搜索就好像你在你的家乡:地理搜索区域背景和动态特征空间选择

Makoto P. Kato, H. Ohshima, S. Oyama, Katsumi Tanaka
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引用次数: 6

摘要

我们提出了一种按例查询的地理对象搜索方法,用于不太了解自己所在位置的用户。地理对象(如餐馆)通常使用基于属性或关键字的查询来检索。然而,对于那些对他们想要搜索的地方知之甚少的用户来说,这些查询很难使用。提出的按例查询方法允许用户通过在熟悉的地方选择示例来检索不熟悉的地方的对象进行查询。其中一个挑战是预测有效的距离度量,这因人而异。另一个挑战是计算异构领域中对象之间的距离,考虑它们之间的特征差距,例如,日本和中国的餐馆。我们提出的方法通过放大选择和非选择样本之间的差异来稳健地估计距离度量。利用距离度量,将熟悉域内的目标均匀分配到不熟悉域内的目标上,消除域间的差异。我们使用从日本餐馆Web指南获得的数据开发了一个餐馆搜索来评估我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Search as if you were in your home town: geographic search by regional context and dynamic feature-space selection
We propose a query-by-example geographic object search method for users that do not know well about the place they are in. Geographic objects, such as restaurants, are often retrieved using an attribute-based or keyword query. These queries, however, are difficult to use for users that have little knowledge on the place where they want to search. The proposed query-by-example method allows users to query by selecting examples in familiar places for retrieving objects in unfamiliar places. One of the challenges is to predict an effective distance metric, which varies for individuals. Another challenge is to calculate the distance between objects in heterogeneous domains considering the feature gap between them, for example, restaurants in Japan and China. Our proposed method is used to robustly estimate the distance metric by amplifying the difference between selected and non-selected examples. By using the distance metric, each object in a familiar domain is evenly assigned to one in an unfamiliar domain to eliminate the difference between those domains. We developed a restaurant search using data obtained from a Japanese restaurant Web guide to evaluate our method.
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