Agent Technology, Intelligent Systems and Soft Computing in Management Support

C. Carlsson, P. Walden
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Abstract

The Agent Technology, Intelligent Systems and Soft Computing in Management Support mini-track is part of the movement towards developing effective intelligent systems for problem solving and decision making, and towards building and implementing systems that can deal with complex and ill-structured situations, i.e. contexts for which discovery and learning can positively impact the outcome of the problem solving process. The next generation of modeling tools and support systems will include (but is not limited to) the use of intelligent technologies (machine intelligence, neural nets, genetic algorithms), soft computing (fuzzy logic, approximate reasoning, probabilistic modeling) and advanced mathematical modeling. The use of soft computing methods is gaining in both acceptability and importance as the importance of the conflict between rigueur and relevance is becoming more apparent in a dynamic and quickly changing world. The use of advanced methods gives us more rigorous problem solving and more precise results, which become harder and harder to implement, i.e. they lose in relevance. Soft computing offers a way to keep a rigorous theoretical framework and at the same time to allow for an imprecision, which keeps the results relevant. There is an increasing demand for smart systems for interactive planning, problem solving and decision making, by individuals or by groups of users. The future systems will be more robust, more adaptive and easier to use than standard analytical tools. The optimization models (most of the time multiple criteria models) will be more easily incorporated in support systems. The expected end result will give the users knowledgebased support, which is adapted to the problems they need to solve and the decision making expected of them and, furthermore, to the internal logic of the context in which they will have to carry out their activities. There is a growing interest in soft computing tools, which are used to handle imprecision and uncertainty, and to build flexibility and context adaptability into intelligent systems. The application of soft computing to decision problems is focused on a decision context, where fast and correct decision making is becoming instrumental. There is no great consensus on what exactly will form the “new decision context”, but some of the key elements will most probably be, (i) virtual teamwork in different places and in different time zones, (ii) decision support systems on mobile devices, with (iii) access to and the use of multilayer networks (internet(s), intranets), through which (iv) access to and the use of a multitude of data sources (databases, data warehouses, text files, multimedia sources, etc.), and with support from (v) intelligent technologies for filtering, sifting and summarizing (software agents, evolutionary computing, neural nets, etc.), (vi) multiple criteria (crisp, soft) algorithms for problem solving and (vii) semantic web technology to form associative data sources. In the mini-track on Agent Technology, Intelligent Systems and Soft Computing in Management Support we aim to explore the issues raised by the introduction of new technology to handle decision problems. The papers accepted to the mini-track are:
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管理支持中的代理技术、智能系统和软计算
管理支持中的代理技术,智能系统和软计算迷你轨道是开发有效的智能系统以解决问题和决策,以及构建和实施能够处理复杂和结构不良情况的系统的运动的一部分,即发现和学习可以积极影响问题解决过程结果的环境。下一代建模工具和支持系统将包括(但不限于)智能技术(机器智能、神经网络、遗传算法)、软计算(模糊逻辑、近似推理、概率建模)和高级数学建模的使用。软计算方法的使用在可接受性和重要性方面都在增加,因为在一个动态和快速变化的世界中,规矩和相关性之间冲突的重要性变得越来越明显。使用先进的方法给我们更严格的问题解决和更精确的结果,这变得越来越难以实现,即它们失去了相关性。软计算提供了一种方法来保持严格的理论框架,同时允许不精确,从而保持结果的相关性。个人或用户群体对交互式规划、解决问题和决策的智能系统的需求日益增加。未来的系统将比标准的分析工具更健壮、适应性更强、更容易使用。优化模型(大多数情况下是多准则模型)将更容易纳入支持系统。预期的最终结果将为用户提供基于知识的支持,这种支持适应于他们需要解决的问题和期望他们做出的决策,而且还适应于他们必须在其中开展活动的上下文的内部逻辑。人们对软计算工具的兴趣越来越大,这些工具用于处理不精确和不确定性,并在智能系统中构建灵活性和上下文适应性。软计算在决策问题中的应用主要集中在决策环境中,快速和正确的决策正在成为工具。关于究竟什么将形成“新的决策环境”,目前还没有达成很大的共识,但一些关键因素最有可能是,(i)不同地点和不同时区的虚拟团队合作,(ii)移动设备上的决策支持系统,(iii)访问和使用多层网络(互联网、内部网),通过这些网络(iv)访问和使用大量数据源(数据库、数据仓库、文本文件、多媒体源等),在(v)过滤、筛选和汇总的智能技术(软件代理、进化计算、神经网络等)的支持下,(vi)解决问题的多标准(清晰、软)算法和(vii)形成关联数据源的语义网技术。在“管理支持中的代理技术、智能系统和软计算”的迷你轨道中,我们旨在探讨引入新技术来处理决策问题所带来的问题。迷你赛道接受的论文有:
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