182 research outputs found

    Message Authentication Code over a Wiretap Channel

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    Message Authentication Code (MAC) is a keyed function fKf_K such that when Alice, who shares the secret KK with Bob, sends fK(M)f_K(M) to the latter, Bob will be assured of the integrity and authenticity of MM. Traditionally, it is assumed that the channel is noiseless. However, Maurer showed that in this case an attacker can succeed with probability 2H(K)+12^{-\frac{H(K)}{\ell+1}} after authenticating \ell messages. In this paper, we consider the setting where the channel is noisy. Specifically, Alice and Bob are connected by a discrete memoryless channel (DMC) W1W_1 and a noiseless but insecure channel. In addition, an attacker Oscar is connected with Alice through DMC W2W_2 and with Bob through a noiseless channel. In this setting, we study the framework that sends MM over the noiseless channel and the traditional MAC fK(M)f_K(M) over channel (W1,W2)(W_1, W_2). We regard the noisy channel as an expensive resource and define the authentication rate ρauth\rho_{auth} as the ratio of message length to the number nn of channel W1W_1 uses. The security of this framework depends on the channel coding scheme for fK(M)f_K(M). A natural coding scheme is to use the secrecy capacity achieving code of Csisz\'{a}r and K\"{o}rner. Intuitively, this is also the optimal strategy. However, we propose a coding scheme that achieves a higher ρauth.\rho_{auth}. Our crucial point for this is that in the secrecy capacity setting, Bob needs to recover fK(M)f_K(M) while in our coding scheme this is not necessary. How to detect the attack without recovering fK(M)f_K(M) is the main contribution of this work. We achieve this through random coding techniques.Comment: Formulation of model is change

    Facile and effective synthesis of hierarchical TiO2 spheres for efficient dye-sensitized solar cells

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    National Natural Science Foundation of China [51072170, 21021002]; National Basic Research Program of China [2012CB932900]Three-dimensional (3D) crystalline anatase TiO2 hierarchical spheres were successfully derived from Ti foils via a fast, template-free, low-temperature hydrothermal route followed by a calcination post-treatment. These dandelion-like TiO2 spheres are composed of numerous ultrathin nanoribbons, which were subsequently split into fragile nanoflakes as a result of the decomposition of Ti-complex intermediates to TiO2 and H2O at high temperature. The dye-sensitized solar cells (DSSCs) employing such hierarchically structured TiO2 spheres as the photoanodes exhibited a light-to-electricity conversion efficiency of 8.50%, yielding a 28% enhancement in comparison with that (6.64%) of P25-based DSSCs, which mainly benefited from the enhanced capacity of dye loading in combination with effective light scattering and trapping from hierarchical architecture

    When Brain-inspired AI Meets AGI

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    Artificial General Intelligence (AGI) has been a long-standing goal of humanity, with the aim of creating machines capable of performing any intellectual task that humans can do. To achieve this, AGI researchers draw inspiration from the human brain and seek to replicate its principles in intelligent machines. Brain-inspired artificial intelligence is a field that has emerged from this endeavor, combining insights from neuroscience, psychology, and computer science to develop more efficient and powerful AI systems. In this article, we provide a comprehensive overview of brain-inspired AI from the perspective of AGI. We begin with the current progress in brain-inspired AI and its extensive connection with AGI. We then cover the important characteristics for both human intelligence and AGI (e.g., scaling, multimodality, and reasoning). We discuss important technologies toward achieving AGI in current AI systems, such as in-context learning and prompt tuning. We also investigate the evolution of AGI systems from both algorithmic and infrastructural perspectives. Finally, we explore the limitations and future of AGI

    AD-AutoGPT: An Autonomous GPT for Alzheimer's Disease Infodemiology

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    In this pioneering study, inspired by AutoGPT, the state-of-the-art open-source application based on the GPT-4 large language model, we develop a novel tool called AD-AutoGPT which can conduct data collection, processing, and analysis about complex health narratives of Alzheimer's Disease in an autonomous manner via users' textual prompts. We collated comprehensive data from a variety of news sources, including the Alzheimer's Association, BBC, Mayo Clinic, and the National Institute on Aging since June 2022, leading to the autonomous execution of robust trend analyses, intertopic distance maps visualization, and identification of salient terms pertinent to Alzheimer's Disease. This approach has yielded not only a quantifiable metric of relevant discourse but also valuable insights into public focus on Alzheimer's Disease. This application of AD-AutoGPT in public health signifies the transformative potential of AI in facilitating a data-rich understanding of complex health narratives like Alzheimer's Disease in an autonomous manner, setting the groundwork for future AI-driven investigations in global health landscapes.Comment: 20 pages, 4 figure
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