Comparison of Symbolic and Connectionist Approaches to Local Experts Integration
نویسنده
چکیده
| Monostrategy classiication systems are very limited in the type of knowledge they can use for decision making. On the other hand, potentially better results are achievable using multistrategy systems that integrate two or more types of knowledge representation and/or multiple inference underlying a decision process. In this paper a decision tree and a neural network technique for competitive integration of heterogeneous local experts are proposed. The local experts are either symbolic rule-based classiiers or neural network based monostrategy learning systems. The integration is simple, as it involves no modiication of existing symbolic components. The proposed competitive integration systems are tested versus a previously used cooperative neural network based approach. The experimental results on a small nancial advising problem indicate signiicant performance improvements when using the neural network based competitive integration approach as compared to the results obtained from either the individual classiiers, a decision tree based symbolic integration or a cooperative neural network integration method. The best competitive neural network results are achieved by incorporating prior knowledge and a dynamic neural network local expert into the integrated system.
منابع مشابه
Hybrid Connectionist-Symbolic Modules: A Report from the IJCAI-95 Workshop on Connectionist-Symbolic Integration
need for such models has been growing slowly but steadily over the past five years. Some new, important approaches have been proposed and developed, some of which were presented at the workshop. In sum, the participants felt that it was definitely worthwhile to further pursue research in this area because it might generate important new ideas and significant new applications in the near future....
متن کاملNeural-Symbolic Integration Constructive Approaches
The field of neural-symbolic integration has received much attention recently. While with propositional paradigms, the integration of symbolic knowledge and connectionist systems (also called artificial neural networks) has already resulted in applicable systems, the theoretical foundations for the first-order case are currently being laid and first perspectives for real implementations are eme...
متن کاملNeurosymbolic integration: unified versus hybrid approaches
Since the mid-1980s, researchers have been pursuing the goal of neurosymbolic integration, i.e., the construction of systems capable of both symbolic and neural processing. We distinguish two major avenues toward this goal: the uniied and the hybrid approaches. Whereas the uniied approach claims that full symbol processing functionalities can be achieved via neural networks alone, the hybrid ap...
متن کاملNeurosymbolic Integration: Uniied versus Hybrid Approaches
Since the mid-1980s, researchers have been pursuing the goal of neurosymbolic integration, i.e., the construction of systems capable of both symbolic and neural processing. We distinguish two major avenues toward this goal: the uniied and the hybrid approaches. Whereas the uniied approach claims that full symbol processing functionalities can be achieved via neural networks alone, the hybrid ap...
متن کاملNeural-symbolic integration
The field of neural-symbolic integration has received much attention recently. While with propositional paradigms, the integration of symbolic knowledge and connectionist systems (also called artificial neural networks) has already resulted in applicable systems, the theoretical foundations for the first-order case are currently being laid and first perspectives for real implementations are eme...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 1995