Explore Neural Computation, a premier journal in computational neuroscience and AI. With an impact factor of 2.709, it offers high visibility for neural network and machine learning research. Ideal for submitting innovative papers on brain-inspired computing.
Neural Computation stands as a cornerstone in the field of computational neuroscience and artificial intelligence, bridging biological neural processes with advanced computing models. Established in 1989 by MIT Press, this bimonthly journal has consistently published groundbreaking research that advances our understanding of how the brain computes and inspires machine learning algorithms. Researchers turn to Neural Computation for its rigorous peer-review process and commitment to interdisciplinary work, making it a go-to venue for scholars in computer science, neuroscience, and cognitive science.
The journal's scope encompasses theoretical and experimental studies on neural networks, learning algorithms, and computational models of cognition. From spiking neuron dynamics to deep learning architectures, Neural Computation fosters innovations that influence both academia and industry. Its impact factor of 2.709 reflects the quality and relevance of its content, attracting submissions from leading experts worldwide. Publishing here not only elevates a researcher's profile but also connects them to a network of influential peers.
For those navigating academic careers, Neural Computation offers a platform to showcase work that pushes boundaries in AI and brain science. Whether exploring probabilistic models or reinforcement learning, the journal ensures wide dissemination through its hybrid open access model. Researchers benefit from detailed editorial feedback that refines ideas for broader impact. As the field evolves with rapid advancements in neural technologies, Neural Computation remains essential for staying at the forefront.
To maximize publication success, consider aligning your manuscript with the journal's emphasis on novel computational approaches. Review recent issues to gauge fit, and prepare for a thorough review process that typically spans several months. Submitting to Neural Computation can propel your research into high-impact discussions, enhancing citation potential and career opportunities. Explore academic jobs in computational fields or consult Rate My Professor for insights from peers. Stay organized with an academic calendar to track deadlines. For more resources, visit higher education jobs.
Neural Computation was launched in 1989 by MIT Press to address the growing need for a dedicated outlet in computational neuroscience. Founded amid the rise of connectionist models, it quickly became a leader in publishing work on artificial neural networks and brain-inspired computing. Over three decades, the journal has evolved to cover emergent topics like deep learning and neuromorphic engineering, maintaining its reputation for high-quality, peer-reviewed articles.
Published six times a year, Neural Computation features original research, reviews, and commentaries that span from molecular to systems-level analyses. Its editorial team, led by Editor-in-Chief Máté Lengyel, ensures a balance between theoretical rigor and practical applications. The journal's history reflects the field's maturation, from early backpropagation studies to modern AI integrations, making it indispensable for tracking progress in neural computation.
Neural Computation focuses on computational approaches to understanding neural systems, emphasizing models that simulate biological processes or inspire technological innovations. It welcomes submissions on topics such as neural network architectures, learning rules, and cognitive modeling.
| Discipline | Description |
|---|---|
| Computational Neuroscience | Models of neural dynamics, synaptic plasticity, and brain function. |
| Artificial Intelligence | Neural networks, machine learning algorithms, and AI inspired by biology. |
| Cognitive Science | Computational theories of perception, memory, and decision-making. |
| Computer Science | Algorithms for pattern recognition and optimization in neural systems. |
| Mathematics | Statistical and dynamical systems analysis applied to neural data. |
These disciplines highlight the journal's interdisciplinary nature, encouraging cross-field collaborations.
| Metric | Value | Source |
|---|---|---|
| Impact Factor (2022) | 2.709 | Clarivate Journal Citation Reports |
| 5-Year Impact Factor | 3.124 | Clarivate JCR |
| CiteScore | 4.8 | Scopus |
| h-Index | 142 | Scopus |
| Acceptance Rate | Not publicly disclosed | N/A |
These metrics underscore Neural Computation's influence in advancing computational research.
Neural Computation is indexed in major databases, ensuring global accessibility. It appears in Web of Science, Scopus, PubMed, and Google Scholar, facilitating high citation rates. Abstracting services like Biological Abstracts and INSPEC further amplify its reach to diverse audiences in science and engineering.
The journal operates on a hybrid model, offering subscription access with optional open access. Authors can choose gold open access by paying an Article Processing Charge (APC) of $3,500, covering peer review and publication costs. Subscription-based access is available through institutions, while MIT Press provides waivers for authors from low-income countries.
Manuscripts are submitted via the online portal at ScholarOne. Guidelines require original, unpublished work formatted in LaTeX or Word, with a maximum length of 12,000 words. Include abstracts, keywords, and figures in high resolution. The process involves initial screening, peer review by 2-3 experts, and revisions. Average time to first decision is 4-6 months.
The editorial board comprises renowned experts, including Editor-in-Chief Máté Lengyel from the University of Cambridge, specializing in computational and cognitive neuroscience. Other members hail from institutions like Stanford and Max Planck, bringing diverse perspectives on neural modeling and AI.
Publishing in Neural Computation provides prestige and visibility in a competitive field. Its targeted audience ensures relevant citations, while the hybrid model offers flexibility. Authors gain from MIT Press's distribution network, reaching thousands of readers. Success here boosts grant applications and tenure prospects, particularly in AI-driven research.
| Journal | Impact Factor | Publisher | Focus |
|---|---|---|---|
| Neural Networks | 7.8 | Elsevier | Engineering applications of neural nets |
| Journal of Computational Neuroscience | 1.9 | Springer | Biological neural modeling |
| Frontiers in Computational Neuroscience | 2.5 | Frontiers | Open access computational studies |
| Neural Computation | 2.709 | MIT Press | Interdisciplinary neural computing |
This comparison shows Neural Computation's balanced position in scope and metrics.
To succeed, ensure your paper presents novel computational insights with clear biological or technological relevance. Use simulations validated against data, and follow guidelines precisely. Engage reviewers by addressing interdisciplinary angles. Track progress with tools like academic calendars, and network via computer science faculty jobs. For mentorship, check Rate My Professor. Additional links: PhD programs in neuroscience, tenure-track AI positions, postdoc opportunities, neural networks conferences.