keyword
https://read.qxmd.com/read/38562679/the-role-of-rat-prelimbic-cortex-in-decision-making
#21
Jensen A Palmer, Samantha R White, Kevin Chavez Lopez, Mark Laubach
The frontal cortex plays a critical role in decision-making. One specific frontal area, the anterior cingulate cortex, has been identified as crucial for setting a threshold for how much evidence is needed before a choice is made (Domenech & Dreher, 2010). Threshold is a key concept in drift diffusion models, a popular framework used to understand decision-making processes. Here, we investigated the role of the prelimbic cortex, part of the rodent cingulate cortex, in decision making. Male and female rats learned to choose between stimuli associated with high and low value rewards...
March 19, 2024: bioRxiv
https://read.qxmd.com/read/38562050/risk-sensitive-learning-is-a-winning-strategy-for-leading-an-urban-invasion
#22
JOURNAL ARTICLE
Alexis J Breen, Dominik Deffner
In the unpredictable Anthropocene, a particularly pressing open question is how certain species invade urban environments. Sex-biased dispersal and learning arguably influence movement ecology, but their joint influence remains unexplored empirically, and might vary by space and time. We assayed reinforcement learning in wild-caught, temporarily captive core-, middle-, or edge-range great-tailed grackles-a bird species undergoing urban-tracking rapid range expansion, led by dispersing males. We show, across populations, both sexes initially perform similarly when learning stimulus-reward pairings, but, when reward contingencies reverse, male-versus female-grackles finish 'relearning' faster, making fewer choice-option switches...
April 2, 2024: ELife
https://read.qxmd.com/read/38558043/evolution-of-cooperation-on-reinforcement-learning-driven-adaptive-networks
#23
JOURNAL ARTICLE
Chunpeng Du, Yikang Lu, Haoran Meng, Junpyo Park
Complex networks are widespread in real-world environments across diverse domains. Real-world networks tend to form spontaneously through interactions between individual agents. Inspired by this, we design an evolutionary game model in which agents participate in a prisoner's dilemma game (PDG) with their neighboring agents. Agents can autonomously modify their connections with neighbors using reinforcement learning to avoid unfavorable environments. Interestingly, our findings reveal some remarkable results...
April 1, 2024: Chaos
https://read.qxmd.com/read/38557623/deep-generative-adversarial-reinforcement-learning-for-semi-supervised-segmentation-of-low-contrast-and-small-objects-in-medical-images
#24
JOURNAL ARTICLE
Chenchu Xu, Tong Zhang, Dong Zhang, Dingwen Zhang, Junwei Han
Deep reinforcement learning (DRL) has demonstrated impressive performance in medical image segmentation, particularly for low-contrast and small medical objects. However, current DRL-based segmentation methods face limitations due to the optimization of error propagation in two separate stages and the need for a significant amount of labeled data. In this paper, we propose a novel deep generative adversarial reinforcement learning (DGARL) approach that, for the first time, enables end-to-end semi-supervised medical image segmentation in the DRL domain...
April 1, 2024: IEEE Transactions on Medical Imaging
https://read.qxmd.com/read/38551832/brain-mechanism-of-foraging-reward-dependent-synaptic-plasticity-versus-neural-integration-of-values
#25
JOURNAL ARTICLE
Ulises Pereira-Obilinovic, Han Hou, Karel Svoboda, Xiao-Jing Wang
During foraging behavior, action values are persistently encoded in neural activity and updated depending on the history of choice outcomes. What is the neural mechanism for action value maintenance and updating? Here, we explore two contrasting network models: synaptic learning of action value versus neural integration. We show that both models can reproduce extant experimental data, but they yield distinct predictions about the underlying biological neural circuits. In particular, the neural integrator model but not the synaptic model requires that reward signals are mediated by neural pools selective for action alternatives and their projections are aligned with linear attractor axes in the valuation system...
