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A LANGUAGE MODELING APPROACH TO INFORMATION RETR I E VAL J AY M. Ponte & W. B RUCE Croft

This paper explores a language modeling approach to information retrieval, focusing on the integration of document indexing and retrieval models. The non-parametric approach is inspired by speech recognition and aims to create a single model that combines indexing and retrieval. Experimental results demonstrate the effectiveness of this approach.

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A LANGUAGE MODELING APPROACH TO INFORMATION RETR I E VAL J AY M. Ponte & W. B RUCE Croft

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  1. Murat Açar - Zeynep Çipiloğlu Yıldız A LANGUAGE MODELING APPROACH TO INFORMATION RETRIEVALJAYM. Ponte & W. BRUCECroft

  2. The problem is: • the integration of document indexing and retrieval models • the lack of an adequate indexing model • parametric assumptions • prior assumptions about the similarity of documents • The novel approach is: • non-parametric • based on probabilistic language modeling • to integrate document indexing and document retrieval models into a single model • inspired by speech recognition Introduction

  3. 2-Poisson model [Harter] • probabilistic indexing model • a subset of terms in a document is useful for indexing • identify words by distribution and assign indexing words • Robertson and Spark Jones model • estimates the probability of relevance of each document to the query • INQUERY inference network model [Turtle and Croft] • integrate indexing and retrieval by making inferences of concepts from features • features: words, phrases, or more complex structures • Bayesian network (for multiple feature sets/queries) Previous Work

  4. Method: • infer a language model for each document individually • estimate the probability of producing the query • rank the documents with respect to probabilities • Estimate the prob. of the query, given the LM of doc. d • MLE of the prob. of term t under term distribution of doc. d •  Problem: only document sized sample Language Model

  5. Risk function (geometric distribution): • Probability of producing the query for a given document model • Compute               for each candidate document and rank Language Model (cont.)

  6. 11 point recall/precision experiments on TREC data • Labrador(a research prototype retrieval engine) • Wilcoxon test • LM:  •  has better precision             at all levels •  significantly better at several levels Experimental Results

  7. Text retrieval based on probabilistic language modeling • It is both conceptually simple and explanatory • The improvement in the performance is not the main point • More significant is that a different approach to retrieval was shown to be effective • It can be improved: • Additional knowledge about the language generation process will yield better estimates • Textual/graphical tools to sense the distribution of terms Conclusion / FUTURE WORK

  8. [1]  Harter,S. P. "A  Probabilistic  Approach  to Automatic   Keyword  Indexing”  Journal  of  the  American Society  for  Information  Science,  July-August,  1975.  [2]  Robertson,  S.  E.  and  K.  Sparck Jones.  “Relevance        Weighting  Of  Search  Terms,”  Journal  of  the  American Society  for  Information  Science,  vol.  27,  1977.  [3]  Turtle  H.  and  W.  B.  Croft.  “Efficient  Probabilistic  Inference  for  Text  Retrieval,”  Proceedings  of  RIAO 3,  1991.  References

  9. THANK YOU FOR LISTENING

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