73,303 research outputs found
Application and evaluation of multi-dimensional diversity
Traditional information retrieval (IR) systems mostly focus on finding documents relevant to queries without considering other documents in the search results. This approach works quite well in general cases; however, this also means that the set of returned documents in a result list can be very similar to each other. This can be an undesired system property from a user's perspective. The creation of IR systems that support the search result diversification present many challenges, indeed current evaluation measures and methodologies are still unclear with regards to specific search domains and dimensions of diversity. In this paper, we highlight various issues in relation to image search diversification for the ImageClef 2009 collection and tasks. Furthermore, we discuss the problem of defining clusters/subtopics by mixing diversity dimensions regardless of which dimension is important in relation to information need or circumstances. We also introduce possible applications and evaluation metrics for diversity based retrieval
Events and Controversies: Influences of a Shocking News Event on Information Seeking
It has been suggested that online search and retrieval contributes to the
intellectual isolation of users within their preexisting ideologies, where
people's prior views are strengthened and alternative viewpoints are
infrequently encountered. This so-called "filter bubble" phenomenon has been
called out as especially detrimental when it comes to dialog among people on
controversial, emotionally charged topics, such as the labeling of genetically
modified food, the right to bear arms, the death penalty, and online privacy.
We seek to identify and study information-seeking behavior and access to
alternative versus reinforcing viewpoints following shocking, emotional, and
large-scale news events. We choose for a case study to analyze search and
browsing on gun control/rights, a strongly polarizing topic for both citizens
and leaders of the United States. We study the period of time preceding and
following a mass shooting to understand how its occurrence, follow-on
discussions, and debate may have been linked to changes in the patterns of
searching and browsing. We employ information-theoretic measures to quantify
the diversity of Web domains of interest to users and understand the browsing
patterns of users. We use these measures to characterize the influence of news
events on these web search and browsing patterns
Visualising the South Yorkshire floods of ‘07
This paper describes initial work on developing an information
system to gather, process and visualise various multimedia data sources related to the South Yorkshire (UK) floods of 2007. The work is part of the Memoir project which aims to investigate how technology can help people create and manage long-term personal memories. We are using maps to aggregate multimedia data and to stimulate remembering past events. The paper describes an initial prototype; challenges faced so far and planned future work
Social media and tourism : a wishful relationship
For decades hospitality firms were used to domain the communication process. Thematic social network sites such as TripAdvisor became very important tools for travelers when deciding which hotels to book, and what restaurants and tourist attractions to visit, been a visible part of tourism communication evolution. Evidence suggests that e-WOM serves as a primary information source when tourists choose destinations, hotels, and other experiences. The role and use of social media in tourists’ decision making has been widely discuss in tourism and hospitality research, especially in the research phase of the tourist’ travel planning process. With the wide adoption of social media the influence of customers’ word-of-mouth increased and influences not only the research phase, but the repetition and overall customers’ experiences. To answer these questions a model assessing e-wom was developed and data was gathering from TripAdvisor regarding customer’s opinion in restaurant experiences. The results found establish the bases for understanding tourists’ engagement level and profiles.N/
Diversified Visual Attention Networks for Fine-Grained Object Classification
Fine-grained object classification is a challenging task due to the subtle
inter-class difference and large intra-class variation. Recently, visual
attention models have been applied to automatically localize the discriminative
regions of an image for better capturing critical difference and demonstrated
promising performance. However, without consideration of the diversity in
attention process, most of existing attention models perform poorly in
classifying fine-grained objects. In this paper, we propose a diversified
visual attention network (DVAN) to address the problems of fine-grained object
classification, which substan- tially relieves the dependency on
strongly-supervised information for learning to localize discriminative regions
compared with attentionless models. More importantly, DVAN explicitly pursues
the diversity of attention and is able to gather discriminative information to
the maximal extent. Multiple attention canvases are generated to extract
convolutional features for attention. An LSTM recurrent unit is employed to
learn the attentiveness and discrimination of attention canvases. The proposed
DVAN has the ability to attend the object from coarse to fine granularity, and
a dynamic internal representation for classification is built up by
incrementally combining the information from different locations and scales of
the image. Extensive experiments con- ducted on CUB-2011, Stanford Dogs and
Stanford Cars datasets have demonstrated that the proposed diversified visual
attention networks achieve competitive performance compared to the state-
of-the-art approaches, without using any prior knowledge, user interaction or
external resource in training or testing
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