Web pages consist of different visual segments, serving different purposes. Typical structural segments are header, right or left columns and main content. Segments can also have nested structure which means some segments may include other segments. Understanding these segments is important in properly displaying web pages for small screen devices and in alternative forms such as audio for screen reader users. There exist different techniques in identifying visual segments in a web page. One successful approach is Vision Based Segmentation Algorithm (VIPS Algorithm) which uses both the underlying source code and also the visual rendering of a web page. However, there are some limitations of this approach and this paper explains how we have extended and improved VIPS and built it in Java. We have also conducted some online user evaluations to investigate how people perceive the success of the segmentation approach and in which granularity they prefer to see a web page segmented. This paper presents the preliminary results which show that, people perceive segmentation with higher granularity as better segmentation regardless of the web page complexity.
In response to calls for better understanding the dynamics of coopetition, this study aims to develop a framework that explains why the levels of competition and cooperation change over time. The framework adopts the twocontinua approach to coopetition and the theoretical concepts of power and stake from the stakeholder literature. Integrating concepts from the coopetition and stakeholder literatures is a promising attempt, which is justified by the fact that stakeholders are in coopetition with the firm. According to our framework the power difference affects the level of competition, and vice versa, whereas common stakes affect the level of cooperation, and vice versa. This was subject to a test with insights from the in-depth analysis of the changing coopetition between the Volkswagen Group and Porsche AG during the period 2001-2012. Our findings explain why an environmental threat on one of the firms shifted the power difference and changed the coopetition first from cooperation-dominant to balanced-strong and then ended it through a full acquisition.
Purpose This paper aims to clarify the fit of competitive strategies and firm-specific advantages (FSAs) with country-specific advantages (CSAs) in explaining manufacturing location choices at product category level in the European automotive industry. Design/methodology/approach Seven hypotheses are formulated and tested using binomial logistic regression with data from 148 passenger car models (i.e. product category level) that are sold in Europe and manufactured in countries that offer CSAs of either cost advantages or differentiation advantages. The first four hypotheses test manufacturing location choices of product categories pursuing cost leadership strategy, differentiation strategy, focus strategy and hybrid strategy. The other three hypotheses test whether FSAs of R&D capability, marketing capability and operations capability will impact on the manufacturing location choice. The tests control for the type of passenger cars as well as the manufacturer’s region of origin. Findings While pursuing cost leadership strategy leads to manufacturing in countries that offer cost advantages, pursuing differentiation strategy as well as strong R&D capability and marketing capability result in manufacturing in countries that offer differentiation advantages. Focus strategy, hybrid strategy and operations capability do not have an impact on the manufacturing location choice at product category level. Research limitations/implications Conducting empirical research at product category level is subject to limitations in the choices of FSAs due to lack of availability of data. Practical implications Managers should assess the competitive strategies and FSAs of their product categories and then decide about manufacturing locations based on their fit with host country CSAs. Policymakers should understand the CSAs of their countries and target to attract manufacturing FDI from product categories with matching competitive strategies and FSAs. Originality/value The research contributes to discussions in explaining manufacturing location choices. Its originality lies in being the first study to test the fit of competitive strategies and FSAs of product categories with CSAs.
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Web pages are typically designed for visual interaction -they include many visual elements to guide the reader. However, when they are accessed in alternative forms such as in audio, these elements are not available and therefore they become inaccessible. This paper presents our ontology-based heuristic approach that automatically identifies visual elements of web pages and their roles. Our architecture has three major components: 1. automatic identification of visual elements of web pages, 2. automatic generation of heuristics as Jess rules from an ontology and 3. application of these heuristic rules to web pages for automatic annotation of visual elements and their roles. This paper first explains our architecture in detail and then presents our both technical and user evaluations of the proposed approach and architecture. Our technical evaluation shows that complexity is an important performance factor in role detection and our user evaluation shows that our proposed system has around 80% receptive accuracy, but the proposed knowledge base could be further improved for better accuracy.
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