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Analysis of Evolutionary Behavior in Self-Learning Media Search Engines

机译:自学习媒体搜索引擎中的进化行为分析

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The diversity of intrinsic qualities of multimedia entities tends to impede their effective retrieval. In a SelfLearning Search Engine architecture, the subtle nuances of human perceptions and deep knowledge are taught and captured through unsupervised reinforcement learning, where the degree of reinforcement may be suitably calibrated. Such architectural paradigm enables indexes to evolve naturally while accommodating the dynamic changes of user interests. It operates by continuously constructing indexes over time, while injecting progressive improvement in search performance. For search operations to be effective, convergence of index learning is of crucial importance to ensure efficiency and robustness. In this paper, we develop a Self-Learning Search Engine architecture based on reinforcement learning using a Markov Decision Process framework. The balance between exploration and exploitation is achieved through evolutionary exploration Strategies. The evolutionary index learning behavior is then studied and formulated using stochastic analysis. Experimental results are presented which corroborate the steady convergence of the index evolution mechanism.
机译:多媒体实体的内在质量的多样性往往会阻碍其有效的检索。在自学习搜索引擎体系结构中,通过无监督的强化学习来教授和捕获人类感知和渊博的知识的细微差别,在强化学习中可以适当地校准强化的程度。这样的架构范例使索引能够自然发展,同时适应用户兴趣的动态变化。它通过随着时间的推移连续构造索引来进行操作,同时为搜索性能注入逐步的改进。为了使搜索操作有效,索引学习的收敛对于确保效率和鲁棒性至关重要。在本文中,我们基于马尔可夫决策过程框架的强化学习,开发了一种自学习搜索引擎体系结构。勘探与开发之间的平衡是通过进化探索策略实现的。然后使用随机分析研究和制定进化指数学习行为。实验结果证明了指数演化机制的稳定收敛。

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