Comparative study of machine learning techniques for boundary determination of explanation knowledge from text

This research aim to determine the explanation knowledge boundary for improvement of basic diagnosis. This paper compares different machine learning techniques including Maximum Entropy, Bayesian Networks, and Naive Bayes for solving the boundary determination problems of the discourse marker's connection problem, usage of several discourse markers within the boundary, and implicit discourse marker. The results have shown an improvement through using machine learning techniques comparing with Centering Theory used in the previous work.

[1]  Wolfgang Theilmann,et al.  Authoring processes for advanced learning strategies , 2004 .

[2]  Daniel Marcu,et al.  Building a Discourse-Tagged Corpus in the Framework of Rhetorical Structure Theory , 2001, SIGDIAL Workshop.

[3]  Chaveevan Pechsiri,et al.  Mining Causality for Explanation Knowledge from Text , 2007, Journal of Computer Science and Technology.

[4]  Jan Lemeire,et al.  Causal Models for Parallel Performance Analysis , 2004 .

[5]  Takashi Inui,et al.  Acquiring Causal Knowledge from Text Using Connective Markers , 2004 .

[6]  Roxana Gîrju,et al.  Automatic Detection of Causal Relations for Question Answering , 2003, ACL 2003.

[7]  Adam L. Berger,et al.  A Maximum Entropy Approach to Natural Language Processing , 1996, CL.

[8]  Yuji Matsumoto,et al.  Acquiring causal knowledge from text using the connective marker tame , 2005, TALIP.

[9]  Thomas G. Dietterich What is machine learning? , 2020, Archives of Disease in Childhood.

[10]  I. Csiszár Maxent, Mathematics, and Information Theory , 1996 .

[11]  Daniel Marcu,et al.  An Unsupervised Approach to Recognizing Discourse Relations , 2002, ACL.

[12]  Marco Aurisicchio,et al.  Towards automatic causality boundary identification from root cause analysis reports , 2009, J. Intell. Manuf..

[13]  Christopher S. G. Khoo Automatic identification of causal relations in text and their use for improving precision in information retrieval , 1996 .

[14]  Asanee Kawtrakul,et al.  Thai Named Entity Extraction by incorporating Maximum Entropy Model with Simple Heuristic Information , 2004 .

[15]  Du-Seong Chang,et al.  Causal Relation Extraction Using Cue Phrase and Lexical Pair Probabilities , 2004, IJCNLP.