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Journal ArticleDOI

Intelligent Social Media Indexing and Sharing Using an Adaptive Indexing Search Engine

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TLDR
The present adaptive search engine allows for the efficient community creation and updating of social media indexes, which is able to instill and propagate deep knowledge into social media concerning the advanced search and usage of media resources.
Abstract
Effective sharing of diverse social media is often inhibited by limitations in their search and discovery mechanisms, which are particularly restrictive for media that do not lend themselves to automatic processing or indexing. Here, we present the structure and mechanism of an adaptive search engine which is designed to overcome such limitations. The basic framework of the adaptive search engine is to capture human judgment in the course of normal usage from user queries in order to develop semantic indexes which link search terms to media objects semantics. This approach is particularly effective for the retrieval of multimedia objects, such as images, sounds, and videos, where a direct analysis of the object features does not allow them to be linked to search terms, for example, nontextual/icon-based search, deep semantic search, or when search terms are unknown at the time the media repository is built. An adaptive search architecture is presented to enable the index to evolve with respect to user feedback, while a randomized query-processing technique guarantees avoiding local minima and allows the meaningful indexing of new media objects and new terms. The present adaptive search engine allows for the efficient community creation and updating of social media indexes, which is able to instill and propagate deep knowledge into social media concerning the advanced search and usage of media resources. Experiments with various relevance distribution settings have shown efficient convergence of such indexes, which enable intelligent search and sharing of social media resources that are otherwise hard to discover.

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Citations
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Journal ArticleDOI

Data mining techniques in social media

TL;DR: The goal of the present survey is to analyze the data mining techniques that were utilized by social media networks between 2003 and 2015 and suggest that more research be conducted by both the academia and the industry since the studies done so far are not sufficiently exhaustive of datamining techniques.
Proceedings ArticleDOI

Brand Data Gathering From Live Social Media Streams

TL;DR: A multi-faceted brand tracking method that gathers relevant data based on not just evolving keywords, but also social factors (users, relations and locations) as well as visual contents as increasing number of social media posts are in multimedia form is proposed.
Book ChapterDOI

Collective evolutionary concept distance based query expansion for effective web document retrieval

TL;DR: The basic idea is to measure the distance between candidate concepts using the PMING distance, a collaborative semantic proximity measure, a measure which can be computed using statistical results from a web search engine, and show that the proposed technique can provide users with more satisfying expansion results and improve the quality of web document retrieval.
Book ChapterDOI

Set Similarity Measures for Images Based on Collective Knowledge

TL;DR: Experimental results show the adequacy of the proposed approach in order to reflect the collective notion of semantic similarity in the domain of images semantic similarity by using search engine based tag similarity.
Book ChapterDOI

Heuristics for Semantic Path Search in Wikipedia

TL;DR: An approach based on Heuristic Semantic Walk is presented, where semantic proximity measures among concepts are used as heuristics in order to guide the concept chain search in the collaborative network of Wikipedia, encoding problem-specific knowledge in a problem-independent way.
References
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Journal ArticleDOI

Reinforcement learning: a survey

TL;DR: Central issues of reinforcement learning are discussed, including trading off exploration and exploitation, establishing the foundations of the field via Markov decision theory, learning from delayed reinforcement, constructing empirical models to accelerate learning, making use of generalization and hierarchy, and coping with hidden state.
Posted Content

Reinforcement Learning: A Survey

TL;DR: A survey of reinforcement learning from a computer science perspective can be found in this article, where the authors discuss the central issues of RL, including trading off exploration and exploitation, establishing the foundations of RL via Markov decision theory, learning from delayed reinforcement, constructing empirical models to accelerate learning, making use of generalization and hierarchy, and coping with hidden state.
Proceedings ArticleDOI

Measurement and analysis of online social networks

TL;DR: This paper examines data gathered from four popular online social networks: Flickr, YouTube, LiveJournal, and Orkut, and reports that the indegree of user nodes tends to match the outdegree; the networks contain a densely connected core of high-degree nodes; and that this core links small groups of strongly clustered, low-degree node at the fringes of the network.
Journal ArticleDOI

Genetic Algorithms and Machine Learning

TL;DR: There is no a priori reason why machine learning must borrow from nature, but many machine learning systems now borrow heavily from current thinking in cognitive science, and rekindled interest in neural networks and connectionism is evidence of serious mechanistic and philosophical currents running through the field.
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