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Inductive logic programming
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=== Structure Learning === Structure learning was pioneered by [[Daphne Koller]] and Avi Pfeffer in 1997,<ref>{{Cite conference |last1=Koller |first1=Daphne |last2=Pfeffer |first2=Avi |date=August 1997 |title=Learning probabilities for noisy first-order rules |url=http://www.robotics.stanford.edu/~koller/Papers/Koller+Pfeffer:IJCAI97.pdf |conference=[[IJCAI]]}}</ref> where the authors learn the structure of [[First-order logic|first-order]] rules with associated probabilistic uncertainty parameters. Their approach involves generating the underlying [[graphical model]] in a preliminary step and then applying expectation-maximisation.<ref name="pilp" /> In 2008, [[Luc De Raedt|De Raedt]] et al. presented an algorithm for performing [[theory compression]] on [[ProbLog]] programs, where theory compression refers to a process of removing as many clauses as possible from the theory in order to maximize the probability of a given set of positive and negative examples. No new clause can be added to the theory.<ref name="pilp" /><ref>{{Cite journal |last1=De Raedt |first1=L. |last2=Kersting |first2=K. |last3=Kimmig |first3=A. |last4=Revoredo |first4=K. |last5=Toivonen |first5=H. |date=March 2008 |title=Compressing probabilistic Prolog programs |url=http://link.springer.com/10.1007/s10994-007-5030-x |journal=Machine Learning |language=en |volume=70 |issue=2β3 |pages=151β168 |doi=10.1007/s10994-007-5030-x |issn=0885-6125}}</ref> In the same year, Meert, W. et al. introduced a method for learning parameters and structure of [[Ground term|ground]] probabilistic logic programs by considering the [[Bayesian network]]s equivalent to them and applying techniques for learning Bayesian networks.<ref>{{Citation |last1=Blockeel |first1=Hendrik |title=Towards Learning Non-recursive LPADs by Transforming Them into Bayesian Networks |url=http://dx.doi.org/10.1007/978-3-540-73847-3_16 |work=Inductive Logic Programming |pages=94β108 |access-date=2023-12-09 |place=Berlin, Heidelberg |publisher=Springer Berlin Heidelberg |isbn=978-3-540-73846-6 |last2=Meert |first2=Wannes|series=Lecture Notes in Computer Science |date=2007 |volume=4455 |doi=10.1007/978-3-540-73847-3_16 }}</ref><ref name="pilp" /> ProbFOIL, introduced by De Raedt and Ingo Thon in 2010, combined the inductive logic programming system [[First-order inductive learner|FOIL]] with [[ProbLog]]. Logical rules are learned from probabilistic data in the sense that both the examples themselves and their classifications can be probabilistic. The set of rules has to allow one to predict the probability of the examples from their description. In this setting, the parameters (the probability values) are fixed and the structure has to be learned.<ref>{{Citation |last1=De Raedt |first1=Luc |title=Probabilistic Rule Learning |date=2011 |url=http://link.springer.com/10.1007/978-3-642-21295-6_9 |work=Inductive Logic Programming |volume=6489 |pages=47β58 |editor-last=Frasconi |editor-first=Paolo |access-date=2023-12-09 |place=Berlin, Heidelberg |publisher=Springer Berlin Heidelberg |doi=10.1007/978-3-642-21295-6_9 |isbn=978-3-642-21294-9 |last2=Thon |first2=Ingo |s2cid=11727522 |editor2-last=Lisi |editor2-first=Francesca A.}}</ref><ref name="pilp" /> In 2011, Elena Bellodi and Fabrizio Riguzzi introduced SLIPCASE, which performs a beam search among probabilistic logic programs by iteratively refining probabilistic theories and optimizing the parameters of each theory using expectation-maximisation.<ref>{{Citation |last1=Bellodi |first1=Elena |title=Learning the Structure of Probabilistic Logic Programs |date=2012 |url=http://dx.doi.org/10.1007/978-3-642-31951-8_10 |work=Inductive Logic Programming |pages=61β75 |access-date=2023-12-09 |place=Berlin, Heidelberg |publisher=Springer Berlin Heidelberg |isbn=978-3-642-31950-1 |last2=Riguzzi |first2=Fabrizio|doi=10.1007/978-3-642-31951-8_10 }}</ref> Its extension SLIPCOVER, proposed in 2014, uses bottom clauses generated as in [[Progol]] to guide the refinement process, thus reducing the number of revisions and exploring the search space more effectively. Moreover, SLIPCOVER separates the search for promising clauses from that of the theory: the space of clauses is explored with a [[beam search]], while the space of theories is searched [[Greedy search|greedily]].<ref>{{Cite journal |last1=Bellodi |first1=Elena |last2=Riguzzi |first2=Fabrizio |date=2014-01-15 |title=Structure learning of probabilistic logic programs by searching the clause space |url=http://dx.doi.org/10.1017/s1471068413000689 |journal=Theory and Practice of Logic Programming |volume=15 |issue=2 |pages=169β212 |doi=10.1017/s1471068413000689 |arxiv=1309.2080 |s2cid=17669522 |issn=1471-0684}}</ref><ref name="pilp" />
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