April 2, 2024: Proceedings of the National Academy of Sciences of the United States of America
https://read.qxmd.com/read/38545151/application-of-artificial-intelligence-based-on-the-fuzzy-control-algorithm-in-enterprise-innovation
#26
JOURNAL ARTICLE
Yanhuai Jia, Zheng Wang
Artificial Intelligence (AI) has gained immense popularity in recent years as many enterprises have realized their potential to change the way of conducting business innovatively. The new concepts, items, or procedures are developed and implemented within a business or organization to enhance productivity, effectiveness, and competitiveness, and this is called Enterprise Innovation (EI). AI techniques are required to make decisions more effectively in challenging and dynamic situations, like EI, as result of competitive marketplace...
March 30, 2024: Heliyon
https://read.qxmd.com/read/38531123/multi-agent-continuous-control-with-generative-flow-networks
#27
JOURNAL ARTICLE
Shuang Luo, Yinchuan Li, Shunyu Liu, Xu Zhang, Yunfeng Shao, Chao Wu
Generative Flow Networks (GFlowNets) aim to generate diverse trajectories from a distribution in which the final states of the trajectories are proportional to the reward, serving as a powerful alternative to reinforcement learning for exploratory control tasks. However, the individual-flow matching constraint in GFlowNets limits their applications for multi-agent systems, especially continuous joint-control problems. In this paper, we propose a novel Multi-Agent generative Continuous Flow Networks (MACFN) method to enable multiple agents to perform cooperative exploration for various compositional continuous objects...
March 20, 2024: Neural Networks: the Official Journal of the International Neural Network Society
https://read.qxmd.com/read/38527752/adolescents-flexibly-adapt-action-selection-based-on-controllability-inferences
#28
JOURNAL ARTICLE
Hillary A Raab, Noam Goldway, Careen Foord, Catherine A Hartley
From early in life, we encounter both controllable environments, in which our actions can causally influence the reward outcomes we experience, and uncontrollable environments, in which they cannot. Environmental controllability is theoretically proposed to organize our behavior. In controllable contexts, we can learn to proactively select instrumental actions that bring about desired outcomes. In uncontrollable environments, Pavlovian learning enables hard-wired, reflexive reactions to anticipated, motivationally salient events, providing "default" behavioral responses...
March 2024: Learning & Memory
https://read.qxmd.com/read/38521480/what-role-does-striatal-dopamine-play-in-goal-directed-action
#29
REVIEW
Genevra Hart, Thomas J Burton, Bernard W Balleine
Evidence suggests that dopamine activity provides a US-related prediction error for Pavlovian conditioning and the reinforcement signal supporting the acquisition of habits. However, its role in goal-directed action is less clear. There are currently few studies that have assessed dopamine release as animals acquire and perform self-paced instrumental actions. Here we briefly review the literature documenting the psychological, behavioral and neural bases of goal-directed actions in rats and mice, before turning to describe recent studies investigating the role of dopamine in instrumental learning and performance...
March 21, 2024: Neuroscience
https://read.qxmd.com/read/38520963/the-effects-of-a-retrieval-cue-on-renewal-of-conditioned-responses-in-human-appetitive-conditioning
#30
JOURNAL ARTICLE
Frank Lörsch, Ines Kollei, Sabine Steins-Loeber
Contextual renewal of reward anticipation may be one potential mechanism underlying relapse in eating and substance use disorders. We therefore tested retrieval cues, a method derived from an inhibitory retrieval-based model of extinction learning to attenuate contextual renewal using an appetitive conditioning paradigm. A pilot study was carried out in Experiment 1 to validate a differential chocolate conditioning paradigm, in which a specific tray was set up as a conditioned stimulus (CS) for eating chocolate (unconditioned stimulus, US)...
