10 results on '"FOTIA L"'
Search Results
2. Trust and Reputation in the Internet of Things: State-of-the-Art and Research Challenges
- Author
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Fabrizio Messina, Giuseppe M. L. Sarné, Lidia Fotia, Domenico Rosaci, Giancarlo Fortino, Fortino, G, Fotia, L, Messina, F, Rosaci, D, and Sarné, G
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General Computer Science ,Computer science ,Smart objects ,media_common.quotation_subject ,Internet of Things ,02 engineering and technology ,computer.software_genre ,Intelligent agent ,multi-agent system ,0202 electrical engineering, electronic engineering, information engineering ,General Materials Science ,Architecture ,Edge computing ,media_common ,Multi-agent system ,Principal (computer security) ,General Engineering ,020206 networking & telecommunications ,reputation ,trust ,Data science ,Key (cryptography) ,020201 artificial intelligence & image processing ,edge/fog computing ,lcsh:Electrical engineering. Electronics. Nuclear engineering ,Internet of Thing ,computer ,lcsh:TK1-9971 ,Reputation - Abstract
This paper deals with the principal aspects emerging from the application of trust techniques to the IoT domains with respect to the particular viewpoint of an IoT environment. We consider intelligent agents technology to add social behavior to the community of the smart objects, and we analyze the fundamental role of the concepts of trust and reputation in this perspective. Also, we analyze the existing architectures for IoT and explain how to integrate IoT with fog/edge computing. Besides discussing the main proposals present in the literature, the key contribution of this paper consists of providing a comparative study of the main current architectures for modeling trust in IoT environments. In this setting, we propose a comparison based on the important characteristics of the IoT layer and the architecture type. Such an analysis allows us to highlight both advantages and limitations of each approach, and to discuss the emerging research challenges.
- Published
- 2020
3. A trusted consensus fusion scheme for decentralized collaborated learning in massive IoT domain
- Author
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Mohammad Mehedi Hassan, Giuseppe M. L. Sarné, Zuodong Liang, Giancarlo Fortino, Chien-Ming Chen, Ke Wang, Lidia Fotia, Wang, K, Chen, C, Liang, Z, Hassan, M, Sarne, G, Fotia, L, and Fortino, G
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Security analysis ,Edge device ,Process (engineering) ,Computer science ,media_common.quotation_subject ,02 engineering and technology ,Computer security ,computer.software_genre ,Domain (software engineering) ,Trust evaluation ,Blockchain ,Order (exchange) ,0202 electrical engineering, electronic engineering, information engineering ,Consortium chain ,media_common ,Collaborated learning ,Consensus fusion ,020206 networking & telecommunications ,Sensor fusion ,Incentive ,Hardware and Architecture ,Signal Processing ,020201 artificial intelligence & image processing ,computer ,Software ,Information Systems ,Reputation - Abstract
In a massive IoT systems, large amount of data are collected and stored in clouds, edge devices, and terminals, but the data are mostly isolated. For many new demands of various intelligent applications, self-organized collaborated learning on those data to achieve group decisions has been a new trend. However, in order to reach the goal of group decisions, trust problems on data fusion and model fusion should be solved since the participants may not be trusted. We propose a consistent and trust fusion method with the consortium chain to reach a consensus, and complete the self-organized trusted decentralized collaborated learning. In each consensus process, consensus candidates check others’ trust levels to ensure that they tends to fuse consensus with users with high trust, where the trust levels are evaluated by scores according to their historical behaviors in the past consensus process and stored in the public ledger of blockchain. A trust rewards and punishments method is designed to realize trust incentive consensus, the candidates with higher trust levels have more rights and reputation in the consensus. Simulation results and security analysis show that the method can effectively defend malicious users and data, improve the trust perception performance of the whole federated learning network, and make the federated learning more trusted and stable.
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- 2021
4. Using local trust measures to form agent CoT groups1
- Author
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Giuseppe M. L. Sarné, Fabrizio Messina, Giancarlo Fortino, Lidia Fotia, Domenico Rosaci, Fortino, G, Fotia, L, Messina, F, Rosaci, D, and Sarne, G
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Cloud of thing ,business.industry ,Computer science ,internet of thing ,media_common.quotation_subject ,Internet privacy ,multiagent system ,reputation ,trust ,02 engineering and technology ,Cloud of things ,Artificial Intelligence ,020204 information systems ,Voting ,voting ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,business ,Internet of Things ,Reputation ,media_common - Abstract
IoT devices dealing with complex tasks usually require powerful hardware capabilities or, as a possible alternative, to get on the Cloud those resources they need. When an IoT device is “virtualized” on the Cloud, it can take benefit from relying on one or more software agents and their social skills to mutually interact and cooperate. In particular, in a Cloud of Things scenario, where agents cooperate to perform complex tasks, the choice of a partner is a sensitive question. In such a context, when an agent is not capable to perform a reliable choice then, like real social communities, it can ask information to other agents it considers as trustworthy. In order to support agents in their partner choices, we conceived a local trust model, based on reliability and reputation measures coming from its ego-network, adopted to partition the agents in groups by exploiting trust relationships to allow agents to be associated with the most reliable partners. To this aim, we designed an algorithm to form agent groups by exploiting available local trust measures and the results obtained in a simulated scenario confirmed the potential advantages of this approach.
