85 research outputs found

    Unraveling e-WOM patterns using text mining and sentiment analysis

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    Electronic word-of-mouth (e-WOM) is a very important way for firms to measure the pulse of its online reputation. Today, consumers use e-WOM as a way to interact with companies and share not only their satisfaction with the experience, but also their discontent. E-WOM is even a good way for companies to co-create better experiences that meet consumer needs. However, not many companies are using such unstructured information as a valuable resource to help in decision making. First, because e-WOM is mainly textual information that needs special data treatment and second, because it is spread in many different platforms and occurs in near-real-time, which makes it hard to handle. The current chapter revises the main methodologies used successfully to unravel hidden patterns in e-WOM in order to help decision makers to use such information to better align their companies with the consumer’s needs.info:eu-repo/semantics/acceptedVersio

    Towards Comparative Mining of Web Document Objects with NFA

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    IR with and without GA

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    Machine Learning Approaches for Sentiment Analysis

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