March 3, 2024: Behaviour Research and Therapy
https://read.qxmd.com/read/38520922/impartial-feature-selection-using-multi-agent-reinforcement-learning-for-adverse-glycemic-event-prediction
#31
JOURNAL ARTICLE
Seo-Hee Kim, Dae-Yeon Kim, Sung-Wan Chun, Jaeyun Kim, Jiyoung Woo
We developed an attention model to predict future adverse glycemic events 30 min in advance based on the observation of past glycemic values over a 35 min period. The proposed model effectively encodes insulin administration and meal intake time using Time2Vec (T2V) for glucose prediction. The proposed impartial feature selection algorithm is designed to distribute rewards proportionally according to agent contributions. Agent contributions are calculated by a step-by-step negation of updated agents. Thus, the proposed feature selection algorithm optimizes features from electronic medical records to improve performance...
March 11, 2024: Computers in Biology and Medicine
https://read.qxmd.com/read/38518710/adaptive-selection-of-local-and-non-local-attention-mechanisms-for-speech-enhancement
#32
JOURNAL ARTICLE
Xinmeng Xu, Weiping Tu, Yuhong Yang
In speech enhancement tasks, local and non-local attention mechanisms have been significantly improved and well studied. However, a natural speech signal contains many dynamic and fast-changing acoustic features, and focusing on one type of attention mechanism (local or non-local) cannot precisely capture the most discriminative information for estimating target speech from background interference. To address this issue, we introduce an adaptive selection network to dynamically select an appropriate route that determines whether to use the attention mechanisms and which to use for the task...
March 13, 2024: Neural Networks: the Official Journal of the International Neural Network Society
https://read.qxmd.com/read/38514179/pupillary-responses-reflect-dynamic-changes-in-multiple-cognitive-factors-during-associative-learning-in-primates
#33
JOURNAL ARTICLE
Yange Zhang 张艳歌, Tian Wang 王天, Weifeng Dai 戴伟枫, Yang Li 李洋, Yi Yang 杨祎, Yujie Wu 武宇洁, Jiancao Huang 黄见操, Tingting Zhou 周婷婷, Dajun Xing 邢大军
Associative learning involves complex interactions of multiple cognitive factors. While adult subjects can articulate these factors verbally, for model animals such as macaques, we rely on behavioural outputs. In our study, we used pupillary responses as an alternative measure to capture these underlying cognitive changes. We recorded the dynamic changes in the pupils of three male macaques when they learned the associations between visual stimuli and reward sizes under the classical Pavlovian experimental paradigm...
March 21, 2024: Journal of Neuroscience
https://read.qxmd.com/read/38513762/vta-excitatory-neurons-impact-reward-driven-behavior-by-modulating-infralimbic-cortical-firing
#34
JOURNAL ARTICLE
Tolulope Adeyelu, Tashonda Vaughn, Olalekan M Ogundele
The functional dichotomy of anatomical regions of the medial prefrontal cortex (mPFC) has been tested with greater certainty in punishment-driven tasks, and less so in reward-oriented paradigms. In the infralimbic cortex (IL), known for behavioral suppression (STOP), tasks linked with reward or punishment are encoded through firing rate decrease or increase, respectively. Although the ventral tegmental area (VTA) is the brain region governing reward/aversion learning, the link between its excitatory neuron population and IL encoding of reward-linked behavioral expression is unclear...
March 19, 2024: Neuroscience
https://read.qxmd.com/read/38512998/simulated-operant-reflex-conditioning-environment-reveals-effects-of-feedback-parameters
#35
JOURNAL ARTICLE
Kyoungsoon Kim, Ethan Oblak, Kathleen Manella, James Sulzer
Operant conditioning of neural activation has been researched for decades in humans and animals. Many theories suggest two parallel learning processes, implicit and explicit. The degree to which feedback affects these processes individually remains to be fully understood and may contribute to a large percentage of non-learners. Our goal is to determine the explicit decision-making processes in response to feedback representing an operant conditioning environment. We developed a simulated operant conditioning environment based on a feedback model of spinal reflex excitability, one of the simplest forms of neural operant conditioning...
