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Proceedings ArticleDOI

Optimizing search engines using clickthrough data

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TLDR
The goal of this paper is to develop a method that utilizes clickthrough data for training, namely the query-log of the search engine in connection with the log of links the users clicked on in the presented ranking.
Abstract
This paper presents an approach to automatically optimizing the retrieval quality of search engines using clickthrough data. Intuitively, a good information retrieval system should present relevant documents high in the ranking, with less relevant documents following below. While previous approaches to learning retrieval functions from examples exist, they typically require training data generated from relevance judgments by experts. This makes them difficult and expensive to apply. The goal of this paper is to develop a method that utilizes clickthrough data for training, namely the query-log of the search engine in connection with the log of links the users clicked on in the presented ranking. Such clickthrough data is available in abundance and can be recorded at very low cost. Taking a Support Vector Machine (SVM) approach, this paper presents a method for learning retrieval functions. From a theoretical perspective, this method is shown to be well-founded in a risk minimization framework. Furthermore, it is shown to be feasible even for large sets of queries and features. The theoretical results are verified in a controlled experiment. It shows that the method can effectively adapt the retrieval function of a meta-search engine to a particular group of users, outperforming Google in terms of retrieval quality after only a couple of hundred training examples.

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Citations
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Proceedings ArticleDOI

User browsing models: relevance versus examination

TL;DR: It is shown that, for sponsored search results, a substantial portion of the change in CTR when conditioned on prior clicks is in fact due to a change in the relevance of results for that query instance, not just due to changes in the probability of examination.
Journal ArticleDOI

The power of search engine ranking for tourist destinations

TL;DR: This work modeled clickthrough rates of several published clickthrough reports and investigated the CTRs of a DMO's webpages on different ranks of different properties (web, image, and mobile searches) on a search engine, finding that top ranks are a necessary condition but not a sufficient one.
Proceedings ArticleDOI

A Click Sequence Model for Web Search

TL;DR: Wang et al. as mentioned in this paper proposed a click sequence model (CSM) that aims to predict the order in which a user will interact with search engine results, based on a neural network that follows the encoder-decoder architecture.
Proceedings ArticleDOI

Activity Auto-Completion: Predicting Human Activities from Partial Videos

TL;DR: An activity auto-completion (AAC) model for human activity prediction is proposed by formulating activity prediction as a query auto- completion (QAC) problem in information retrieval by extracting discriminative patches in frames of videos.
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Analysis and Optimization of Loss Functions for Multiclass, Top-k, and Multilabel Classification

TL;DR: This work provides an in-depth analysis of established and recently proposed single-label multiclass methods along with a detailed account of efficient optimization algorithms for them and uses the top-k methods to explore the transition from multiclass to multilabel learning.
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