In the MISP taxonomy context, machine tags help analysts to classify their cybersecurity events, indicators or threats. MISP taxonomies can be used for classification, filtering, triggering actions or visualisation depending on their use in threat intelligence platforms such as MISP [@?MISP-P].
Machine tags are represented as a string. Below listed are a set of sample machine tags for different namespaces such as tlp, admiralty-scale and osint.
The MISP taxonomy format uses the JSON [@!RFC4627] format. Each namespace is represented as a JSON object with meta information including the following fields: namespace, description, version, type.
namespace defines the overall namespace of the machine tag. The namespace is represented as a string and **MUST** be present. The description is represented as a string and **MUST** be present. A version is represented as a unsigned integer **MUST** be present. A type defines where a specific taxonomy is applicable and a type can be applicable at event, user or org level. The type is represented as an array containing one or more type and **SHOULD** be present. If a type is not mentioned, by default, the taxonomy is applicable at event level only. An exclusive boolean property **MAY** be present and defines at namespace level if the predicates are mutually exclusive.
predicates defines all the predicates available in the namespace defined. predicates is represented as an array of JSON objects. predicates **MUST** be present and **MUST** at least content one element.
The predicates array contains one or more JSON objects which lists all the possible predicates. The JSON object contains two fields: value and expanded. value **MUST** be present. expanded **SHOULD** be present. value is represented as a string and describes the predicate value. The predicate value **MUST** not contain spaces or colons. expanded is represented as a string and describes the human-readable version of the predicate value. An exclusive property **MAY** be present and defines at namespace level if the values are mutually exclusive.
The values array contain one or more JSON objects which lists all the possible values of a predicate. The JSON object contains two fields: predicate and entry. predicate is represented as a string and describes the predicate value. entry is an array with one or more JSON objects. The JSON object contains two fields: value and expanded. value **MUST** be present. expanded **SHOULD** be present. value is represented as a string and describes the machine parsable value. expanded is represented as a string and describes the human-readable version of the value.
colour fields **MAY** be used at predicates or values level to set a specify colour that **MAY** be used by the implementation. The colour field is described as an RGB colour fill in hexadecimal representation.
description fields **MAY** be used at predicates or values level to add a descriptive and human-readable information about the specific predicate or value. The field is represented as a string. Implementations **MAY** use the description field to improve more contextual information. The description at the namespace level is a **MUST** as described above.
The public directory of MISP taxonomies [@?MISP-T] contains a variety of taxonomy in various fields such as:
CERT-XLM:
: CERT-XLM Security Incident Classification.
DML:
: The Detection Maturity Level (DML) model is a capability maturity model for referencing ones maturity in detecting cyber attacks. It's designed for organizations who perform intel-driven detection and response and who put an emphasis on having a mature detection program.
PAP:
: The Permissible Actions Protocol - or short: PAP - was designed to indicate how the received information can be used.
access-method:
: The access method used to remotely access a system.
accessnow:
: Access Now classification to classify an issue (such as security, human rights, youth rights).
action-taken:
: Action taken in the case of a security incident (CSIRT perspective).
admiralty-scale:
: The Admiralty Scale (also called the NATO System) is used to rank the reliability of a source and the credibility of an information.
adversary:
: An overview and description of the adversary infrastructure.
ais-marking:
: AIS Marking Schema implementation is maintained by the National Cybersecurity and Communication Integration Center (NCCIC) of the U.S. Department of Homeland Security (DHS)
analyst-assessment:
: A series of assessment predicates describing the analyst capabilities to perform analysis. These assessment can be assigned by the analyst him/herself or by another party evaluating the analyst.
approved-category-of-action:
: A pre-approved category of action for indicators being shared with partners (MIMIC).
binary-class:
: Custom taxonomy for types of binary file.
cccs:
: Internal taxonomy for CCCS.
circl:
: CIRCL Taxonomy is a simple scheme for incident classification and area topic where the incident took place.
collaborative-intelligence:
: Collaborative intelligence support language is a common language to support analysts to perform their analysis to get crowdsourced support when using threat intelligence sharing platform like MISP.