- Published
- 2020
5. Using Trust and 'Utility' for Group Formation in the Cloud of Things
- Author
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Giuseppe M. L. Sarné, Giancarlo Fortino, Fabrizio Messina, Lidia Fotia, Domenico Rosaci, Montella R.,Ciaramella A.,Fortino G.,Guerrieri A.,Liotta A., Fortino, G, Fotia, L, Messina, F, Rosaci, D, and Sarnè, G
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Exploit ,Computer science ,business.industry ,Distributed computing ,media_common.quotation_subject ,Cloud of Things ,Cloud computing ,Trust ,Partition (database) ,Ego networks ,Cloud of things ,Utility ,business ,Reputation ,media_common - Abstract
In this paper we consider a CoT (Cloud of Things) scenario where agents cooperate to perform complex tasks. Agents have to select reliable partners and, in some cases, they don’t have enough information about their peers. In order to support agents in their choice and to maximize the benefits during their cooperation, we combined several contributions. First of all, we designed a trust model which exploits the recommendations coming from the ego networks of the agents. Secondly, we propose to partition the agents in groups by exploiting trust relationships to allow agents to interact with the most reliable partners. To this aim, we designed an algorithm named DAGA (Distributed Agent Grouping Algorithm) to form agent groups by exploiting available reliability and reputation and the results obtained in a simulated scenario confirmed its potential advantages.
- Published
- 2019
6. Providing Recommendations in Social Networks by Integrating Local and Global Reputation
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Giuseppe M. L. Sarné, Domenico Rosaci, Lidia Fotia, Pasquale De Meo, Fabrizio Messina, DE MEO, P, Fotia, L, Messina, F, Rosaci, D, and Sarne', G
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Computer science ,media_common.quotation_subject ,02 engineering and technology ,Order (exchange) ,020204 information systems ,0202 electrical engineering, electronic engineering, information engineering ,Trustworthine ,Relevance (information retrieval) ,Dimension (data warehouse) ,Reputation ,Trustworthiness ,media_common ,Online social network ,Social network ,business.industry ,Perspective (graphical) ,Complex network ,Online community ,Ego-network ,Data science ,Hardware and Architecture ,020201 artificial intelligence & image processing ,business ,Software ,Information Systems - Abstract
An important issue in Online Social Networks consists of the capability to generate useful recommendations for users, as peers to contact in order to establish friendships and collaborations, interesting resources to use and so on. This implies the necessity of evaluating the trustworthiness a user should assign to other members of his/her online community. In the past literature, a common approach for predicting trust is represented by a number of models that rely on “global” reputation: they are based on the evaluation of the behaviors of the users, that is shared across the entire community. These models, however, show an evident limitation due to the difficulty of taking the effects of malicious or fraudulent behaviors into account, thus making the feedback themselves. Other approaches, that consider also a local perspective of the trust, are limited by the fact they are supervised, i.e. they need a training phase in generating recommendations. In this paper, we propose a novel approach to extend global reputation models with a local reputation, computed on the ego-network of the user, by means of an unsupervised approach. We characterize our model by considering (i) the different relevance given to local and global reputation, (ii) the threshold that is used to consider a user unreliable and (iii) the dimension of the user’s ego-network. Experiments performed on a real data set show that global reputation is useful only if the size of the user ego-network is small, as in the case of a newcomer. Moreover, the combined usage of global and local reputation leads to predict the expected trust with a high level of precision.
- Published
- 2018
7. Forming Groups in the Cloud of Things Using Trust Measures
- Author
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Lidia Fotia, Fabrizio Messina, Domenico Rosaci, Giancarlo Fortino, Giuseppe M. L. Sarné, Del Ser J., Osaba E., Bilbao M., Sanchez-Medina J., Vecchio M., Yang XS, Fortino, G, Fotia, L, Messina, F, Rosaci, D, and Sarne', G
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Group formation ,Computer science ,business.industry ,Reliability (computer networking) ,media_common.quotation_subject ,020206 networking & telecommunications ,Context (language use) ,Cloud computing ,02 engineering and technology ,Computer security ,computer.software_genre ,Cloud of Thingh ,Software agent ,Order (business) ,0202 electrical engineering, electronic engineering, information engineering ,Key (cryptography) ,020201 artificial intelligence & image processing ,Trust measure ,Cluster analysis ,business ,computer ,Reputation ,media_common - Abstract
The need of managing complex and interactive activities is becoming a key challenge in the “Internet of Things” (IoT) and leads to request large hardware and power resources. A possibility of facing such a problem is represented by the possibility of virtualizing physical IoT environments over the so called Cloud-of-Things (CoT), where each device is associated with one or more software agents working in the Cloud on its behalf. In this open and heterogeneous context, IoT devices obtain significant advantages by the social cooperation of software agents, and the selection of the most trustworthy partners for cooperating becomes a crucial issue, making necessary to use a suitable trust model. The cooperation activity can be further improved by clustering agents in different groups on the basis of trust measures, allowing each agent will to interact with the agents belonging to its own group. To this purpose, we designed an algorithm to form agent groups on the basis of information about reliability and reputation collected by the agents. In order to validate both the efficiency and effectiveness of our approach, we performed some experiments in a simulated scenario, which showed significant advantages introduces by the use of the trust measures.
