6,180 research outputs found

    Multi-Dimensional-Personalization in mobile contexts

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    During the dot com era the word "personalisation” was a hot buzzword. With the fall of the dot com companies the topic has lost momentum. As the killer application for UMTS or the mobile internet has yet to be identified, the concept of Multi-Dimensional-Personalisation (MDP) could be a candidate. Using this approach, a recommendation of mobile advertisement or marketing (i.e., recommendations or notifications), online content, as well as offline events, can be offered to the user based on their known interests and current location. Instead of having to request or pull this information, the new service concept would proactively provide the information and services – with the consequence that the right information or service could therefore be offered at the right place, at the right time. The growing availability of "Location-based Services“ for mobile phones is a new target for the use of personalisation. "Location-based Services“ are information, for example, about restaurants, hotels or shopping malls with offers which are in close range / short distance to the user. The lack of acceptance for such services in the past is based on the fact that early implementations required the user to pull the information from the service provider. A more promising approach is to actively push information to the user. This information must be from interest to the user and has to reach the user at the right time and at the right place. This raises new requirements on personalisation which will go far beyond present requirements. It will reach out from personalisation based only on the interest of the user. Besides the interest, the enhanced personalisation has to cover the location and movement patterns, the usage and the past, present and future schedule of the user. This new personalisation paradigm has to protect the user’s privacy so that an approach supporting anonymous recommendations through an extended "Chinese Wall“ will be described

    A Survey of Data Mining Techniques for Social Network Analysis

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    Social network has gained remarkable attention in the last decade. Accessing social network sites such as Twitter, Facebook LinkedIn and Google+ through the internet and the web 2.0 technologies has become more affordable. People are becoming more interested in and relying on social network for information, news and opinion of other users on diverse subject matters. The heavy reliance on social network sites causes them to generate massive data characterised by three computational issues namely; size, noise and dynamism. These issues often make social network data very complex to analyse manually, resulting in the pertinent use of computational means of analysing them. Data mining provides a wide range of techniques for detecting useful knowledge from massive datasets like trends, patterns and rules [44]. Data mining techniques are used for information retrieval, statistical modelling and machine learning. These techniques employ data pre-processing, data analysis, and data interpretation processes in the course of data analysis. This survey discusses different data mining techniques used in mining diverse aspects of the social network over decades going from the historical techniques to the up-to-date models, including our novel technique named TRCM. All the techniques covered in this survey are listed in the Table.1 including the tools employed as well as names of their author

    “WARES”, a Web Analytics Recommender System

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    Il est difficile d'imaginer des entreprises modernes sans analyse, c'est une tendance dans les entreprises modernes, mĂȘme les petites entreprises et les entrepreneurs individuels commencent Ă  utiliser des outils d'analyse d'une maniĂšre ou d'une autre pour leur entreprise. Pas Ă©tonnant qu'il existe un grand nombre d'outils diffĂ©rents pour les diffĂ©rents domaines, ils varient dans le but de simples statistiques d'amis et de visites pour votre page Facebook Ă  grands et sophistiquĂ©s dans le cas des systĂšmes conçus pour les grandes entreprises, ils pourraient ĂȘtre shareware ou payĂ©s. Parfois, vous devez passer une formation spĂ©ciale, ĂȘtre un spĂ©cialiste certifiĂ©s, ou mĂȘme avoir un diplĂŽme afin d'ĂȘtre en mesure d'utiliser l'outil d'analyse. D'autres outils offrent une interface d’utilisateur simple, avec des tableaux de bord, pour satisfaire leur comprĂ©hension d’information pour tous ceux qui les ont vus pour la premiĂšre fois. Ce travail sera consacrĂ© aux outils d'analyse Web. Quoi qu'il en soit pour tous ceux qui pensent Ă  utiliser l'analyse pour ses propres besoins se pose une question: "quel outil doit je utiliser, qui convient Ă  mes besoins, et comment payer moins et obtenir un gain maximum". Dans ce travail je vais essayer de donner une rĂ©ponse sur cette question en proposant le systĂšme de recommandation pour les outils analytiques web –WARES, qui aideront l'utilisateur avec cette tĂąche "simple". Le systĂšme WARES utilise l'approche hybride, mais surtout, utilise des techniques basĂ©es sur le contenu pour faire des suggestions. Le systĂšme utilise certains ratings initiaux faites par utilisateur, comme entrĂ©e, pour rĂ©soudre le problĂšme du “dĂ©marrage Ă  froid”, offrant la meilleure solution possible en fonction des besoins des utilisateurs. Le besoin de consultations coĂ»teuses avec des experts ou de passer beaucoup d'heures sur Internet, en essayant de trouver le bon outil. Le systĂšme lui–mĂȘme devrait effectuer une recherche en ligne en utilisant certaines donnĂ©es prĂ©alablement mises en cache dans la base de donnĂ©es hors ligne, reprĂ©sentĂ©e comme une ontologie d'outils analytiques web existants extraits lors de la recherche en ligne prĂ©cĂ©dente.It is hard to imagine modern business without analytics; it is a trend in modern business, even small companies and individual entrepreneurs start using analytics tools, in one way or another, for their business. Not surprising that there exist many different tools for different domains, they vary in purpose from simple friends and visits statistic for your Facebook page, to big and sophisticated systems designed for the big corporations, they could be free or paid. Sometimes you need to pass special training, be a certified specialist, or even have a degree to be able to use analytics tool, other tools offers simple user interface with dashboards for easy understanding and availability for everyone who saw them for the first time. Anyway, for everyone who is thinking about using analytics for his/her own needs stands a question: “what tool should I use, which one suits my needs and how to pay less and get maximum gain”. In this work, I will try to give an answer to this question by proposing a recommender tool, which will help the user with this “simple task”. This paper is devoted to the creation of WARES, as reduction from Web Analytics REcommender System. Proposed recommender system uses hybrid approach, but mostly, utilize content–based techniques for making suggestions, while using some user’s ratings as an input for “cold start” search. System produces recommendations depending on user’s needs, also allowing quick adjustments in selection without need of expensive consultations with experts or spending lots of hours for Internet search, trying to find out the right tool. The system itself should perform as an online search using some pre–cached data in offline database, represented as an ontology of existing web analytics tools, extracted during the previous online search

    Harnessing the power of the general public for crowdsourced business intelligence: a survey

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    International audienceCrowdsourced business intelligence (CrowdBI), which leverages the crowdsourced user-generated data to extract useful knowledge about business and create marketing intelligence to excel in the business environment, has become a surging research topic in recent years. Compared with the traditional business intelligence that is based on the firm-owned data and survey data, CrowdBI faces numerous unique issues, such as customer behavior analysis, brand tracking, and product improvement, demand forecasting and trend analysis, competitive intelligence, business popularity analysis and site recommendation, and urban commercial analysis. This paper first characterizes the concept model and unique features and presents a generic framework for CrowdBI. It also investigates novel application areas as well as the key challenges and techniques of CrowdBI. Furthermore, we make discussions about the future research directions of CrowdBI
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