2008
DOI: 10.1109/tkde.2008.110
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Using Context to Improve Predictive Modeling of Customers in Personalization Applications

Abstract: Abstract-The idea that context is important when predicting customer behavior has been maintained by scholars in marketing and data mining. However, no systematic study measuring how much the contextual information really matters in building customer models in personalization applications has been done before. In this paper, we study how important the contextual information is when predicting customer behavior and how to use it when building customer models. It is done by conducting an empirical study across a… Show more

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Cited by 172 publications
(120 citation statements)
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References 22 publications
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“…However, from the perspective of behavior science [11], as well as being supported by recent works that use contextual information to predict user behavior in various information systems [30,27,29], we believe that an agent's behavior change in the transactions is correlated with and can be inferred (to certain extent) by the associated contextual information (e.g., by considering the dynamic trust [21,23]). For instance, in an online auction site like eBay, a seller may vary his behavior consciously or unwittingly in selling different items (e.g., he may be careful when selling expensive goods, but imprudent with cheap ones).…”
Section: Discussionmentioning
confidence: 83%
“…However, from the perspective of behavior science [11], as well as being supported by recent works that use contextual information to predict user behavior in various information systems [30,27,29], we believe that an agent's behavior change in the transactions is correlated with and can be inferred (to certain extent) by the associated contextual information (e.g., by considering the dynamic trust [21,23]). For instance, in an online auction site like eBay, a seller may vary his behavior consciously or unwittingly in selling different items (e.g., he may be careful when selling expensive goods, but imprudent with cheap ones).…”
Section: Discussionmentioning
confidence: 83%
“…As in [20], we assume that there is a predefined finite set of contextual types in a given application and each of these types has a well-defined structure. In particular, in our mobile scenario we consider the context as represented by the following information:…”
Section: Context-aware Recommender Systems In Mobilitymentioning
confidence: 99%
“…Time is modeled here as a multidimensional attribute. The dimensions of time have a hierarchical structure, that is, time values are organized at different levels of granularity (similar to [16,18]). In particular, we consider three different levels over time: time of day, day of week and time of week with domain values {"morning", "afternoon", "evening", "night"}, {"Mon", "Tue", "Wed", "Thu", "Fri", "Sat", "Sun"} and {"Weekday", "Weekend"}, respectively.…”
Section: Temporal Context-based Recommendationsmentioning
confidence: 99%
“…Several extensions have been proposed, such as employing multi-criteria ratings (e.g., [2]) and defining recommendations for groups (e.g., [4,15,14]). Recently, there are also approaches focusing on enhancing recommendations with further contextual information (e.g., [3,16]). In these approaches, context is defined as a set of dimensions, or attributes, such as location, companion and time, with hierarchical structure.…”
Section: Related Workmentioning
confidence: 99%