Neural Networks Clause Samples

Neural Networks. ‌ In this section, we will introduce the neural networks knowledge such as word embeddings, convolutional neural networks, long short-term memory networks, and attention mechanism. We will use these techniques in the later chapter to develop our novel model.
Neural Networks. Neural networks, though not an area of significant active research at present, were included within this project as they represent an accurate, based upon the literature review, and interesting method for visual object matching, allowing the modelling of non­linear multi­variant information. Neural networks also have the advantage of being able to create object class invariants of sorts. If objects of the same class, but at different rotations (though equally applicable to lighting variations and scales, etc.), are presented to the network during its training phase, all differences between the class objects will be assimilated (with an associated error rating) into the model used, and objects at these different rotations will all be treated as the same class. This naturally requires painstaking effort during the creation of the training set and often requires bootstrapping of the training set (i.e. repeatedly finding and removing contentious images) to resolve an adequate network error rate. The main drawback to the use of neural networks, which became particularly apparent when implemented within this project, is the time required per classification when using large networks. There appears to be a “catch 22” type situation attached to the training of neural networks. On the one hand, the addition of training examples improves the classification accuracy of the network as a whole; however, the addition of new training examples slows the network during classification and increases the overall network training error making it more difficult and time consuming to train. An additional drawback of using neural networks is that the weighting file (trained during the original training process), cannot be easily updated without training the entire system for every object class again. This means that new objects (objects not included in the original specification for the project) cannot be simply added to a neural network based classification system without complete retraining. [85] assesses the suitability of possible image re­scaling and normalisation methods, using the neural network technique, due to its sensitivity to these factors (the differences in re­scaling and normalisation techniques created a 3% difference in results). Though useful for deciding upon pre­processing techniques, this type of sensitivity is not advantageous for object classification within a project such as AVITRACK. This sensitivity to image conditions stretches to include, and become pe...
Neural Networks. 2.4.1 Convolutional Neural Network

Related to Neural Networks

  • Digital Health The HSP agrees to: (a) assist the LHIN to implement provincial Digital Health priorities for 2017-18 and thereafter in accordance with the Accountability Agreement, as may be amended or replaced from time to time; (b) comply with any technical and information management standards, including those related to data, architecture, technology, privacy and security set for health service providers by MOHLTC or the LHIN within the timeframes set by MOHLTC or the LHIN as the case may be; (c) implement and use the approved provincial Digital Health solutions identified in the LHIN Digital Health plan; (d) implement technology solutions that are compatible or interoperable with the provincial blueprint and with the LHIN Cluster Digital Health plan; and (e) include in its annual Planning Submissions, plans for achieving Digital Health priority initiatives.

  • The Web Services E-Verify Employer Agent agrees to, consistent with applicable laws, regulations, and policies, commit sufficient personnel and resources to meet the requirements of this MOU.

  • Supplier Diversity Seller shall comply with ▇▇▇▇▇’s Supplier Diversity Program in accordance with Appendix V.

  • Telemedicine Services This plan covers clinically appropriate telemedicine services when the service is provided via remote access through an on-line service or other interactive audio and video telecommunications system in accordance with R.I. General Law § 27-81-1. Clinically appropriate telemedicine services may be obtained from a network provider, and from our designated telemedicine service provider. When you seek telemedicine services from our designated telemedicine service provider, the amount you pay is listed in the Summary of Medical Benefits. When you receive a covered healthcare service from a network provider via remote access, the amount you pay depends on the covered healthcare service you receive, as indicated in the Summary of Medical Benefits. For information about telemedicine services, our designated telemedicine service provider, and how to access telemedicine services, please visit our website or contact our Customer Service Department.

  • Network PHARMACY is a retail, mail order or specialty pharmacy that has a contract to accept our pharmacy allowance for prescription drugs and diabetic equipment or supplies covered under this plan. NETWORK PROVIDER is a provider that has entered into a contract with us or other Blue Cross and Blue Shield plans. For pediatric dental care services, network provider is a dentist that has entered into a contract with us or participates in the Dental Coast to Coast Network. For pediatric vision hardware services, a network provider is a provider that has entered into a contract with EyeMed, our vision care service manager.