: The Common Taxonomy for Law Enforcement and The National Network of CSIRTs bridges the gap between the CSIRTs and international Law Enforcement communities by adding a legislative framework to facilitate the harmonisation of incident reporting to competent authorities, the development of useful statistics and sharing information within the entire cybercrime ecosystem.
: Cyber Threat Framework was developed by the US Government to enable consistent characterization and categorization of cyber threat events, and to identify trends or changes in the activities of cyber adversaries. https://www.dni.gov/index.php/cyber-threat-framework
: Distributed Denial of Service - or short: DDoS - taxonomy supports the description of Denial of Service attacks and especially the types they belong too.
de-vs:
: Taxonomy for the handling of protectively marked information in MISP with German (DE) Government classification markings (VS)
dhs-ciip-sectors:
: DHS critical sectors as described in https://www.dhs.gov/critical-infrastructure-sectors.
diamond-model:
: The Diamond Model for Intrusion Analysis, a phase-based model developed by Lockheed Martin, aims to help categorise and identify the stage of an attack.
dni-ism:
: ISM (Information Security Marking Metadata) V13 as described by DNI.gov (Director of National Intelligence - US).
domain-abuse:
: Taxonomy to tag domain names used for cybercrime.
: Economical impact is a taxonomy to describe the financial impact as positive or negative gain to the tagged information.
ecsirt:
: eCSIRT incident classification Appendix C of the eCSIRT EU project including IntelMQ updates.
enisa:
: ENISA Threat Taxonomy - A tool for structuring threat information as published in https://www.enisa.europa.eu/topics/threat-risk-management/threats-and-trends/enisa-threat-landscape/etl2015/enisa-threat-taxonomy-a-tool-for-structuring-threat-information
estimative-language:
: Estimative language - including likelihood or probability of event based on the Intelligence Community Directive 203 (ICD 203) (6.2.(a)) and JP 2-0, Joint Intelligence.
eu-marketop-and-publicadmin:
: Market operators and public administrations that must comply to some notifications requirements under EU NIS directive.
eu-nis-sector-and-subsectors:
: Sectors and sub sectors as identified by the NIS Directive.
: EU classified information (EUCI) means any information or material designated by a EU security classification, the unauthorised disclosure of which could cause varying degrees of prejudice to the interests of the European Union or of one or more of the Member States as described in COUNCIL DECISION of 23 September 2013 on the security rules for protecting EU classified information
: Flesch Reading Ease is a revised system for determining the comprehension difficulty of written material. The scoring of the flesh score can have a maximum of 121.22 and there is no limit on how low a score can be (negative score are valid).
: The Future of Privacy Forum (FPF) [visual guide to practical de-identification](https://fpf.org/2016/04/25/a-visual-guide-to-practical-data-de-identification/) taxonomy is used to evaluate the degree of identifiability of personal data and the types of pseudonymous data, de-identified data and anonymous data. The work of FPF is licensed under a creative commons attribution 4.0 international license.
fr-classif:
: French gov information classification system.
gdpr:
: Taxonomy related to the REGULATION (EU) 2016/679 OF THE EUROPEAN PARLIAMENT AND OF THE COUNCIL on the protection of natural persons with regard to the processing of personal data and on the free movement of such data, and repealing Directive 95/46/EC (General Data Protection Regulation)
gsma-attack-category:
: Taxonomy used by GSMA for their information sharing program with telco describing the attack categories
gsma-fraud:
: Taxonomy used by GSMA for their information sharing program with telco describing the various aspects of fraud
gsma-network-technology:
: Taxonomy used by GSMA for their information sharing program with telco describing the types of infrastructure. WiP
honeypot-basic:
: Christian Seifert, Ian Welch, Peter Komisarczuk, ‘Taxonomy of Honeypots’, Technical Report CS-TR-06/12, VICTORIA UNIVERSITY OF WELLINGTON, School of Mathematical and Computing Sciences, June 2006, http://www.mcs.vuw.ac.nz/comp/Publications/archive/CS-TR-06/CS-TR-06-12.pdf
iep:
: Forum of Incident Response and Security Teams (FIRST) Information Exchange Policy (IEP) framework.
ifx-vetting:
: The IFX taxonomy is used to categorise information (MISP events and attributes) to aid in the intelligence vetting process
incident-disposition:
: How an incident is classified in its process to be resolved. The taxonomy is inspired from NASA Incident Response and Management Handbook.
infoleak:
: A taxonomy describing information leaks and especially information classified as being potentially leaked.
