69 research outputs found
Solution of Dual Fuzzy Equations Using a New Iterative Method
In this paper, a new hybrid scheme based on learning algorithm of fuzzy neural network (FNN) is offered in order to extract the approximate solution of fully fuzzy dual polynomials (FFDPs). Our FNN in this paper is a five-layer feed-back FNN with the identity activation function. The input-output relation of each unit is defined by the extension principle of Zadeh. The output from this neural network, which is also a fuzzy number, is numerically compared with the target output. The comparison of the feed-back FNN method with the feed-forward FNN method shows that the less error is observed in the feed-back FNN method. An example based on applications are given to illustrate the concepts, which are discussed in this paper
Logic-based AI for Interpretable Board Game Winner Prediction with Tsetlin Machine
Hex is a turn-based two-player connection game with a high branching factor,
making the game arbitrarily complex with increasing board sizes. As such,
top-performing algorithms for playing Hex rely on accurate evaluation of board
positions using neural networks. However, the limited interpretability of
neural networks is problematic when the user wants to understand the reasoning
behind the predictions made. In this paper, we propose to use propositional
logic expressions to describe winning and losing board game positions,
facilitating precise visual interpretation. We employ a Tsetlin Machine (TM) to
learn these expressions from previously played games, describing where pieces
must be located or not located for a board position to be strong. Extensive
experiments on boards compare our TM-based solution with popular
machine learning algorithms like XGBoost, InterpretML, decision trees, and
neural networks, considering various board configurations with to
moves played. On average, the TM testing accuracy is , outperforming
all the other evaluated algorithms. We further demonstrate the global
interpretation of the logical expressions and map them down to particular board
game configurations to investigate local interpretability. We believe the
resulting interpretability establishes building blocks for accurate assistive
AI and human-AI collaboration, also for more complex prediction tasks
Discretized Bayesian pursuit – A new scheme for reinforcement learning
The success of Learning Automata (LA)-based estimator algorithms over the classical, Linear Reward-Inaction ( L RI )-like schemes, can be explained by their ability to pursue the actions with the highest reward probability estimates. Without access to reward probability estimates, it makes sense for schemes like the L RI to first make large exploring steps, and then to gradually turn exploration into exploitation by making progressively smaller learning steps. However, this behavior becomes counter-intuitive when pursuing actions based on their estimated reward probabilities. Learning should then ideally proceed in progressively larger steps, as the reward probability estimates turn more accurate. This paper introduces a new estimator algorithm, the Discretized Bayesian Pursuit Algorithm (DBPA), that achieves this. The DBPA is implemented by linearly discretizing the action probability space of the Bayesian Pursuit Algorithm (BPA) [1]. The key innovation is that the linear discrete updating rules mitigate the counter-intuitive behavior of the corresponding linear continuous updating rules, by augmenting them with the reward probability estimates. Extensive experimental results show the superiority of DBPA over previous estimator algorithms. Indeed, the DBPA is probably the fastest reported LA to date
Biofuel cell based on microscale nanostructured electrodes with inductive coupling to rat brain neurons.
Miniature, self-contained biodevices powered by biofuel cells may enable a new generation of implantable, wireless, minimally invasive neural interfaces for neurophysiological in vivo studies and for clinical applications. Here we report on the fabrication of a direct electron transfer based glucose/oxygen enzymatic fuel cell (EFC) from genuinely three-dimensional (3D) nanostructured microscale gold electrodes, modified with suitable biocatalysts. We show that the process underlying the simple fabrication method of 3D nanostructured electrodes is based on an electrochemically driven transformation of physically deposited gold nanoparticles. We experimentally demonstrate that mediator-, cofactor-, and membrane-less EFCs do operate in cerebrospinal fluid and in the brain of a rat, producing amounts of electrical power sufficient to drive a self-contained biodevice, viz. 7 ÎĽW cm(-2) in vitro and 2 ÎĽW cm(-2) in vivo at an operating voltage of 0.4 V. Last but not least, we also demonstrate an inductive coupling between 3D nanobioelectrodes and living neurons
Learning automaton based on-line discovery and tracking of spatio-temporal event patterns
Discovering and tracking of spatio-temporal patterns in noisy sequences of events is a difficult task that has become increasingly pertinent due to recent advances in ubiquitous computing, such as community-based social networking applications. The core activities for applications of this class include the sharing and notification of events, and the importance and usefulness of these functionalites increases as event-sharing expands into larger areas of one's life. Ironical
Real-time hypothesis driven feature extraction on parallel processing architectures
Feature extraction in content-based indexing of media streams is often computational intensive. Typically, a parallel processing architecture is necessary for real-time performance when extracting features brute force. On the other hand, Bayesian network based systems for hypothesis driven feature extraction, which selectively extract relevant features one-by-one, have in some cases achieved real-time performance on single processing element architectures. In this paper we propose a novel technique which combines the above two approaches. Features are selectively extracted in parallelizable sets, rather than one-by-one. Thereby, the advantages of parallel feature extraction can be combined with the advantages of hypothesis driven feature extraction. The technique is based on a sequential backward feature set search and a correlation based feature set evaluation function. In order to reduce the problem of higher-order feature-content/feature-feature correlation, causally complexly interacting features are identified through Bayesian network d-separation analysis and combined into joint features. When used on a moderately complex object-tracking case, the technique is able to select parallelizable feature sets real-time in a goal oriented fashion, even when some features are pairwise highly correlated and causally complexly interacting
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