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Autonomous Machine Learning (ALMA): generating rules from data streams

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNChapter (peer-reviewed)

Published

Standard

Autonomous Machine Learning (ALMA): generating rules from data streams. / Angelov, Plamen.
Proceedings of the Special International Conference on Complex Systems, COSY-2011: 16-19 September 2011. Ohrid, FYR of Macedonia, 2011. p. 249-256.

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNChapter (peer-reviewed)

Harvard

Angelov, P 2011, Autonomous Machine Learning (ALMA): generating rules from data streams. in Proceedings of the Special International Conference on Complex Systems, COSY-2011: 16-19 September 2011. Ohrid, FYR of Macedonia, pp. 249-256.

APA

Angelov, P. (2011). Autonomous Machine Learning (ALMA): generating rules from data streams. In Proceedings of the Special International Conference on Complex Systems, COSY-2011: 16-19 September 2011 (pp. 249-256).

Vancouver

Angelov P. Autonomous Machine Learning (ALMA): generating rules from data streams. In Proceedings of the Special International Conference on Complex Systems, COSY-2011: 16-19 September 2011. Ohrid, FYR of Macedonia. 2011. p. 249-256

Author

Angelov, Plamen. / Autonomous Machine Learning (ALMA) : generating rules from data streams. Proceedings of the Special International Conference on Complex Systems, COSY-2011: 16-19 September 2011. Ohrid, FYR of Macedonia, 2011. pp. 249-256

Bibtex

@inbook{fe4aee3c3f1f44dc8cb4eb6c625d2793,
title = "Autonomous Machine Learning (ALMA): generating rules from data streams",
abstract = "In this paper the well known problem of automatically generating tractable models (for example, but not limited to fuzzy rules) from data by learning will be given a new impetus by introduction of the concept of Autonomous Learning MAchines (ALMA). This concept increases the level of automation and autonomy of the process of model identification and design by reducing the need for human intervention in parts of the problem where this is traditionally done manually and off-line such as model structure identification. The proposed concept is generic and is not limited to fuzzy rule based (FRB) systems or neuro-fuzzy (NF) systems, but is also applicable to hidden Markov models (HMM), decision trees between others. For the specific case of FRB and NF models which are considered in thispaper, the membership functions (MF) are automatically generated from (and represent) the true data distribution using kernels and data clouds and recursively estimated relative data density. In this paper we propose an original method for evolving clouds from data based on the well known mean-shift approach and we propose an evolving version of it which we call evolving local means (ELM). The proposed ALMA can be used as a basis of software algorithms and agents and hardware devices in a wide range of problems in industry, defense, security, space exploration, robotics, human behavior analysis, assisted living, etc.",
author = "Plamen Angelov",
year = "2011",
month = sep,
day = "19",
language = "English",
pages = "249--256",
booktitle = "Proceedings of the Special International Conference on Complex Systems, COSY-2011",

}

RIS

TY - CHAP

T1 - Autonomous Machine Learning (ALMA)

T2 - generating rules from data streams

AU - Angelov, Plamen

PY - 2011/9/19

Y1 - 2011/9/19

N2 - In this paper the well known problem of automatically generating tractable models (for example, but not limited to fuzzy rules) from data by learning will be given a new impetus by introduction of the concept of Autonomous Learning MAchines (ALMA). This concept increases the level of automation and autonomy of the process of model identification and design by reducing the need for human intervention in parts of the problem where this is traditionally done manually and off-line such as model structure identification. The proposed concept is generic and is not limited to fuzzy rule based (FRB) systems or neuro-fuzzy (NF) systems, but is also applicable to hidden Markov models (HMM), decision trees between others. For the specific case of FRB and NF models which are considered in thispaper, the membership functions (MF) are automatically generated from (and represent) the true data distribution using kernels and data clouds and recursively estimated relative data density. In this paper we propose an original method for evolving clouds from data based on the well known mean-shift approach and we propose an evolving version of it which we call evolving local means (ELM). The proposed ALMA can be used as a basis of software algorithms and agents and hardware devices in a wide range of problems in industry, defense, security, space exploration, robotics, human behavior analysis, assisted living, etc.

AB - In this paper the well known problem of automatically generating tractable models (for example, but not limited to fuzzy rules) from data by learning will be given a new impetus by introduction of the concept of Autonomous Learning MAchines (ALMA). This concept increases the level of automation and autonomy of the process of model identification and design by reducing the need for human intervention in parts of the problem where this is traditionally done manually and off-line such as model structure identification. The proposed concept is generic and is not limited to fuzzy rule based (FRB) systems or neuro-fuzzy (NF) systems, but is also applicable to hidden Markov models (HMM), decision trees between others. For the specific case of FRB and NF models which are considered in thispaper, the membership functions (MF) are automatically generated from (and represent) the true data distribution using kernels and data clouds and recursively estimated relative data density. In this paper we propose an original method for evolving clouds from data based on the well known mean-shift approach and we propose an evolving version of it which we call evolving local means (ELM). The proposed ALMA can be used as a basis of software algorithms and agents and hardware devices in a wide range of problems in industry, defense, security, space exploration, robotics, human behavior analysis, assisted living, etc.

M3 - Chapter (peer-reviewed)

SP - 249

EP - 256

BT - Proceedings of the Special International Conference on Complex Systems, COSY-2011

CY - Ohrid, FYR of Macedonia

ER -