IRAICLFeb 7, 2016

Scalable Text Mining with Sparse Generative Models

arXiv:1602.02332v1
Originality Incremental advance
AI Analysis

This addresses the problem of handling large-scale text data efficiently for researchers and practitioners in text mining, offering a general and scalable solution that is not incremental but builds on existing methods with significant improvements.

The paper tackles the challenge of scalable text mining by proposing sparse generative models, which combine generative models with sparse computation to reduce computational complexity. It shows that this approach matches or outperforms leading task-specific methods in effectiveness, with an order of magnitude decrease in classification times for Wikipedia article categorization with a million classes.

The information age has brought a deluge of data. Much of this is in text form, insurmountable in scope for humans and incomprehensible in structure for computers. Text mining is an expanding field of research that seeks to utilize the information contained in vast document collections. General data mining methods based on machine learning face challenges with the scale of text data, posing a need for scalable text mining methods. This thesis proposes a solution to scalable text mining: generative models combined with sparse computation. A unifying formalization for generative text models is defined, bringing together research traditions that have used formally equivalent models, but ignored parallel developments. This framework allows the use of methods developed in different processing tasks such as retrieval and classification, yielding effective solutions across different text mining tasks. Sparse computation using inverted indices is proposed for inference on probabilistic models. This reduces the computational complexity of the common text mining operations according to sparsity, yielding probabilistic models with the scalability of modern search engines. The proposed combination provides sparse generative models: a solution for text mining that is general, effective, and scalable. Extensive experimentation on text classification and ranked retrieval datasets are conducted, showing that the proposed solution matches or outperforms the leading task-specific methods in effectiveness, with a order of magnitude decrease in classification times for Wikipedia article categorization with a million classes. The developed methods were further applied in two 2014 Kaggle data mining prize competitions with over a hundred competing teams, earning first and second places.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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