: Information security indicators have been standardized by the ETSI Industrial Specification Group (ISG) ISI. These indicators provide the basis to switch from a qualitative to a quantitative culture in IT Security Scope of measurements: External and internal threats (attempt and success), user's deviant behaviours, nonconformities and/or vulnerabilities (software, configuration, behavioural, general security framework). ETSI GS ISI 001-1 (V1.1.2): ISI Indicators
interception-method:
: The interception method used to intercept traffic.
kill-chain:
: Cyber Kill Chain from Lockheed Martin as described in Intelligence-Driven Computer Network Defense Informed by Analysis of Adversary Campaigns and Intrusion Kill Chains.
maec-delivery-vectors:
: Vectors used to deliver malware based on MAEC 5.0
maec-malware-behavior:
: Malware behaviours based on MAEC 5.0
maec-malware-capabilities:
: Malware Capabilities based on MAEC 5.0
maec-malware-obfuscation-methods:
: Obfuscation methods used by malware based on MAEC 5.0
malware_classification:
: Malware classification based on a SANS whitepaper about malware.
misp:
: Internal MISP taxonomy.
monarc-threat:
: MONARC threat taxonomy.
ms-caro-malware:
: Malware Type and Platform classification based on Microsoft's implementation of the Computer Antivirus Research Organization (CARO) Naming Scheme and Malware Terminology.
ms-caro-malware-full:
: Malware Type and Platform classification based on Microsoft's implementation of the Computer Antivirus Research Organization (CARO) Naming Scheme and Malware Terminology.
nato:
: Marking of Classified and Unclassified materials as described by the North Atlantic Treaty Organization, NATO.
nis:
: NIS Cybersecurity Incident Taxonomy.
open_threat:
: Open Threat Taxonomy v1.1 base on James Tarala of SANS ref. - http://www.auditscripts.com/resources/open_threat_taxonomy_v1.1a.pdf
osint:
: Open Source Intelligence - Classification (MISP taxonomies).
passivetotal:
: Tags for RiskIQ's passivetotal service
pentest:
: Penetration test (pentest) classification.
priority-level:
: After an incident is scored, it is assigned a priority level. The six levels listed below are aligned with NCCIC, DHS, and the CISS to help provide a common lexicon when discussing incidents. This priority assignment drives NCCIC urgency, pre-approved incident response offerings, reporting requirements, and recommendations for leadership escalation. Generally, incident priority distribution should follow a similar pattern to the graph below. Based on https://www.us-cert.gov/NCCIC-Cyber-Incident-Scoring-System.
: Runtime or software packer used to combine compressed data with the decompression code. The decompression code can add additional obfuscations mechanisms including polymorphic-packer or other obfuscation techniques. This taxonomy lists all the known or official packer used for legitimate use or for packing malicious binaries.
smart-airports-threats:
: Threat taxonomy in the scope of securing smart airports by ENISA.
stealth_malware:
: Classification based on malware stealth techniques.
stix-ttp:
: Representation of the behavior or modus operandi of cyber adversaries (a.k.a TTP) as normalized in STIX
targeted-threat-index:
: The Targeted Threat Index is a metric for assigning an overall threat ranking score to email messages that deliver malware to a victim’s computer. The TTI metric was first introduced at SecTor 2013 by Seth Hardy as part of the talk “RATastrophe: Monitoring a Malware Menagerie” along with Katie Kleemola and Greg Wiseman.
tlp:
: The Traffic Light Protocol - or short: TLP - was designed with the objective to create a favorable classification scheme for sharing sensitive information while keeping the control over its distribution at the same time. Extended with TLP:EX:CHR.