- Published
- 2018
8. Using Local Trust for Forming Cohesive Social Structures in Virtual Communities
- Author
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Lidia Fotia, Fabrizio Messina, Domenico Rosaci, Giuseppe M. L. Sarné, Fotia, L, Messina, F, Rosaci, D, and Sarne', G
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Knowledge management ,Group formation ,General Computer Science ,business.industry ,Computer science ,020206 networking & telecommunications ,02 engineering and technology ,Trust ,Knowledge ,Reputation ,Virtual communities ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,business ,Social structure - Abstract
Matching users profile in virtual communities can represent the most natural way of representing group homogeneity, i.e. how much the group members are mutually linked. However, optimizing profile matching does not guarantee the group cohesion, i.e. that the group will continue to be homogeneous in time. Moreover, computing profile matching in large virtual communities can be very expensive, and cannot be integrated in a fully distributed system. In the past, we have demonstrated that using users mutual trust, along with profile matching, can help to improve groups homogeneity. In this work we demonstrate, by an extended set of experiments on datasets extracted from real communities, that trust measures can effectively replace profile matching in order to optimize group's cohesion. A further interesting result is represented by the fact that it is also possible to replace the global trust measure with a local measure of trust, called local reputation, which is not highly sensitive to the size of the network, thus allowing to perform computations which are limited on the size of the ego-network of the single node.
- Published
- 2017
9. A distributed reputation-based framework to support communication resources sharing
- Author
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Antonello Comi, Fabrizio Messina, Giuseppe M. L. Sarné, Lidia Fotia, Giuseppe Pappalardo, Domenico Rosaci, BADICA C A SEGHROUCHNI BEYNIER A CAMACHO D HERPSON C HINDRIKS K NOVAIS P, Comi, A, Fotia, L, Messina, F, Pappalardo, G, Rosaci, D, and Sarne', G
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MULTI-AGENT SYSTEMS ,Reputation information ,Computer science ,Wireless network ,media_common.quotation_subject ,REPUTATION SYSTEMS ,Computer security ,computer.software_genre ,COMMUNICATION RESOURCES SHARING ,Mobile device ,computer ,Reliability (statistics) ,Reputation ,media_common - Abstract
Improvements in computational and network capabilities of mobile devices along with the wide spread of wireless networks for smart cities, allow users to make accessible temporarily unused communication resources for free or for a fee. Such interesting scenario introduces, however, some critical issues due to reliability of users sharing/consuming resources, which are a further concern with respect to those, strictly referred to the security. To tackle such problems, in this paper we propose a distributed multi-agent framework, exploiting reputation information, which considers Both the price paid by mobile users for resources and some countermeasures to detect malicious users, as confirmed by experimental results.
- Published
- 2016
10. A reputation mechanism to support cooperation of IoT devices
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Fortino, G., Lidia FOTIA, Messina, F., Rosaci, D., Sarńe, G. M. L., Savaglio C.,Fortino G.,Ciatto G.,Omicini A., Fortino, G, Fotia, L, Messina, F, Rosaci, D, and Sarnè, G
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IoT ,Reputation ,Software Agent - Abstract
critical issue for small and low-cost Internet of Things (IoT) devices facing multiple complex, advanced and interactive tasks trying to save their power resources. To reach these goals IoT devicescan use the capabilities of nearby devices having suitable resources, given that they make their resources available for free or with a determinedcost. In such a context, IoT devices can take significant benefits by exploiting the social attitude of software agents to mutually interact and cooperate with other agents they consider as trustworthy. However, in wide communities it is common that a lot of members are unreferenced with respect to the own trustworthiness and, therefore, the task of carrying out a reliable choice about a potential partner can be very difficult. To tackle such an issue, we propose an agent framework where each IoTdevice is associated with an agent that helps its device in choosing reliable partners for its tasks. To this aim, we designed a reputation modelimplementing some countermeasures against malicious IoT devices. Toverify the efficiency and effctiveness of our proposal, we carried out some experiments in a simulated scenario, which confirmed the potential advantages deriving by its adoption.
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