Banko 2007 Open Information Extraction from the Web

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Citation

Banko, M., Cafarella, M., Soderland, S., Broadhead, M. and Etzioni, O. 2007. Open Information Extraction from the Web. In Proceedings of IJCAI.

Online version

An online version of this paper is available at [1].

Summary

This paper introduces a novel approach to iteratively extract information from the web in the open domains, it also presents TextRunner, a large-scale open information extraction system with its current results and statistics.

Key Contributions

The biggest contribution claimed by the authors in this paper is the new paradigm of open information extraction which does not require any human input, it makes a single run through the data and generates large set of relational tuples. Another contribution of this paper is the analysis of TextRunner system and its current results.

The TextRunner System

The TextRunner system is designed as a fully automated open information extraction system. It takes a corpus as input and outputs a set of extractions that are also efficiently indexed to support exploration via user queries. As described in the paper, the system basically consists of three parts: (1) a self-supervised learner which gives a classifier to determine the "trustworthy" of any candidate extractions; (2) a single-pass extractor which makes a single pass over the entire corpus to extract tuples for all possible relations and sends each candidate to the classifier, retains the ones labeled as trustworthy; (3) a redundancy-based assessor which assigns a probability to each retained tuple based on a probabilistic model of redundancy in text.

[1] Self-Supervised Learner
As mentioned, the Learner operates in two steps. First, it automatically labels its own training data as positive or negative. Second, it uses this labeled data to train a Naive Bayes classifier, which is then used by the Extractor module. Here, the self-supervision refers to the approach that the learner uses its own labels as training data. As the author pointed out, the parser is not used at the web-scale, but it is used to help train an Extractor.

[2] Single-Pass Extractor
The Extractor makes a single pass over its corpus, automatically tagging each word in each sentence with its most probable part-of-speech. Using these tags, entities are found by identifying noun phrases using a lightweight chunker. Relations are found by examining the text between the noun phrases and heuristically eliminating non-essential phrases or individual tokens. Each candidate tuple is presented to the classifier. The trustworthy ones are extracted and stored by TextRunner.

[3] Redundancy-based Assessor
TextRunner creates a normalized form of the relation that omits modifiers to verbs and nouns. After extraction has been performed over the entire corpus, TextRunner automatically merges tuples where both entities and normalized relation are identical and counts the number of distinct sentences from which each extraction was found. Then, the Assessor uses these counts to assign a probability to each tuple using the probabilistic model previously applied to unsupervised IE in the KnowItAll system.

The TextRunner system also has a separate module of query processing for user interactions. This is essentially implemented as a relation-centric index system, it is described in Cafarella et al., 2006.

Experiments and Evaluation

The author first presents a recall and error rate of TextRunner to that of traditional IE system on a closed set of relations. Then the author turns into the results on open domain IE and shows the global statistics on learned facts.

In the comparison with traditional IE, the state-of-art KnowItAll system is picked and the experiments run on 9 Million web pages with 10 pre-selected relations. TextRunner achieves 33% error rate reduction with approximately the same number of extractions. On the other hand, the efficiency of TextRunner system is far better than that of KnowItAll system.

In the results on open domain IE, the authors focus on two most important parameters: the correctness of the facts and the number of distinct facts extracted. And the estimation shows that among 7.8 million well-formed tuples with probability ≥ 0.8, TextRunner finds 1 million concrete tuples with arguments grounded in particular real-world entities, 88.1% of which are correct, and 6.8 million tuples reflecting abstract assertions, 79.2% of which are correct.