Discovering Business Intelligence from the Subjective Web Data

Discovering Business Intelligence from the Subjective Web Data

Ranjit Bose
Copyright: © 2011 |Pages: 16
DOI: 10.4018/jbir.2011100101
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Abstract

The online word-of-mouth behavior that exists today in the Web represents new and measurable sources of information. The automated discovery or mining of consumer opinions from these sources is of great importance for marketing intelligence and product benchmarking. Techniques are now being developed to effectively and easily mine the consumer opinions from the Web data and to timely deliver them to companies and individual consumers. This study investigates this emerging field named ‘opinion mining’ in terms of what it is, what it can do, and how it could be used effectively for business intelligence (BI). A rigorous review of the research literature on opinion mining is conducted to explore its current state, issues and challenges for its use in developing business applications for competitive advantage. The study aims to assist business managers to better understand the current opportunities and challenges in using opinion mining for deriving BI. Future research directions for further development of the field are also identified.
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1. Introduction

Consumer opinions used to be very difficult to obtain before the Web was widely available to and used by every day citizens. To find consumer opinions about their products and those of their competitors, companies usually conducted consumer surveys or engaged external consultants. Getting consumer feedback meant asking them to participate in filling out survey instruments. This cumbersome approach had many problems such as making a survey for each product or feature; the format, distribution and timing of the survey (asking to send a form right after purchase might not be very informative); and the reliance on the goodwill of consumers to take the survey. Additionally, consumers shared their views primarily through spoken word of mouth. Thus, irrespective of how the consumer opinions were collected, they lead to a long period of latency before a brand’s weakness or strengths were known to all – the producers and consumers.

With the rapid expansion of e-commerce in recent years, more and more products are being sold on the Web, thus more and more consumers are buying products online. In recent years, the Web has dramatically changed the way consumers express opinions on products that they have purchased and used, or on services that they have received from various companies. Opinions and reviews are easily posted on the Web, such as in merchant sites, review portals, blogs, internet forums, and social networking sites (Wang et al., 2009). These data are commonly referred to as user-generated content or user-generated media. Both the product manufacturers as well as the potential customers find this online “word of mouth” very useful (Chen et al., 2008). The product manufacturers receive information on their customers’ likes and dislikes, as well as the positive and negative comments on their products whenever available, giving them better knowledge of their products’ limitations and advantages over their competitors. The potential customers on the other hand receive useful and “first hand” information on the products and/or services which assist them in their future purchase decision making process.

As more and more common users are becoming comfortable with the Web, an increasing number of them are writing reviews. Consequently, the number of reviews that a product receives is growing rapidly. Popular products can get hundreds or even thousands of reviews at some large merchant sites. Many of these reviews are long and have only a few sentences containing opinions on the product. This makes it hard for a potential customer to read them all to make an informed decision on whether to purchase the product. If the potential customer only reads a few reviews, they may get a biased view. Similarly, the large number of reviews also makes it hard for product manufacturers to keep track of customer opinions of their products. Moreover, the product manufacturer face additional difficulties since many merchant sites may sell the same product and the manufacturer normally produces many kinds of products.

The online word-of-mouth behavior that exists today in the Web represents new and measurable sources of information. Mining these consumer opinions is of great importance for marketing intelligence and product benchmarking. Techniques are now being developed to effectively and easily mine the consumer opinions from these sources and to timely deliver them to companies and individual consumers. In the past few years many researchers have been actively involved in developing this nascent and highly potent field of study, which is called opinion mining or sentiment analysis (Pang et al., 2008b; Liu, 2010).

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