scispace - formally typeset
Search or ask a question
Institution

University of Memphis

EducationMemphis, Tennessee, United States
About: University of Memphis is a education organization based out in Memphis, Tennessee, United States. It is known for research contribution in the topics: Population & Poison control. The organization has 7710 authors who have published 20082 publications receiving 611618 citations. The organization is also known as: U of M.


Papers
More filters
Journal ArticleDOI
TL;DR: A technique inspired by the negative selection mechanism of the immune system that can detect foreign patterns in the complement (nonself) space is presented, which demonstrates the usefulness of such a technique to detect a wide variety of intrusive activities on networked computers.
Abstract: This paper presents a technique inspired by the negative selection mechanism of the immune system that can detect foreign patterns in the complement (nonself) space. In particular, the novel pattern detectors (in the complement space) are evolved using a genetic search, which could differentiate varying degrees of abnormality in network traffic. The paper demonstrates the usefulness of such a technique to detect a wide variety of intrusive activities on networked computers. We also used a positive characterization method based on a nearest-neighbor classification. Experiments are performed using intrusion detection data sets and tested for validation. Some results are reported along with analysis and concluding remarks.

390 citations

Journal ArticleDOI
TL;DR: A taxonomy of behavioral interventions, based on a taxonomy presented by Geller et al. as discussed by the authors, categorizes these reported interventions by antecedent and consequence conditions, and evaluates the environmental-preservation research published during the 1980s.
Abstract: This review integrates and evaluates the environmental-preservation research published during the 1980s. The focus is environmental behavior change as targeted by behavior analysts and others designing interventions to encourage environmental-preservation behavior. A modified taxonomy of behavioral interventions, based on a taxonomy presented by Geller et al., categorizes these reported interventions by antecedent and consequence conditions. Fifty-four studies were categorized and evaluated according to which of these taxonomic interventions were reported. The conclusions were that (a) antecedent conditions using commitment, demonstration, and goal-setting strategies were generally most effective in encouraging environmentally responsible behavior, and (b) consequence conditions were effective in producing behavior change during the experiment's duration. However, some other important findings were that (a) much of the research in this field during the 1980s did not directly compare interventions, (b) few...

390 citations

Journal ArticleDOI
TL;DR: VerifyNet is proposed, the first privacy-preserving and verifiable federated learning framework that claims that it is impossible that an adversary can deceive users by forging Proof, unless it can solve the NP-hard problem adopted in the model.
Abstract: As an emerging training model with neural networks, federated learning has received widespread attention due to its ability to update parameters without collecting users’ raw data. However, since adversaries can track and derive participants’ privacy from the shared gradients, federated learning is still exposed to various security and privacy threats. In this paper, we consider two major issues in the training process over deep neural networks (DNNs): 1) how to protect user’s privacy (i.e., local gradients) in the training process and 2) how to verify the integrity (or correctness) of the aggregated results returned from the server. To solve the above problems, several approaches focusing on secure or privacy-preserving federated learning have been proposed and applied in diverse scenarios. However, it is still an open problem enabling clients to verify whether the cloud server is operating correctly, while guaranteeing user’s privacy in the training process. In this paper, we propose VerifyNet, the first privacy-preserving and verifiable federated learning framework. In specific, we first propose a double-masking protocol to guarantee the confidentiality of users’ local gradients during the federated learning. Then, the cloud server is required to provide the Proof about the correctness of its aggregated results to each user. We claim that it is impossible that an adversary can deceive users by forging Proof , unless it can solve the NP-hard problem adopted in our model. In addition, VerifyNet is also supportive of users dropping out during the training process. The extensive experiments conducted on real-world data also demonstrate the practical performance of our proposed scheme.

388 citations

Journal ArticleDOI
TL;DR: In this article, the authors argue that ongoing implicit claims between a firm and its customers, suppliers, employees, and short-term creditors create incentives for management to choose long-run income-increasing accounting methods.

382 citations


Authors

Showing all 7827 results

NameH-indexPapersCitations
James F. Sallis169825144836
Robert G. Webster15884390776
Ching-Hon Pui14580572146
James Whelan12878689180
Tom Baranowski10348536327
Peter C. Doherty10151640162
Jian Chen96171852917
Arthur C. Graesser9561438549
David Richards9557847107
Jianhong Wu9372636427
Richard W. Compans9152631576
Shiriki K. Kumanyika9034944959
Alexander J. Blake89113335746
Marek Czosnyka8874729117
David M. Murray8630021500
Network Information
Related Institutions (5)
Arizona State University
109.6K papers, 4.4M citations

94% related

University of South Florida
72.6K papers, 2.5M citations

94% related

Pennsylvania State University
196.8K papers, 8.3M citations

94% related

State University of New York System
78K papers, 2.9M citations

93% related

Rutgers University
159.4K papers, 6.7M citations

93% related

Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
202327
2022169
20211,049
20201,044
2019843
2018846