2024: PloS One
https://read.qxmd.com/read/38512325/exploring-the-use-of-persuasive-system-design-principles-to-enhance-medication-incident-reporting-and-learning-systems-scoping-reviews-and-persuasive-design-assessment
#36
JOURNAL ARTICLE
Kiemute Oyibo, Paola A Gonzalez, Sarah Ejaz, Tasneem Naheyan, Carla Beaton, Denis O'Donnell, James R Barker
BACKGROUND: Medication incidents (MIs) causing harm to patients have far-reaching consequences for patients, pharmacists, public health, business practice, and governance policy. Medication Incident Reporting and Learning Systems (MIRLS) have been implemented to mitigate such incidents and promote continuous quality improvement in community pharmacies in Canada. They aim to collect and analyze MIs for the implementation of incident preventive strategies to increase safety in community pharmacy practice...
March 21, 2024: JMIR Human Factors
https://read.qxmd.com/read/38509163/optimization-of-news-dissemination-push-mode-by-intelligent-edge-computing-technology-for-deep-learning
#37
JOURNAL ARTICLE
JiLe DeGe, Sina Sang
The Internet era is an era of information explosion. By 2022, the global Internet users have reached more than 4 billion, and the social media users have exceeded 3 billion. People face a lot of news content every day, and it is almost impossible to get interesting information by browsing all the news content. Under this background, personalized news recommendation technology has been widely used, but it still needs to be further optimized and improved. In order to better push the news content of interest to different readers, users' satisfaction with major news websites should be further improved...
March 20, 2024: Scientific Reports
https://read.qxmd.com/read/38505865/an-operating-principle-of-the-cerebral-cortex-and-a-cellular-mechanism-for-attentional-trial-and-error-pattern-learning-and-useful-classification-extraction
#38
JOURNAL ARTICLE
Marat M Rvachev
A feature of the brains of intelligent animals is the ability to learn to respond to an ensemble of active neuronal inputs with a behaviorally appropriate ensemble of active neuronal outputs. Previously, a hypothesis was proposed on how this mechanism is implemented at the cellular level within the neocortical pyramidal neuron: the apical tuft or perisomatic inputs initiate "guess" neuron firings, while the basal dendrites identify input patterns based on excited synaptic clusters, with the cluster excitation strength adjusted based on reward feedback...
2024: Frontiers in Neural Circuits
https://read.qxmd.com/read/38490499/hierarchical-control-over-foraging-behavior-by-anterior-cingulate-cortex
#39
REVIEW
Ricardo J Alejandro, Clay B Holroyd
Foraging is a natural behavior that involves making sequential decisions to maximize rewards while minimizing the costs incurred when doing so. The prevalence of foraging across species suggests that a common brain computation underlies its implementation. Although anterior cingulate cortex is believed to contribute to foraging behavior, its specific role has been contentious, with predominant theories arguing either that it encodes environmental value or choice difficulty. Additionally, recent attempts to characterize foraging have taken place within the reinforcement learning framework, with increasingly complex models scaling with task complexity...
March 13, 2024: Neuroscience and Biobehavioral Reviews
https://read.qxmd.com/read/38487348/appetitively-motivated-tasks-in-the-intellicage-reveal-a-higher-motivational-cost-of-spatial-learning-in-male-than-female-mice
#40
JOURNAL ARTICLE
Martina Nigri, Giulia Bramati, Adrian C Steiner, David P Wolfer
The IntelliCage (IC) permits the assessment of the behavior and learning abilities of mice in a social home cage context. To overcome water deprivation as an aversive driver of learning, we developed protocols in which spatial learning is motivated appetitively by the preference of mice for sweetened over plain water. While plain water is available at all times, only correct task responses give access to sweetened water rewards. Under these conditions, C57BL/6J mice successfully mastered a corner preference task with the reversal and also learned a more difficult time-place task with reversal...
2024: Frontiers in Behavioral Neuroscience
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