Exploring Adaptive Window Sizes for Entity Retrieval
نویسندگان
چکیده
With the continuous attention of modern search engines to retrieve entities and not just documents for any given query, we introduce a new method for enhancing the entity-ranking task. An entity-ranking task is concerned with retrieving a ranked list of entities as a response to a specific query. Some successful models used the idea of association discovery in a window of text, rather than in the whole document. However, these studies considered only fixed window sizes. This work proposes a way of generating an adaptive window size for each document by utilising some of the document features. These features include document length, average sentence length, number of entities in the document, and the readability index. Experimental results show a positive effect once taking these document features into consideration when determining window size.
منابع مشابه
Adaptive Window Size Selection for Proximity Search
Term proximity has been successfully used in many entity retrieval searches and enhance the quality of the retrieval systems. In general, the goal of entity searches is to retrieve a ranked list of entities in response to a user’s query. The entities could be organisations, products, location, or people. Some of the proximity models that were successful used association discovery in a window of...
متن کاملIncorporating window-based passage-level evidence in document retrieval
This study investigated whether information retrieval can be improved if documents are divided into smaller subdocuments or passages, and the retrieval score for these passages are incorporated in the final retrieval score for the whole document. The documents were segmented by sliding a window of a certain size across the document. Each time the window stopped, it displayed/extracted a certain...
متن کاملAn Adaptive Window-Size Approach for Expert-Finding
The goal of expert-finding is to retrieve a ranked list of people as a response to a user query. Some models that proved to be very successful used the idea of association discovery in a window of text rather than the whole document. So far, all these studies only considered fixed window sizes. We propose an adaptive window-size approach for expert-finding. For this work we use some of the docu...
متن کاملAdaptive Segmentation with Optimal Window Length Scheme using Fractal Dimension and Wavelet Transform
In many signal processing applications, such as EEG analysis, the non-stationary signal is often required to be segmented into small epochs. This is accomplished by drawing the boundaries of signal at time instances where its statistical characteristics, such as amplitude and/or frequency, change. In the proposed method, the original signal is initially decomposed into signals with different fr...
متن کاملComparing Document Segmentation Strategies for Passage Retrieval in Question Answering
Information retrieval (IR) techniques are used in question answering (QA) to retrieve passages from large document collections which are relevant to answering given natural language questions. In this paper we investigate the impact of document segmentation approaches on the retrieval performance of the IR component in our Dutch QA system. In particular we compare segmentations into discourse-b...
متن کامل