approaches to designing future information systems that can be managed efficiently and correctly.

Bio-inspired Modeling of Cognitive Tasks

Bio-inspired Modeling of Cognitive Tasks PDF Author: José Mira
Publisher: Springer
ISBN: 3540730532
Category : Computers
Languages : en
Pages : 646

Book Description
The first of a two-volume set, this book constitutes the refereed proceedings of the Second International Work-Conference on the Interplay between Natural and Artificial Computation, IWINAC 2007, held in La Manga del Mar Menor, Spain in June 2007. It includes all the contributions mainly related with theoretical, conceptual and methodological aspects linking AI and knowledge engineering with neurophysiology, clinics and cognition.

Biologically Inspired Cognitive Architectures 2012

Biologically Inspired Cognitive Architectures 2012 PDF Author: Antonio Chella
Publisher: Springer Science & Business Media
ISBN: 3642342744
Category : Technology & Engineering
Languages : en
Pages : 361

Book Description
The challenge of creating a real-life computational equivalent of the human mind requires that we better understand at a computational level how natural intelligent systems develop their cognitive and learning functions. In recent years, biologically inspired cognitive architectures have emerged as a powerful new approach toward gaining this kind of understanding (here “biologically inspired” is understood broadly as “brain-mind inspired”). Still, despite impressive successes and growing interest in BICA, wide gaps separate different approaches from each other and from solutions found in biology. Modern scientific societies pursue related yet separate goals, while the mission of the BICA Society consists in the integration of many efforts in addressing the above challenge. Therefore, the BICA Society shall bring together researchers from disjointed fields and communities who devote their efforts to solving the same challenge, despite that they may “speak different languages”. This will be achieved by promoting and facilitating the transdisciplinary study of cognitive architectures, and in the long-term perspective – creating one unifying widespread framework for the human-level cognitive architectures and their implementations. This book is a proceedings of the Third Annual Meeting of the BICA Society, which was hold in Palermo-Italy from October 31 to November 2, 2012. The book describes recent advances and new challenges around the theme of understanding how to create general-purpose humanlike artificial intelligence using inspirations from studies of the brain and the mind.