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Felfernig, Alexander
Towards Utility-based Prioritization of Requirements in Open Source Environments
Felfernig, Alexander, Stettinger, Martin, Atas, Müslüm, Samer, Ralph, Nerlich, Jennifer, Scholz, Simon, Tiihonen, Juha, Raatikainen, Mikko
Requirements Engineering in open source projects such as Eclipse faces the challenge of having to prioritize requirements for individual contributors in a more or less unobtrusive fashion. In contrast to conventional industrial software development projects, contributors in open source platforms can decide on their own which requirements to implement next. In this context, the main role of prioritization is to support contributors in figuring out the most relevant and interesting requirements to be implemented next and thus avoid time-consuming and inefficient search processes. In this paper, we show how utility-based prioritization approaches can be used to support contributors in conventional as well as in open source Requirements Engineering scenarios. As an example of an open source environment, we use Bugzilla. In this context, we also show how dependencies can be taken into account in utility-based prioritization processes.
An Efficient Diagnosis Algorithm for Inconsistent Constraint Sets
Felfernig, Alexander, Schubert, Monika, Zehentner, Christoph
Constraint sets can become inconsistent in different contexts. For example, during a configuration session the set of customer requirements can become inconsistent with the configuration knowledge base. Another example is the engineering phase of a configuration knowledge base where the underlying constraints can become inconsistent with a set of test cases. In such situations we are in the need of techniques that support the identification of minimal sets of faulty constraints that have to be deleted in order to restore consistency. In this paper we introduce a divide-and-conquer based diagnosis algorithm (FastDiag) which identifies minimal sets of faulty constraints in an over-constrained problem. This algorithm is specifically applicable in scenarios where the efficient identification of leading (preferred) diagnoses is crucial. We compare the performance of FastDiag with the conflict-directed calculation of hitting sets and present an in-depth performance analysis that shows the advantages of our approach.
Recommender Systems for Configuration Knowledge Engineering
Felfernig, Alexander, Reiterer, Stefan, Stettinger, Martin, Reinfrank, Florian, Jeran, Michael, Ninaus, Gerald
Adaptive user interfaces The knowledge engineering bottleneck is still a major for knowledge engineering have the potential to effectively challenge in configurator projects. In this paper support engineers and domain experts in activities such we show how recommender systems can support as learning (knowledge base understanding), finding (the relevant knowledge base development and maintenance items in the knowledge base), and testing & debugging processes. We discuss a couple of scenarios for (removing the source of faulty behavior).
Consistency-based Merging of Variability Models
Uta, Mathias, Felfernig, Alexander, Schenner, Gottfried, Spoecklberger, Johannes
Globally operating enterprises selling large and complex products and services often have to deal with situations where variability models are locally developed to take into account the requirements of local markets. For example, cars sold on the U.S. market are represented by variability models in some or many aspects different from European ones. In order to support global variability management processes, variability models and the underlying knowledge bases often need to be integrated. This is a challenging task since an integrated knowledge base should not produce results which are different from those produced by the individual knowledge bases. In this paper, we introduce an approach to variability model integration that is based on the concepts of contextual modeling and conflict detection. We present the underlying concepts and the results of a corresponding performance analysis.
KnowledgeCheckR: Intelligent Techniques for Counteracting Forgetting
Stettinger, Martin, Tran, Trang, Pribik, Ingo, Leitner, Gerhard, Felfernig, Alexander, Samer, Ralph, Atas, Muesluem, Wundara, Manfred
Existing e-learning environments primarily focus on the aspect of providing intuitive learning contents and to recommend learning units in a personalized fashion. The major focus of the KnowledgeCheckR environment is to take into account forgetting processes which immediately start after a learning unit has been completed. In this context, techniques are needed that are able to predict which learning units are the most relevant ones to be repeated in future learning sessions. In this paper, we provide an overview of the recommendation approaches integrated in KnowledgeCheckR. Examples thereof are utility-based recommendation that helps to identify learning contents to be repeated in the future, collaborative filtering approaches that help to implement session-based recommendation, and content-based recommendation that supports intelligent question answering. In order to show the applicability of the presented techniques, we provide an overview of the results of empirical studies that have been conducted in real-world scenarios.
An Overview of Recommender Systems and Machine Learning in Feature Modeling and Configuration
Felfernig, Alexander, Le, Viet-Man, Popescu, Andrei, Uta, Mathias, Tran, Thi Ngoc Trang, Atas, Müslüum
Recommender systems support decisions in various domains ranging from simple items such as books and movies to more complex items such as financial services, telecommunication equipment, and software systems. In this context, recommendations are determined, for example, on the basis of analyzing the preferences of similar users. In contrast to simple items which can be enumerated in an item catalog, complex items have to be represented on the basis of variability models (e.g., feature models) since a complete enumeration of all possible configurations is infeasible and would trigger significant performance issues. In this paper, we give an overview of a potential new line of research which is related to the application of recommender systems and machine learning techniques in feature modeling and configuration. In this context, we give examples of the application of recommender systems and machine learning and discuss future research issues.
DirectDebug: Automated Testing and Debugging of Feature Models
Le, Viet-Man, Felfernig, Alexander, Uta, Mathias, Benavides, David, Galindo, José, Tran, Thi Ngoc Trang
Variability models (e.g., feature models) are a common way for the representation of variabilities and commonalities of software artifacts. Such models can be translated to a logical representation and thus allow different operations for quality assurance and other types of model property analysis. Specifically, complex and often large-scale feature models can become faulty, i.e., do not represent the expected variability properties of the underlying software artifact. In this paper, we introduce DirectDebug which is a direct diagnosis approach to the automated testing and debugging of variability models. The algorithm helps software engineers by supporting an automated identification of faulty constraints responsible for an unintended behavior of a variability model. This approach can significantly decrease development and maintenance efforts for such models.
Recommendation Technologies for Configurable Products
Falkner, Andreas (Siemens AG Austria) | Felfernig, Alexander (Graz University of Technology) | Haag, Albert (SAP AG)
State of the art recommender systems support users in the selection of items from a predefined assortment (for example, movies, books, and songs). In contrast to an explicit definition of each individual item, configurable products such as computers, financial service portfolios, and cars are repre sented in the form of a configuration knowledge base that describes the properties of allowed instances. Although the knowledge representation used is different compared to non-confi gurable products, the decision support requirements remain the same: users have to be supported in finding a solution that fits their wishes and needs. In this article we show how recommendation technologies can be applied for supporting the configuration of products.
Recommender Systems: An Overview
Burke, Robin (DePaul University) | Felfernig, Alexander (Graz University of Technology) | Göker, Mehmet H. (Strands Labs, Inc.)
Recommender systems are tools for interacting with large and complex information spaces. The field, christened in 1995, has grown enormously in the variety of problems addressed and techniques employed, as well as in its practical applications. Recommender systems research has incorporated a wide variety of artificial intelligence techniques including machine learning, data mining, user modeling, case-based reasoning, and constraint satisfaction, among others. The purpose of the articles in this special issue is to take stock of the current landscape of recommender systems research and identify directions the field is now taking.
Recommender Systems: An Overview
Burke, Robin (DePaul University) | Felfernig, Alexander (Graz University of Technology) | Göker, Mehmet H. (Strands Labs, Inc.)
Recommender systems are tools for interacting with large and complex information spaces. They provide a personalized view of such spaces, prioritizing items likely to be of interest to the user. The field, christened in 1995, has grown enormously in the variety of problems addressed and techniques employed, as well as in its practical applications. Recommender systems research has incorporated a wide variety of artificial intelligence techniques including machine learning, data mining, user modeling, case-based reasoning, and constraint satisfaction, among others. Personalized recommendations are an important part of many on-line e-commerce applications such as Amazon.com, Netflix, and Pandora. This wealth of practical application experience has provided inspiration to researchers to extend the reach of recommender systems into new and challenging areas. The purpose of the articles in this special issue is to take stock of the current landscape of recommender systems research and identify directions the field is now taking. This article provides an overview of the current state of the field and introduces the various articles in the special issue.